FeenoX Software Design Specification
2025-04-03

-   1 Introduction
    -   “Cloud first” vs. “cloud friendly”
    -   Unfair advantage
    -   Licensing
    -   1.1 Objective
    -   1.2 Scope
        -   1.2.1 NAFEMS LE10 benchmark
        -   1.2.2 The Lorenz chaotic system
-   2 Architecture
    -   2.1 Deployment
    -   2.2 Execution
        -   2.2.1 Direct execution
        -   2.2.2 Parametric
        -   2.2.3 Optimization loops
    -   2.3 Efficiency
    -   2.4 Scalability
    -   2.5 Flexibility
    -   2.6 Extensibility
    -   2.7 Interoperability
-   3 Interfaces
    -   3.1 Problem input
        -   3.1.1 Syntactic sugar & highlighting
        -   3.1.2 Definitions and instructions
        -   3.1.3 Simple inputs
        -   3.1.4 Complex things
        -   3.1.5 Everything is an expression
        -   3.1.6 Matching formulations
        -   3.1.7 Comparison of solutions
        -   3.1.8 Run-time arguments
        -   3.1.9 Git and macro-friendliness
    -   3.2 Results output
        -   3.2.1 Output formats
        -   3.2.2 Data exchange between non-conformal meshes
-   4 Quality assurance
    -   4.1 Reproducibility and traceability
    -   4.2 Automated testing
    -   4.3 Bug reporting and tracking
    -   4.4 Documentation
-   5 Appendix: Downloading and compiling FeenoX
    -   5.1 Binary executables
    -   5.2 Source tarballs
    -   5.3 Git repository
-   6 Appendix: Rules of Unix philosophy
    -   6.1 Rule of Modularity
    -   6.2 Rule of Clarity
    -   6.3 Rule of Composition
    -   6.4 Rule of Separation
    -   6.5 Rule of Simplicity
    -   6.6 Rule of Parsimony
    -   6.7 Rule of Transparency
    -   6.8 Rule of Robustness
    -   6.9 Rule of Representation
    -   6.10 Rule of Least Surprise
    -   6.11 Rule of Silence
    -   6.12 Rule of Repair
    -   6.13 Rule of Economy
    -   6.14 Rule of Generation
    -   6.15 Rule of Optimization
    -   6.16 Rule of Diversity
    -   6.17 Rule of Extensibility
-   7 Appendix: FeenoX history
-   8 Appendix: Downloading & compiling
    -   8.1 Downloads
        -   8.1.1 Debian/Ubuntu packages
        -   8.1.2 Statically-linked binaries
        -   8.1.3 Compile from source
        -   8.1.4 Github repository
    -   8.2 Licensing
    -   8.3 Quickstart
    -   8.4 Detailed configuration and compilation
        -   8.4.1 Mandatory dependencies
            -   8.4.1.1 The GNU Scientific Library
        -   8.4.2 Optional dependencies
            -   8.4.2.1 SUNDIALS
            -   8.4.2.2 PETSc
            -   8.4.2.3 SLEPc
        -   8.4.3 FeenoX source code
            -   8.4.3.1 Git repository
            -   8.4.3.2 Source tarballs
        -   8.4.4 Configuration
        -   8.4.5 Source code compilation
        -   8.4.6 Test suite
        -   8.4.7 Installation
    -   8.5 Advanced settings
        -   8.5.1 Compiling with debug symbols
        -   8.5.2 Using a different compiler
        -   8.5.3 Compiling PETSc
-   9 Appendix: Inputs for solving LE10 with other FEA programs
    -   9.1 CalculiX
    -   9.2 Code Aster
    -   9.3 Elmer
-   10 Appendix: Downloading and compiling FeenoX
    -   10.1 Binary executables
    -   10.2 Source tarballs
    -   10.3 Git repository
-   11 Appendix: Rules of Unix philosophy
    -   11.1 Rule of Modularity
    -   11.2 Rule of Clarity
    -   11.3 Rule of Composition
    -   11.4 Rule of Separation
    -   11.5 Rule of Simplicity
    -   11.6 Rule of Parsimony
    -   11.7 Rule of Transparency
    -   11.8 Rule of Robustness
    -   11.9 Rule of Representation
    -   11.10 Rule of Least Surprise
    -   11.11 Rule of Silence
    -   11.12 Rule of Repair
    -   11.13 Rule of Economy
    -   11.14 Rule of Generation
    -   11.15 Rule of Optimization
    -   11.16 Rule of Diversity
    -   11.17 Rule of Extensibility
-   12 Appendix: FeenoX history
-   13 Appendix: Downloading & compiling
    -   13.1 Downloads
        -   13.1.1 Debian/Ubuntu packages
        -   13.1.2 Statically-linked binaries
        -   13.1.3 Compile from source
        -   13.1.4 Github repository
    -   13.2 Licensing
    -   13.3 Quickstart
    -   13.4 Detailed configuration and compilation
        -   13.4.1 Mandatory dependencies
            -   13.4.1.1 The GNU Scientific Library
        -   13.4.2 Optional dependencies
            -   13.4.2.1 SUNDIALS
            -   13.4.2.2 PETSc
            -   13.4.2.3 SLEPc
        -   13.4.3 FeenoX source code
            -   13.4.3.1 Git repository
            -   13.4.3.2 Source tarballs
        -   13.4.4 Configuration
        -   13.4.5 Source code compilation
        -   13.4.6 Test suite
        -   13.4.7 Installation
    -   13.5 Advanced settings
        -   13.5.1 Compiling with debug symbols
        -   13.5.2 Using a different compiler
        -   13.5.3 Compiling PETSc
-   14 Appendix: Inputs for solving LE10 with other FEA programs
    -   14.1 CalculiX
    -   14.2 Code Aster
    -   14.3 Elmer

  [1 Introduction]: #sec:introduction
  [“Cloud first” vs. “cloud friendly”]: #cloud-first
  [Unfair advantage]: #unfair-advantage
  [Licensing]: #licensing
  [1.1 Objective]: #sec:objective
  [1.2 Scope]: #sec:scope
  [1.2.1 NAFEMS LE10 benchmark]: #nafems-le10-benchmark
  [1.2.2 The Lorenz chaotic system]: #the-lorenz-chaotic-system
  [2 Architecture]: #sec:architecture
  [2.1 Deployment]: #sec:deployment
  [2.2 Execution]: #sec:execution
  [2.2.1 Direct execution]: #direct-execution
  [2.2.2 Parametric]: #sec:parametric
  [2.2.3 Optimization loops]: #sec:optimization
  [2.3 Efficiency]: #sec:efficiency
  [2.4 Scalability]: #sec:scalability
  [2.5 Flexibility]: #sec:flexibility
  [2.6 Extensibility]: #sec:extensibility
  [2.7 Interoperability]: #sec:interoperability
  [3 Interfaces]: #sec:interfaces
  [3.1 Problem input]: #sec:input
  [3.1.1 Syntactic sugar & highlighting]: #sec:sugar
  [3.1.2 Definitions and instructions]: #sec:nouns_verbs
  [3.1.3 Simple inputs]: #sec:simple
  [3.1.4 Complex things]: #sec:complex
  [3.1.5 Everything is an expression]: #sec:expression
  [3.1.6 Matching formulations]: #sec:matching-formulations
  [3.1.7 Comparison of solutions]: #sec:comparison-of-solutions
  [3.1.8 Run-time arguments]: #sec:run-time-arguments
  [3.1.9 Git and macro-friendliness]: #sec:git-friendliness
  [3.2 Results output]: #sec:output
  [3.2.1 Output formats]: #sec:output-formats
  [3.2.2 Data exchange between non-conformal meshes]: #sec:non-conformal
  [4 Quality assurance]: #sec:qa
  [4.1 Reproducibility and traceability]: #sec:traceability
  [4.2 Automated testing]: #sec:testing
  [4.3 Bug reporting and tracking]: #sec:bug-reporting
  [4.4 Documentation]: #sec:documentation
  [5 Appendix: Downloading and compiling FeenoX]: #appendix-downloading-and-compiling-feenox
  [5.1 Binary executables]: #binary-executables
  [5.2 Source tarballs]: #source-tarballs
  [5.3 Git repository]: #git-repository
  [6 Appendix: Rules of Unix philosophy]: #sec:unix
  [6.1 Rule of Modularity]: #sec:unix-modularity
  [6.2 Rule of Clarity]: #sec:unix-clarity
  [6.3 Rule of Composition]: #sec:unix-composition
  [6.4 Rule of Separation]: #sec:unix-separation
  [6.5 Rule of Simplicity]: #sec:unix-simplicity
  [6.6 Rule of Parsimony]: #sec:unix-parsimony
  [6.7 Rule of Transparency]: #sec:unix-transparency
  [6.8 Rule of Robustness]: #sec:unix-robustness
  [6.9 Rule of Representation]: #sec:unix-representation
  [6.10 Rule of Least Surprise]: #sec:unix-least-surprise
  [6.11 Rule of Silence]: #sec:unix-silence
  [6.12 Rule of Repair]: #sec:unix-repair
  [6.13 Rule of Economy]: #sec:unix-economy
  [6.14 Rule of Generation]: #sec:unix-generation
  [6.15 Rule of Optimization]: #sec:unix-optimization
  [6.16 Rule of Diversity]: #sec:unix-diversity
  [6.17 Rule of Extensibility]: #sec:unix-extensibility
  [7 Appendix: FeenoX history]: #sec:history
  [8 Appendix: Downloading & compiling]: #sec:download
  [8.1 Downloads]: #sec:downloads
  [8.1.1 Debian/Ubuntu packages]: #sec:debian
  [8.1.2 Statically-linked binaries]: #sec:binaries
  [8.1.3 Compile from source]: #sec:source
  [8.1.4 Github repository]: #sec:github
  [8.2 Licensing]: #sec:licensing
  [8.3 Quickstart]: #quickstart
  [8.4 Detailed configuration and compilation]: #sec:details
  [8.4.1 Mandatory dependencies]: #mandatory-dependencies
  [8.4.1.1 The GNU Scientific Library]: #sec:gsl
  [8.4.2 Optional dependencies]: #optional-dependencies
  [8.4.2.1 SUNDIALS]: #sundials
  [8.4.2.2 PETSc]: #petsc
  [8.4.2.3 SLEPc]: #slepc
  [8.4.3 FeenoX source code]: #feenox-source-code
  [8.4.4 Configuration]: #configuration
  [8.4.5 Source code compilation]: #sec:compilation
  [8.4.6 Test suite]: #sec:test-suite
  [8.4.7 Installation]: #installation
  [8.5 Advanced settings]: #advanced-settings
  [8.5.1 Compiling with debug symbols]: #compiling-with-debug-symbols
  [8.5.2 Using a different compiler]: #using-a-different-compiler
  [8.5.3 Compiling PETSc]: #compiling-petsc
  [9 Appendix: Inputs for solving LE10 with other FEA programs]: #sec:le10-other
  [9.1 CalculiX]: #calculix
  [9.2 Code Aster]: #code-aster
  [9.3 Elmer]: #elmer

Introduction

  A computational tool (herein after referred to as the tool)
  specifically designed to be executed in arbitrarily-scalable remote
  servers (i.e. in the cloud) is required in order to solve engineering
  problems following the current state-of-the-art methods and
  technologies impacting the high-performance computing world. This
  (imaginary but plausible) Software Requirements Specification document
  describes the mandatory features this tool ought to have and lists
  some features which would be nice the tool had. Also it contains
  requirements and guidelines about architecture, execution and
  interfaces in order to fulfill the needs of cognizant engineers as of
  the 2020s.

  On the one hand, the tool should allow to solve industrial problems
  under stringent efficiency (sec. 2.3) and quality (sec. 4)
  requirements. It is therefore mandatory to be able to assess the
  source code for

  -   independent verification, and/or
  -   performance profiling, and/or
  -   quality control

  by qualified third parties from all around the world. Hence, it has to
  be open source according to the definition of the Open Source
  Initiative.

  On the other hand, the initial version of the tool is expected to
  provide a basic functionality which might be extended (sec. 1.1 and
  sec. 2.6) by academic researchers and/or professional programmers. It
  thus should also be free—in the sense of freedom, not in the sense of
  price—as defined by the Free Software Foundation. There is no
  requirement on the pricing scheme, which is up to the vendor to define
  in the offer along with the detailed licensing terms. These should
  allow users to solve their problems the way they need and, eventually,
  to modify and improve the tool to suit their needs. If they cannot
  program themselves, they should have the freedom to hire somebody to
  do it for them.

FeenoX is a cloud-first computational tool aimed at solving engineering
problems with a particular design basis, as explained in

-   Theler, J. (2024). FeenoX: a cloud-first finite-element(ish)
    computational engineering tool. Journal of Open Source Software,
    9(95), 5846. https://doi.org/10.21105/joss.05846

  [FeenoX]: https://www.seamplex.com/feenox/

“Cloud first” vs. “cloud friendly”

In web design theory, there is a difference between mobile-first and
mobile-friendly interfaces. In the same sense, FeenoX is cloud first and
not just cloud friendly.

But what does this mean? Let us first start with the concept of “cloud
friendliness,” meaning that it is possible to run something on the cloud
without substantial effort. This implies that a computational tool is
cloud friendly if it

1.  can be executed remotely without any special care, i.e. a GNU/Linux
    binary ran on a server through SSH,
2.  can exploit the (in principle) unbounded resources provided by a set
    of networked servers, and
3.  does not need interactive input meaning that, once launched, it can
    finish without needing further human intervention.

Yet, a cloud-first tool needs to take account other more profound
concepts as well in early-stage design decisions. In software
development, the modification of an existing desktop-based piece of
software to allow remote execution is called “cloud-enabling.” In words
of a senior manager, “cloud development is the opposite of desktop
development.” So starting from scratch a cloud-first tool is a far
better approach than refactoring an existing desktop program to make it
cloud friendly.

For instance, to make proper use of the computational resources
available in remote servers launched on demand, it is needed to

-   have all the hosts in a particular network
-   configure a proper domain name service
-   design shared network file systems
-   etc.

Instead of having to manually perform this set up each time a
calculation is needed, one can automate the workflow with ad-hoc scripts
acting as “thin clients” which would, for instance,

-   launch and configure the remote computing instances, optionally
    using containerization technology
-   send the input files needed by the computational tools
-   launch the actual computational tools (Gmsh, FeenoX, etc.) over the
    instances, e.g. using mpiexec or similar to be able to either
    a.  to reduce the wall time needed to solve a problem, and/or
    b.  to allow the solution of large problems that do not fit into a
        single computer
-   monitor and communicate with the solver as the calculation
    progresses
-   handle eventual errors
-   get back and process the results

Furthermore, we could design and implement more complex clients able to
handle things like

-   authentication
-   resource management (i.e. CPU hours)
-   estimation of the number and type of instances needed to solve a
    certain problem
-   parametric sweeps
-   optimization loops
-   conditionally-chained simulations
-   etc.

Therefore, the computational tools that would perform the actual
calculations should be designed in such a way not only to allow these
kind of workflows but also to make them efficient. In fact, we say
“clients” in plural because—as the Unix rule of diversity (sec. 11.16)
asks for–depending on the particular problem type and requirements
different clients might be needed. And since FeenoX itself is flexible
enough to be able to solve not only different types of partial
differential equations but also

-   different types of problems
    -   coupled
    -   parametric
    -   optimization
    -   etc.
-   in different environments
    -   many small cases
    -   a few big ones
    -   only one but huge
    -   etc.
-   under different conditions
    -   in the industry by a single engineer
    -   in the academy by several researchers
    -   as a service in a public platform
    -   etc.

then it is expected nor to exist a one-size-fits-all solution able to
handle all the combinations in an optimum way.

However, if the underlying computational tool has been carefully
designed to be able to handle all these details and to be flexible
enough to accommodate other eventual and/or unexpected requirements by
design, then we say that the tool is “cloud first.” Throughout this SDS
we thoroughly explain the features of this particular cloud-first
design. Indeed, FeenoX is essentially a back end which can work with a
number of different front ends (fig. 1), including these thin clients
and web-based interfaces (fig. 2)

[Figure 1: Conceptual illustration of the difference between a front end
and a back end ©bluecoders.]

Figure 1: Conceptual illustration of the difference between a front end
and a back end ©bluecoders.

[Figure 2: The web-based platform CAEplex for FeenoX.
https://www.youtube.com/watch?v=7KqiMbrSLDc]

Figure 2: The web-based platform CAEplex for FeenoX.
https://www.youtube.com/watch?v=7KqiMbrSLDc

  [Figure 1: Conceptual illustration of the difference between a front end and a back end ©bluecoders.]:
    front-back.png
  [CAEplex]: https://www.caeplex.com
  [Figure 2: The web-based platform CAEplex for FeenoX. https://www.youtube.com/watch?v=7KqiMbrSLDc]:
    caeplex-ipad.jpg

Unfair advantage

To better illustrate FeenoX’s unfair advantage (in the entrepreneurial
sense), let us first consider what the options are when we need to write
a technical report, paper or document:

  -----------------------------------------------------------------------------
  Feature                      Microsoft    Google    Markdown[1]    (La)TeX
                                 Word        Docs                  
  --------------------------- ----------- ---------- ------------- ------------
  Aesthetics                      ❌          ❌          ✅            ✅

  Convertibility (to other        😐          😐          ✅            😐
  formats)                                                         

  Traceability                    ❌          😐          ✅            ✅

  Mobile-friendliness             ❌          ✅          ✅            ❌

  Collaborativeness               ❌          ✅          ✅            😐

  Licensing/openness              ❌          ❌          ✅            ✅

  Non-nerd friendliness           ✅          ✅          😐            ❌
  -----------------------------------------------------------------------------

After analyzing the pros and cons of each alternative, at some point it
should be evident that Markdown (plus friends) gives the best trade off.
We can then perform a similar analysis for the options available in
order to solve an engineering problem casted as a partial differential
equation, say by using a finite-element formulation:

  ----------------------------------------------------------------------------
  Feature                       Desktop       Web      FeenoX[2]   Libraries
                                 GUIs      frontends              
  --------------------------- ----------- ----------- ----------- ------------
  Flexibility                    ❌/😐       ❌/😐        ✅           ✅

  Scalability                     ❌          😐          ✅           ✅

  Traceability                    ❌          😐          ✅           ✅

  Cloud-friendliness              ❌          ✅          ✅           ✅

  Collaborativeness               ❌          ✅          ✅           😐

  Licensing/openness           ✅/😐/❌       ❌          ✅           ✅

  Non-nerd friendliness           ✅          ✅          😐           ❌
  ----------------------------------------------------------------------------

Therefore, FeenoX is—in a certain sense—to desktop FEA programs like

-   Code_Aster with Salome-Meca, or
-   CalculiX with PrePoMax

and to libraries like

-   MoFEM or
-   Sparselizard

what Markdown is to Word and (La)TeX, respectively and deliberately.

[1] Here “Markdown” means (Pandoc + Git + Github / Gitlab / Gitea)

[2] Here “FeenoX” means (FeenoX + Gmsh + Paraview + Git + Github /
Gitlab / Gitea)

  [Markdown]: https://en.wikipedia.org/wiki/Markdown
  [Code_Aster]: https://www.code-aster.org/spip.php?rubrique2
  [Salome-Meca]: https://www.code-aster.org/V2/spip.php?article303
  [CalculiX]: http://www.calculix.de/
  [PrePoMax]: https://prepomax.fs.um.si/
  [MoFEM]: http://mofem.eng.gla.ac.uk/mofem/html/
  [Sparselizard]: http://sparselizard.org/
  [1]: https://commonmark.org/
  [(La)TeX]: https://en.wikipedia.org/wiki/LaTeX
  [Pandoc]: https://pandoc.org/
  [Git]: https://git-scm.com/
  [Github]: https://github.com/
  [Gitlab]: https://about.gitlab.com/
  [Gitea]: https://gitea.com/%7D%7BGitea%7D
  [2]: https://seamplex.com/feenox
  [Gmsh]: http://gmsh.info
  [Paraview]: https://www.paraview.org/

Licensing

FeenoX is licensed under the terms of the GNU General Public License
version 3 or, at the user convenience, any later version. This means
that users get the four essential freedoms:[3]

0.  The freedom to run the program as they wish, for any purpose.
1.  The freedom to study how the program works, and change it so it does
    their computing as they wish.
2.  The freedom to redistribute copies so they can help others.
3.  The freedom to distribute copies of their modified versions to
    others.

So a free program has to be open source, but it also has to explicitly
provide the four freedoms above both through the written license and
through appropriate mechanisms to get, modify, compile, run and document
these modifications using well-established and/or reasonable
straightforward procedures. That is why licensing FeenoX as GPLv3+ also
implies that the source code and all the scripts and makefiles needed to
compile and run it are available for anyone that requires it (i.e. it is
compiled with ./configure && make). Anyone wanting to modify the program
either to fix bugs, improve it or add new features is free to do so. And
if they do not know how to program, the have the freedom to hire a
programmer to do it without needing to ask permission to the original
authors. Even more, the documentation is released under the terms of the
Creative Commons Attribution-ShareAlike 4.0 International License so
these new (or modified) features can be properly documented as well.

Nevertheless, since these original authors are the copyright holders,
they still can use it to either enforce or prevent further actions from
the users that receive FeenoX under the GPLv3+. In particular, the
license allows re-distribution of modified versions only if

a.  they are clearly marked as different from the original, and
b.  they are distributed under the same terms of the GPLv3+.

There are also some other subtle technicalities that need not be
discussed here such as

-   what constitutes a modified version (which cannot be redistributed
    under a different license)
-   what is an aggregate (in which each part be distributed under
    different licenses)
-   usage over a network and the possibility of using AGPL instead of
    GPL to further enforce freedom

These issues are already taken into account in the FeenoX licensing
scheme.

It should be noted that not only is FeenoX free and open source, but
also all of the libraries it depends on (and their dependencies) also
are. It can also be compiled using free and open source build tool
chains running over free and open source operating systems.

To sum up this introduction, FeenoX is…

1.  a cloud-first computational tool (not just cloud friendly, but cloud
    first).
2.  to traditional computational software and to specialized libraries
    what Markdown is to Word and TeX, respectively.
3.  both free (as in freedom) and open source.

[3]  There are some examples of pieces of computational software which
are described as “open source” in which even the first of the four
freedoms is denied. The most iconic case is that of Android, whose
sources are readily available online but there is no straightforward way
of updating one’s mobile phone firmware with a customized version, not
to mention vendor and hardware lock ins and the possibility of bricking
devices if something unexpected happens. In the nuclear industry, it is
the case of a Monte Carlo particle-transport program that requests users
to sign an agreement about the objective of its usage before allowing
its execution. The software itself might be open source because the
source code is provided after signing the agreement, but it is not free
(as in freedom) at all.

  [GNU General Public License]: https://www.gnu.org/licenses/gpl-3.0
  [the documentation]: https://seamplex.com/feenox/doc/
  [Creative Commons Attribution-ShareAlike 4.0 International License]: https://creativecommons.org/licenses/by-sa/4.0/
  [AGPL]: https://en.wikipedia.org/wiki/GNU_Affero_General_Public_License
  [Markdown]: https://en.wikipedia.org/wiki/Markdown
  [Word]: https://en.wikipedia.org/wiki/Microsoft_Word
  [TeX]: https://en.wikipedia.org/wiki/TeX
  [as in freedom]: https://en.wikipedia.org/wiki/Free_as_in_Freedom

Objective

  The main objective of the tool is to be able to solve engineering
  problems which are usually casted as differential-algebraic equations
  (DAEs) or partial differential equations (PDEs), such as

  -   heat conduction
  -   mechanical elasticity
  -   structural modal analysis
  -   mechanical frequency studies
  -   electromagnetism
  -   chemical diffusion
  -   process control dynamics
  -   computational fluid dynamics
  -   …

  on one or more mainstream cloud servers, i.e. computers with hardware
  and operating systems (further discussed in sec. 2) that allows them
  to be available online and accessed remotely either interactively or
  automatically by other computers as well. Other architectures such as
  high-end desktop personal computers or even low-end laptops might be
  supported but they should not the main target (i.e. the tool has to be
  cloud-first but laptop-friendly).

  The initial version of the tool must be able to handle a subset of the
  above list of problem types. Afterward, the set of supported problem
  types, models, equations and features of the tool should grow to
  include other models as well, as required in sec. 2.6.

The choice of the initial supported features is based on the types of
problem that the FeenoX’s precursor codes (namely wasora, Fino and
milonga, referred to as “previous versions” from now on) already have
been supporting since more than ten years now. A subsequent road map and
release plans can be designed as requested. FeenoX’s first version
includes a subset of the required functionality, namely

-   open and closed-loop dynamical systems
-   Laplace/Poisson/Helmholtz equations
-   heat conduction
-   mechanical elasticity
-   structural modal analysis
-   multi-group neutron transport and diffusion

Sec. 2.6 explains the mechanisms that FeenoX provides in order to add
(or even remove) other types of problems to be solved.

Recalling that FeenoX is a “cloud-first” tool as explained in sec. 1, it
is designed to be developed and executed primarily on GNU/Linux hosts,
which is the architecture of more than 90% of the internet servers which
we collectively call “the public cloud.” It should be noted that
GNU/Linux is a POSIX-compliant operating system which is compatible with
Unix, and that FeenoX was designed and implemented following the rules
of Unix philosophy which is further explained in sec. 11. Besides the
POSIX standard, as explained below in sec. 2.4, FeenoX also uses MPI
which is a well-known industry standard for massive execution of
parallel processes following the distributed-systems parallelization
paradigm. Finally, if performance and/or scalability are not important
issues, FeenoX can be run in a (properly cooled) local PC, laptop or
even in embedded systems such as Raspberry Pi (see sec. 2).

  [GNU/Linux]: https://www.gnu.org/gnu/linux-and-gnu.html
  [POSIX]: https://en.wikipedia.org/wiki/POSIX
  [Unix]: https://en.wikipedia.org/wiki/Unix
  [MPI]: https://en.wikipedia.org/wiki/Message_Passing_Interface
  [Raspberry Pi]: https://en.wikipedia.org/wiki/Raspberry_Pi

Scope

  The tool should allow users to define the problem to be solved
  programmatically. That is to say, the problem should be completely
  defined using one or more files either…

  a.  specifically formatted for the tool to read such as JSON or a
      particular input format (historically called input decks in
      punched-card days), and/or
  b.  written in an high-level interpreted language such as Python or
      Julia.

  Once the problem has been defined and passed on to the solver, no
  further human intervention should be required.

  It should be noted that a graphical user interface is not required.
  The tool may include one, but it should be able to run without needing
  any interactive user intervention rather than the preparation of a set
  of input files. Nevertheless, the tool might allow a GUI to be used.
  For example, for a basic usage involving simple cases, a user
  interface engine should be able to create these problem-definition
  files in order to give access to less advanced users to the tool using
  a desktop, mobile and/or web-based interface in order to run the
  actual tool without needing to manually prepare the actual input
  files.

  However, for general usage, users should be able to completely define
  the problem (or set of problems, i.e. a parametric study) they want to
  solve in one or more input files and to obtain one or more output
  files containing the desired results, either a set of scalar outputs
  (such as maximum stresses or mean temperatures), and/or a detailed
  time and/or spatial distribution. If needed, a discretization of the
  domain may to be taken as a known input, i.e. the tool is not required
  to create the mesh as long as a suitable mesher can be employed using
  a similar workflow as the one specified in this SRS.

  The tool should define and document (sec. 4.4) the way the input files
  for a solving particular problem are to be prepared (sec. 3.1) and how
  the results are to be written (sec. 3.2). Any GUI, pre-processor,
  post-processor or other related graphical tool used to provide a
  graphical interface for the user should integrate in the workflow
  described in the preceding paragraph: a pre-processor should create
  the input files needed for the tool and a post-processor should read
  the output files created by the tool.

Since FeenoX is designed to be executed in the cloud, it works very much
like a transfer function between one (or more) files and zero or more
output files:

                                 +------------+
     mesh (*.msh)  }             |            |             { terminal
     data (*.dat)  } input ----> |   FeenoX   |----> output { data files
     input (*.fee) }             |            |             { post (vtk/msh)
                                 +------------+

Technically speaking, FeenoX can be seen as a Unix filter designed to
read an ASCII-based stream of characters (i.e. the input file, which in
turn can include other input files or contain instructions to read data
from mesh and/or other data files) and to write ASCII-formatted data
into the standard output and/or other files. The input file can be
prepared either by a human or by another program. The output stream
and/or files can be read by either a human and/or another programs. A
quotation from Eric Raymond’s The Art of Unix Programming helps to
illustrate this idea:

  Doug McIlroy, the inventor of Unix pipes and one of the founders of
  the Unix tradition, had this to say at the time:

  (i) Make each program do one thing well. To do a new job, build afresh
      rather than complicate old programs by adding new features.

  (ii) Expect the output of every program to become the input to
       another, as yet unknown, program. Don’t clutter output with
       extraneous information. Avoid stringently columnar or binary
       input formats. Don’t insist on interactive input.

  […]

  He later summarized it this way (quoted in “A Quarter Century of Unix”
  in 1994):

  -   This is the Unix philosophy: Write programs that do one thing and
      do it well. Write programs to work together. Write programs to
      handle text streams, because that is a universal interface.

Keep in mind that even though both the quotes above and many
finite-element programs that are still mainstream today date both from
the early 1970s, fifty years later the latter still

-   do not make just only one thing well,
-   do complicate old programs by adding new features,
-   do not expect their output to become the input to another,
-   do clutter output with extraneous information,
-   do use stringently columnar and/or binary input (and output!)
    formats, and/or
-   do insist on interactive input.

There are other FEA tools that, even though born closer in time, also
follow the above bullets literally. But FeenoX does not, since it
follows the Unix philosophy in general and Eric Raymond’s 17 Unix Rules
(sec. 11) in particular. One of the main ideas is the rule of separation
(sec. 11.4) that essentially asks to separate mechanism from policy,
that in the computational engineering world translates into separating
the front end from the back end as illustrated in fig. 1.

When solving ordinary differential equations, the usual workflow
involves solving them with FeenoX and plotting the results with Gnuplot
or Pyxplot. When solving partial differential equations (PDEs), the mesh
is created with Gmsh and the output can be post-processed with Gmsh,
Paraview or any other post-processing system (even a web-based
interface) that follows rule of separation. Even though most FEA
programs eventually separate the interface from the solver up to some
degree, there are cases in which they are still dependent such that
changing the former needs updating the latter. This is the usual case
with legacy programs designed back in the 1990s (or even one or two
decades before) that are still around nowadays. They usually still
fulfill almost all of the bullets above and are the ones which their
owners are trying to convert from desktop to cloud-enabled programs
instead of starting from scratch.

From the very beginning, FeenoX is designed as a pure back end which
should nevertheless provide appropriate mechanisms for different front
ends to be able to communicate and to provide a friendly interface for
the final user. Yet, the separation is complete in the sense that the
nature of the front ends can radically change (say from a desktop-based
point-and-click program to a web-based interface or an immersive
augmented-reality application with goggles) without needing the modify
the back end. Not only far more flexibility is given by following this
path, but also develop efficiency and quality is encouraged since
programmers working on the lower-level of an engineering tool usually do
not have the skills needed to write good user-experience interfaces, and
conversely.

In the very same sense, FeenoX does not discretize continuous domains
for PDE problems itself, but relies on separate tools for this end.
Fortunately, there already exists one meshing tool which is FOSS (GPLv2)
and shares most (if not all) of the design basis principles with FeenoX:
the three-dimensional finite element mesh generator Gmsh.

Strictly speaking, FeenoX does not need to be used along with Gmsh but
with any other mesher able to write meshes in Gmsh’s format .msh. But
since Gmsh also

-   is free and open source,
-   works also in a transfer-function-like fashion,
-   runs natively on GNU/Linux,
-   has a similar (but more comprehensive) API for Python/Julia,
-   etc.

it is a perfect match for FeenoX. Even more, it provides suitable domain
decomposition methods (through other open-source third-party libraries
such as Metis) for scaling up large problems.

  [Unix filter]: https://en.wikipedia.org/wiki/Filter_(software)
  [ASCII]: https://en.wikipedia.org/wiki/ASCII
  [Eric Raymond]: http://www.catb.org/esr/
  [The Art of Unix Programming]: http://www.catb.org/esr/writings/taoup/
  [Doug McIlroy]: https://en.wikipedia.org/wiki/Douglas_McIlroy
  [Unix pipes]: https://en.wikipedia.org/wiki/Pipeline_%28Unix%29
  [Unix tradition]: https://en.wikipedia.org/wiki/Unix_philosophy
  [3]: http://gmsh.info/
  [Metis]: http://glaros.dtc.umn.edu/gkhome/metis/metis/overview

NAFEMS LE10 benchmark

Let us solve the linear elasticity benchmark problem NAFEMS LE10 “Thick
plate pressure.” with FeenoX. Note the one-to-one correspondence between
the human-friendly problem statement from fig. 3 and the FeenoX input
file:

[Figure 3: The NAFEMS LE10 problem statement and the corresponding
FeenoX input]

Figure 3: The NAFEMS LE10 problem statement and the corresponding FeenoX
input

    # NAFEMS Benchmark LE-10: thick plate pressure
    PROBLEM mechanical DIMENSIONS 3
    READ_MESH nafems-le10.msh   # mesh in millimeters

    # LOADING: uniform normal pressure on the upper surface
    BC upper    p=1      # 1 Mpa

    # BOUNDARY CONDITIONS:
    BC DCD'C'   v=0      # Face DCD'C' zero y-displacement
    BC ABA'B'   u=0      # Face ABA'B' zero x-displacement
    BC BCB'C'   u=0 v=0  # Face BCB'C' x and y displ. fixed
    BC midplane w=0      #  z displacements fixed along mid-plane

    # MATERIAL PROPERTIES: isotropic single-material properties
    E = 210e3   # Young modulus in MPa
    nu = 0.3    # Poisson's ratio

    SOLVE_PROBLEM   # solve!

    # print the direct stress y at D (and nothing more)
    PRINT "σ_y @ D = " sigmay(2000,0,300) "MPa"

Here, “one-to-one” means that the input file does not need any extra
definition which is not part of the problem formulation. Of course the
cognizant engineer can give further definitions such as

-   the linear solver and pre-conditioner
-   the tolerances for iterative solvers
-   options for computing stresses out of displacements
-   etc.

However, she is not obliged to as–at least for simple problems—the
defaults are reasonable. This is akin to writing a text in Markdown
where one does not need to care if the page is A4 or letter (as, in most
cases, the output will not be printed but rendered in a web browser).

The problem asks for the normal stress in the y direction σ_(y) at
point “D,” which is what FeenoX writes (and nothing else, rule of
economy):

    $ feenox nafems-le10.fee 
    sigma_y @ D =   -5.38016        MPa
    $ 

Also note that since there is only one material, there is no need to do
an explicit link between material properties and physical volumes in the
mesh (rule of simplicity). And since the properties are uniform and
isotropic, a single global scalar for E and a global single scalar for ν
are enough.

[Figure 4: Normal stress σ_(y) refined around point D over 5,000x-warped
displacements for LE10 created with Paraview]

Figure 4: Normal stress σ_(y) refined around point D over 5,000x-warped
displacements for LE10 created with Paraview

For the sake of visual completeness, post-processing data with the
scalar distribution of σ_(y) and the vector field of displacements
[u, v, w] can be created by adding one line to the input file:

    WRITE_MESH nafems-le10.vtk sigmay VECTOR u v w

This VTK file can then be post-processed to create interactive 3D views,
still screenshots, browser and mobile-friendly webGL models, etc. In
particular, using Paraview one can get a colorful bitmapped PNG (the
displacements are far more interesting than the stresses in this
problem).

[Figure 5: See also https://caeplex.com/r/f1a82f to see this very same
LE10 problem solved in the mobile-friendly web-based interface CAEplex
that uses FeenoX as the back end]

Figure 5: See also https://caeplex.com/r/f1a82f to see this very same
LE10 problem solved in the mobile-friendly web-based interface CAEplex
that uses FeenoX as the back end

  [NAFEMS LE10 “Thick plate pressure.”]: https://www.seamplex.com/feenox/examples/mechanical.html#nafems-le10-thick-plate-pressure-benchmark
  [Figure 3: The NAFEMS LE10 problem statement and the corresponding FeenoX input]:
    nafems-le10-problem-input.svg
  [Figure 4: Normal stress σ_(y) refined around point D over 5,000x-warped displacements for LE10 created with Paraview]:
    nafems-le10.png
  [4]: https://www.paraview.org
  [Figure 5: See also https://caeplex.com/r/f1a82f to see this very same LE10 problem solved in the mobile-friendly web-based interface CAEplex that uses FeenoX as the back end]:
    nafems-le10-caeplex.png

The Lorenz chaotic system

Let us consider the famous chaotic Lorenz’s dynamical system. Here is
one way of getting an image of the butterfly-shaped attractor using
FeenoX to compute it and Gnuplot to draw it. Solve

ẋ = σ ⋅ (y − x)
ẏ = x ⋅ (r − z) − y
ż = xy − bz

for 0 < t < 40 with initial conditions

x(0) = −11
y(0) = −16
z(0) = 22.5

and σ = 10, r = 28 and b = 8/3, which are the classical parameters that
generate the butterfly as presented by Edward Lorenz back in his seminal
1963 paper Deterministic non-periodic flow.

The following ASCII input file resembles the parameters, initial
conditions and differential equations of the problem as naturally as
possible:

    PHASE_SPACE x y z     # Lorenz attractor’s phase space is x-y-z
    end_time = 40         # we go from t=0 to 40 non-dimensional units

    sigma = 10            # the original parameters from the 1963 paper
    r = 28
    b = 8/3

    x_0 = -11             # initial conditions
    y_0 = -16
    z_0 = 22.5

    # the dynamical system's equations written as naturally as possible
    x_dot = sigma*(y - x)
    y_dot = x*(r - z) - y
    z_dot = x*y - b*z

    PRINT t x y z        # four-column plain-ASCII output

[Figure 6: The Lorenz attractor solved with FeenoX and drawn with
Gnuplot]

Figure 6: The Lorenz attractor solved with FeenoX and drawn with Gnuplot

Indeed, when executing FeenoX with this input file, we get four ASCII
columns (t, x, y and z) which we can then redirect to a file and plot it
with a standard tool such as Gnuplot. Note the importance of relying on
plain ASCII text formats both for input and output, as recommended by
the Unix philosophy and the rule of composition: other programs can
easily create inputs for FeenoX and other programs can easily understand
FeenoX’s outputs. This is essentially how Unix filters and pipes work.

Note the one-to-one correspondence between the human-friendly
differential equations (written in TeX and rendered as typesetted
mathematical symbols) and the computer-friendly input file that FeenoX
reads.

Even though the initial version of FeenoX does not provide an API for
high-level interpreted languages such as Python or Julia, the code is
written in such a way that this feature can be added without needing a
major refactoring. This will allow to fully define a problem in a
procedural way, increasing also flexibility.

  [Lorenz’s dynamical system]: https://www.seamplex.com/feenox/examples/daes.html#lorenz-attractorthe-one-with-the-butterfly
  [Gnuplot]: http://www.gnuplot.info/
  [Deterministic non-periodic flow]: http://journals.ametsoc.org/doi/abs/10.1175/1520-0469%281963%29020%3C0130%3ADNF%3E2.0.CO%3B2
  [Figure 6: The Lorenz attractor solved with FeenoX and drawn with Gnuplot]:
    lorenz.svg
  [5]: (http://www.gnuplot.info/)

Architecture

  The tool must be aimed at being executed unattended on remote servers
  which are expected to have a mainstream (as of the 2020s) architecture
  regarding operating system (GNU/Linux variants and other Unix-like
  OSes) and hardware stack, such as

  -   a few Intel-compatible or ARM-like CPUs per host
  -   a few levels of memory caches
  -   a few gigabytes of random-access memory
  -   several gigabytes of solid-state storage

  It should successfully run on

  -   bare-metal
  -   virtual servers
  -   containerized images

  using standard compilers, dependencies and libraries already available
  in the repositories of most current operating systems distributions.

  Preference should be given to open source compilers, dependencies and
  libraries. Small problems might be executed in a single host but large
  problems ought to be split through several server instances depending
  on the processing and memory requirements. The computational
  implementation should adhere to open and well-established
  parallelization standards.

  Ability to run on local desktop personal computers and/laptops is not
  required but suggested as a mean of giving the opportunity to users to
  test and debug small coarse computational models before launching the
  large computation on a HPC cluster or on a set of scalable cloud
  instances. Support for non-GNU/Linux operating systems is not required
  but also suggested.

  Mobile platforms such as tablets and phones are not suitable to run
  engineering simulations due to their lack of proper electronic cooling
  mechanisms. They are suggested to be used to control one (or more)
  instances of the tool running on the cloud, and even to pre and post
  process results through mobile and/or web interfaces.

Very much like the C language (after A & B) and Unix itself (after a
first attempt and the failed MULTICS), FeenoX can be seen as a
third-system effect:

  A notorious ‘second-system effect’ often afflicts the successors of
  small experimental prototypes. The urge to add everything that was
  left out the first time around all too frequently leads to huge and
  overcomplicated design. Less well known, because less common, is the
  ‘third-system effect’: sometimes, after the second system has
  collapsed of its own weight, there is a chance to go back to
  simplicity and get it right.

  From Eric Raymond’s The Art of Unix Programming

Feenox is indeed the third version written from scratch after a first
implementation in 2009 (different small components with different names)
and a second one (named wasora that allowed dynamically-shared plugins
to be linked at runtime to provide particular PDEs) which was far more
complex and had far more features circa 2012–2015. The third attempt,
FeenoX, explicitly addresses the “do one thing well” idea from Unix.

Furthermore, not only is FeenoX itself both free and open-source
software but, following the rule of composition (sec. 11.3), it also is
designed to connect and to work with other free and open source software
such as

-   Gmsh for pre and/or post-processing
-   ParaView for post-processing
-   Gnuplot for plotting 1D/2D results
-   Pyxplot for plotting 1D results
-   Pandoc for creating tables and documents
-   TeX for creating tables and documents

and many others, which are readily available in all major GNU/Linux
distributions.

FeenoX also makes use of high-quality free and open source mathematical
libraries which contain numerical methods designed by mathematicians and
implemented by professional programmers. In particular, it depends on

-   GNU Scientific Library for general mathematics,
-   SUNDIALS IDA for ODEs and DAEs,
-   PETSc for linear, non-linear and transient PDEs, and
-   SLEPc for PDEs involving eigen problems

Therefore, if one zooms in into the block of the transfer function
above, FeenoX can also be seen as a glue layer between the input files
defining a physical problem and the mathematical libraries used to solve
the discretized equations. For example, when solving the linear elastic
problem from the NAFEMS LE10 case discussed above, we can draw the
following diagram:

[] 

This way, FeenoX bounds its scope to do only one thing and to do it
well: to build and solve finite-element formulations of physical
problems. And it does so on high grounds, both ethical and
technological:

a.  Ethical, since it is free software, all users can

    0.  run,
    1.  share,
    2.  modify, and/or
    3.  re-share their modifications.

    If a user cannot read or write code to make FeenoX suit her needs,
    at least she has the freedom to hire someone to do it for her.

b.  Technological, since it is open source, advanced users can detect
    and correct bugs and even improve the algorithms. Given enough
    eyeballs, all bugs are shallow.

FeenoX’s main development architecture is Debian GNU/Linux running over
64-bits Intel-compatible processors (but binaries for ARM architectures
can be compiled as well). All the dependencies are free and/or open
source and already available in Debian’s latest stable official
repositories, as explained in sec. 2.1.

The POSIX standard is followed whenever possible, allowing thus FeenoX
to be compiled in other operating systems and architectures such as
Windows (using Cygwin) and MacOS. The build procedure is the well-known
and mature ./configure && make command.

FeenoX is written in C conforming to the ISO C99 specification (plus
POSIX extensions), which is a standard, mature and widely supported
language with compilers for a wide variety of architectures. As listed
above, for its basic mathematical capabilities, FeenoX uses the GNU
Scientific Library. For solving ODEs/DAEs, FeenoX relies on Lawrence
Livermore’s SUNDIALS library. For PDEs, FeenoX uses Argonne’s PETSc
library and Universitat Politècnica de València’s SLEPc library. All of
them are

-   free and open source,
-   written in C (neither Fortran nor C++),
-   mature and stable,
-   actively developed and updated,
-   very well known both in the industry and academia.

Moreover, PETSc and SLEPc are scalable through the MPI standard, further
discussed in sec. 2.4. This means that programs using both these
libraries can run on either large high-performance supercomputers or
low-end laptops. FeenoX has been run on

-   Raspberry Pi
-   Laptop (GNU/Linux & Windows 10)
-   Macbook
-   Desktop PC
-   Bare-metal servers
-   Vagrant/Virtualbox virtual machines
-   Docker/Kubernetes containers
-   AWS/DigitalOcean/Contabo instances

Due to the way that FeenoX is designed and the policy separated from the
mechanism, it is possible to control a running instance remotely from a
separate client which can eventually run on a mobile device
(fig. 2,fig. 5).

The following example illustrates how well FeenoX works as one of many
links in a chain that goes from tracing a bitmap with the problem’s
geometry down to creating a nice figure with the results of a
computation.

[Figure 7: Homer trying to solve a maze on a placemat during season
four.]

Figure 7: Homer trying to solve a maze on a placemat during season four.

Say you are Homer J. Simpson and you want to solve a maze drawn in a
restaurant’s placemat while driving to your wife’s aunt funeral. One
where both the start and end points are known beforehand as show in
fig. 7. In order to avoid falling into the alligator’s mouth, you can
exploit the ellipticity of the Laplacian operator to solve any maze
(even a hand-drawn one) without needing any fancy AI or ML algorithm.
Just FeenoX and a bunch of standard open source tools to convert a
bitmapped picture of the maze into an unstructured mesh.

[a]

a

[b]

b

Figure 8: Bitmapped, meshed and solved mazes.. a — Bitmapped maze from
https://www.mazegenerator.net (left) and 2D mesh (right), b — Solution
to found by FeenoX (and drawn by Gmsh)

1.  Go to http://www.mazegenerator.net/

2.  Create a maze

3.  Download it in PNG (fig. 8 (a))

4.  Perform some conversions

    -   PNG → PNM → SVG → DXF → GEO

        $ wget http://www.mazegenerator.net/static/orthogonal_maze_with_20_by_20_cells.png
        $ convert orthogonal_maze_with_20_by_20_cells.png -negate maze.png
        $ potrace maze.pnm --alphamax 0  --opttolerance 0 -b svg -o maze.svg
        $ ./svg2dxf maze.svg maze.dxf
        $ ./dxf2geo maze.dxf 0.1

5.  Open it with Gmsh

    [] 

    -   Add a surface
    -   Set physical curves for “start” and “end”

6.  Mesh it (fig. 8 (a))

        gmsh -2 maze.geo

7.  Solve ∇²ϕ = 0 with BCs

    $$
    \begin{cases}
    \phi=0 & \text{at “start”} \\
    \phi=1 & \text{at “end”} \\
    \nabla \phi \cdot \hat{\vec{n}} = 0 & \text{everywhere else} \\
    \end{cases}
    $$

        PROBLEM laplace 2D  # pretty self-descriptive, isn't it?
        READ_MESH maze.msh

        # boundary conditions (default is homogeneous Neumann)
        BC start  phi=0 
        BC end    phi=1

        SOLVE_PROBLEM

        # write the norm of gradient as a scalar field
        # and the gradient as a 2d vector into a .msh file
        WRITE_MESH maze-solved.msh \
            sqrt(dphidx(x,y)^2+dphidy(x,y)^2) \
            VECTOR dphidx dphidy 0 

        $ feenox maze.fee
        $

8.  Open maze-solved.msh, go to start and follow the gradient ∇ϕ!

[a] [b]

[c] [d]

Figure 9: Any arbitrary maze (even hand-drawn) can be solved with
FeenoX.

  [Eric Raymond]: http://www.catb.org/esr/
  [The Art of Unix Programming]: http://www.catb.org/esr/writings/taoup/
  [free]: https://www.gnu.org/philosophy/free-sw.en.html
  [open-source]: https://opensource.com/resources/what-open-source
  [Gmsh3]: http://gmsh.info/
  [ParaView]: https://www.paraview.org/
  [6]: http://gnuplot.info/
  [Pyxplot]: http://www.pyxplot.org.uk/
  [Pandoc]: https://pandoc.org/
  [7]: https://tug.org/
  [GNU Scientific Library]: https://www.gnu.org/software/gsl/
  [SUNDIALS IDA]: https://computing.llnl.gov/projects/sundials/ida
  [PETSc]: https://petsc.org/
  [SLEPc]: http://slepc.upv.es/
  [glue layer]: https://www.linuxtopia.org/online_books/programming_books/art_of_unix_programming/ch04s03_1.html
  [NAFEMS LE10 case]: https://www.seamplex.com/feenox/examples/mechanical.html#nafems-le10-thick-plate-pressure-benchmark
  [8]: transfer-le10-zoom.svg
  [free software]: https://www.gnu.org/philosophy/open-source-misses-the-point.en.html
  [open source]: http://www.catb.org/~esr/writings/cathedral-bazaar/cathedral-bazaar/
  [Given enough eyeballs, all bugs are shallow.]: https://en.wikipedia.org/wiki/Linus%27s_law
  [Debian GNU/Linux]: https://www.debian.org/
  [Cygwin]: https://www.cygwin.com/
  [C]: https://en.wikipedia.org/wiki/C_(programming_language)
  [ISO C99]: https://en.wikipedia.org/wiki/C99
  [Argonne’s PETSc library]: https://www.mcs.anl.gov/petsc/
  [Universitat Politècnica de València’s SLEPc library]: https://slepc.upv.es/
  [MPI standard]: https://www.mcs.anl.gov/research/projects/mpi/standard.html
  [during season four]: https://en.wikipedia.org/wiki/Selma%27s_Choice
  [Figure 7: Homer trying to solve a maze on a placemat during season four.]:
    maze-homer.png
  [Homer J. Simpson]: https://en.wikipedia.org/wiki/Homer_Simpson
  [a]: maze12.png
  [b]: maze3.png
  [9]: gmsh-maze.png
  [10]: maze-sigma.png
  [11]: maze-delta.png
  [12]: maze-theta.png
  [d]: maze-big.png

Deployment

  The tool should be easily deployed to production servers. Both

  a.  an automated method for compiling the sources from scratch aiming
      at obtaining optimized binaries for a particular host architecture
      should be provided using a well-established procedures, and
  b.  one (or more) generic binary version aiming at common server
      architectures should be provided.

  Either option should be available to be downloaded from suitable
  online sources, either by real people and/or automated deployment
  scripts.

As already stated, FeenoX can be compiled from its sources using the
well-established configure & make procedure. The code’s source tree is
hosted on Github so cloning the repository is the preferred way to
obtain FeenoX, but source tarballs are periodically released too
according to the requirements in sec. 4.1. There are also non-official
binary .deb packages which can be installed with apt using a custom
package repository location.

The configuration and compilation is based on GNU Autotools that has
more than thirty years of maturity and it is the most portable way of
compiling C code in a wide variety of Unix variants. It has been tested
with

-   GNU C compiler (free)
-   LLVM Clang compiler (free)
-   Intel oneAPI C compiler (privative)

FeenoX depends on the four open source libraries stated in sec. 2,
although the last three of them are optional. The only mandatory library
is the GNU Scientific Library which is part of the GNU/Linux operating
system and as such is readily available in all distributions as
libgsl-dev. The sources of the rest of the optional libraries are also
widely available in most common GNU/Linux distributions.

In effect, doing

    sudo apt-get install gcc make libgsl-dev libsundials-dev petsc-dev slepc-dev

is enough to provision all the dependencies needed compile FeenoX from
the source tarball with the full set of features. If using the Git
repository as a source, then Git itself and the GNU Autoconf and
Automake packages are also needed:

    sudo apt-get install git autoconf automake

Even though compiling FeenoX from sources is the recommended way to
obtain the tool—since the target binary can be compiled using
particularly suited compilation options, flags and optimizations
(especially those related to MPI, linear algebra kernels and direct
and/or iterative sparse solvers)–there are also tarballs and .deb
packages with usable binaries for some of the most common
architectures—including some non-GNU/Linux variants. These binary
distributions contain statically-linked executable files that do not
need any other shared libraries to be installed on the target host.
However, their flexibility and efficiency is generic and far from ideal.
Yet the flexibility of having an execution-ready distribution package
for users that do not know how to compile C source code outweighs the
limited functionality and scalability of the tool.

For example, first PETSc can be built with a -Ofast flag:

    $ cd $PETSC_DIR
    $ export PETSC_ARCH=linux-fast
    $ ./configure --with-debug=0 COPTFLAGS="-Ofast"
    $ make -j8
    $ cd $HOME

And then not only can FeenoX be configured to use that particular PETSc
build but also to use a different compiler such as Clang instead of GNU
GCC and to use the same -Ofast flag to compile FeenoX itself:

    $ git clone https://github.com/seamplex/feenox
    $ cd feenox
    $ ./autogen.sh
    $ export PETSC_ARCH=linux-fast
    $ ./configure MPICH_CC=clang CFLAGS=-Ofast
    $ make -j8
    # make install

If one does not care about the details of the compilation, then a
pre-compiled statically-linked binary can be directly downloaded very
much as when downloading Gmsh:

    $ wget http://gmsh.info/bin/Linux/gmsh-Linux64.tgz
    $ wget https://seamplex.com/feenox/dist/linux/feenox-linux-amd64.tar.gz

Appendix sec. 13 has more details about how to download and compile
FeenoX. The full online documentation contains a compilation guide with
further detailed explanations of each of the steps involved.

All the commands needed to either download a binary executable or to
compile from source with customized optimization flags can be automated.
The repository contains a subdirectory dist with instructions and
scripts to build

-   source tarballs
-   binary tarballs
-   Debian-compatible .deb packages

This way, deployment of the solver can be customized and tweaked as
needed, including creating Docker containers with a working version of
FeenoX.

  [GNU Autotools]: https://www.gnu.org/software/automake/manual/html_node/Autotools-Introduction.html
  [GNU C compiler]: https://gcc.gnu.org/
  [LLVM Clang compiler]: http://clang.org/
  [Intel oneAPI C compiler]: https://www.intel.com/content/www/us/en/developer/tools/oneapi/dpc-compiler.html
  [Git]: https://git-scm.com/
  [GNU Autoconf]: https://www.gnu.org/software/autoconf/
  [Automake]: https://www.gnu.org/software/automake/
  [compilation guide]: https://seamplex.com/feenox/doc/compilation.html
  [dist]: https://github.com/seamplex/feenox/tree/main/dist

Execution

  It is mandatory to be able to execute the tool remotely, either with a
  direct action from the user or from a high-level workflow which could
  be triggered by a human or by an automated script. Since it is
  required for the tool to be able to be run distributed among different
  servers, proper means to perform this kind of remote executions should
  be provided. The calling party should be able to monitor the status
  during run time and get the returned error level after finishing the
  execution.

  The tool shall provide means to perform parametric computations by
  varying one or more problem parameters in a certain prescribed way
  such that it can be used as an inner solver for an outer-loop
  optimization tool. In this regard, it is desirable that the tool could
  compute scalar values such that the figure of merit being optimized
  (maximum temperature, total weight, total heat flux, minimum natural
  frequency, maximum displacement, maximum von Mises stress, etc.) is
  already available without needing further post-processing.

As requested by the SRS and explained in sec. 1.2, FeenoX is a program
that reads the problem to be solved at run-time and not a library that
has to be linked against code that defines the problem. Since FeenoX is
designed to run as

-   a Unix filter, or
-   as a transfer function between input and output files

and it explicitly avoids having a graphical interface, the binary
executable works as any other Unix terminal command. Moreover, as
discussed in sec. 2.4, FeenoX uses the MPI standard for parallelization
among several hosts. Therefore, it can be launched through the command
mpiexec (or mpirun).

When invoked without arguments, it prints its version (a thorough
explanation of the versioning scheme is given in sec. 4.1), a one-line
description and the usage options:

    $ feenox
    FeenoX v1.0.8-g731ca5d 
    a cloud-first free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    usage: feenox [options] inputfile [replacement arguments] [petsc options]

      -h, --help         display options and detailed explanations of command-line usage
      -v, --version      display brief version information and exit
      -V, --versions     display detailed version information
      -c, --check        validates if the input file is sane or not
      --pdes             list the types of PROBLEMs that FeenoX can solve, one per line
      --elements_info    output a document with information about the supported element types
      --linear           force FeenoX to solve the PDE problem as linear
      --non-linear       force FeenoX to solve the PDE problem as non-linear

    Run with --help for further explanations.
    $

The program can also be executed remotely either

a.  on a running server through a SSH session
    -   in serial directly invoking the feenox binary

    -   in parallel through the mpiexec wrapper, e.g.

            mpiexec -n 4 feenox input.fee
b.  spawned by a daemon listening to a network requests,
c.  in a container as part of a provisioning script,
d.  in many other ways.

As explained in the help message, FeenoX can read the input from the
standard input if - is specified as the input path. This is useful in
scripts where small calculations are needed, e.g.

    $ a=3
    $ echo "PRINT 1/$a" | feenox -
    0.333333
    $ 

FeenoX provides mechanisms to inform its progress by writing certain
information to devices or files, which in turn can be monitored remotely
or even trigger server actions. Progress can be as simple as an ASCII
bar (triggered with --progress in the command line or with the keyword
PROGRESS in the input file) to more complex mechanisms like writing the
status in a shared memory segment. Fig. 10 shows how the CAEplex
platform shows the progress interactively in its web-based interface.

[Figure 10: ASCII progress bars parsed and converted into a web-based
interface]

Figure 10: ASCII progress bars parsed and converted into a web-based
interface

Regarding its execution, there are three ways of solving problems:

1.  direct execution
2.  parametric runs, and
3.  optimization loops.

  [mpiexec]: https://www.mpich.org/static/docs/v3.0.x/www1/mpiexec.html
  [or mpirun]: https://stackoverflow.com/questions/25287981/mpiexec-vs-mpirun
  [SSH]: https://en.wikipedia.org/wiki/Secure_Shell
  [container]: https://en.wikipedia.org/wiki/OS-level_virtualization
  [PROGRESS]: https://www.seamplex.com/feenox/doc/feenox-manual.html#problem
  [CAEplex]: https://www.caeplex.com
  [Figure 10: ASCII progress bars parsed and converted into a web-based interface]:
    caeplex-progress.png

Direct execution

When directly executing FeenoX, one gives a single argument to the
executable with the path to the main input file. For example, the
following input computes the first twenty numbers of the Fibonacci
sequence using the closed-form formula

$$
f(n) = \frac{\varphi^n - (1-\varphi)^n}{\sqrt{5}}
$$

where $\varphi=(1+\sqrt{5})/2$ is the Golden ratio:

    # the Fibonacci sequence using the closed-form formula as a function
    phi = (1+sqrt(5))/2 
    f(n) = (phi^n - (1-phi)^n)/sqrt(5)
    PRINT_FUNCTION f MIN 1 MAX 20 STEP 1

FeenoX can be directly executed to print the function f(n) for
n = 1, …, 20 both to the standard output and to a file named one
(because it is the first way of solving Fibonacci with Feenox):

    $ feenox fibo_formula.fee | tee one
    1   1
    2   1
    3   2
    4   3
    5   5
    6   8
    7   13
    8   21
    9   34
    10  55
    11  89
    12  144
    13  233
    14  377
    15  610
    16  987
    17  1597
    18  2584
    19  4181
    20  6765
    $

Now, we could also have computed these twenty numbers by using the
direct definition of the sequence into a vector f⃗ of size 20. This time
we redirect the output to a file named two:

    # the fibonacci sequence as a vector
    VECTOR f SIZE 20

    f[i]<1:2> = 1
    f[i]<3:vecsize(f)> = f[i-2] + f[i-1]

    PRINT_VECTOR i f

    $ feenox fibo_vector.fee > two
    $ 

Finally, we print the sequence as an iterative problem and check that
the three outputs are the same:

    # the fibonacci sequence as an iterative problem

    static_steps = 20
    #static_iterations = 1476  # limit of doubles

    IF step_static=1|step_static=2
     f_n = 1
     f_nminus1 = 1
     f_nminus2 = 1
    ELSE
     f_n = f_nminus1 + f_nminus2
     f_nminus2 = f_nminus1
     f_nminus1 = f_n
    ENDIF

    PRINT step_static f_n

    $ feenox fibo_iterative.fee > three
    $ diff one two
    $ diff two three
    $

These three calls were examples of direct execution of FeenoX: a single
call with a single argument to solve a single fixed problem.

  [Fibonacci sequence]: https://en.wikipedia.org/wiki/Fibonacci_number
  [Golden ratio]: https://en.wikipedia.org/wiki/Golden_ratio

Parametric

To use FeenoX in a parametric run, one has to successively call the
executable passing the main input file path in the first argument
followed by an arbitrary number of parameters. These extra parameters
will be expanded as string literals $1, $2, etc. appearing in the input
file. For example, if hello.fee is

    PRINT "Hello $1!"

then

    $ feenox hello.fee World
    Hello World!
    $ feenox hello.fee Universe
    Hello Universe!
    $

To have an actual parametric run, an external loop has to successively
call FeenoX with the parametric arguments. For example, say this file
cantilever.fee fixes the face called “left” and sets a load in the
negative z direction of a mesh called cantilever-$1-$2.msh. The output
is a single line containing the number of nodes of the mesh and the
displacement in the vertical direction w(500, 0, 0) at the center of the
cantilever’s free face:

    PROBLEM elastic 3D
    READ_MESH cantilever-$1-$2.msh   # in meters

    E = 2.1e11         # Young modulus in Pascals
    nu = 0.3           # Poisson's ratio

    BC left   fixed
    BC right  tz=-1e5  # traction in Pascals, negative z
     
    SOLVE_PROBLEM

    # z-displacement (components are u,v,w) at the tip vs. number of nodes
    PRINT nodes w(500,0,0) "\# $1 $2"

[a]

[b]

Figure 11: Cantilevered beam meshed with structured tetrahedra and
hexahedra. a — Tetrahedra, b — Hexahedra

Now the following Bash script first calls Gmsh to create the meshes
cantilever-${element}-${c}.msh where

-   ${element}: tet4, tet10, hex8, hex20, hex27
-   ${c}: 1,2,,10

It then calls FeenoX with the input above and passes ${element} and ${c}
as extra arguments, which then are expanded as $1 and $2 respectively.

    #!/bin/bash

    rm -f *.dat
    for element in tet4 tet10 hex8 hex20 hex27; do
     for c in $(seq 1 10); do
     
      # create mesh if not already cached
      mesh=cantilever-${element}-${c}
      if [ ! -e ${mesh}.msh ]; then
        scale=$(echo "PRINT 1/${c}" | feenox -)
        gmsh -3 -v 0 cantilever-${element}.geo -clscale ${scale} -o ${mesh}.msh
      fi
      
      # call FeenoX
      feenox cantilever.fee ${element} ${c} | tee -a cantilever-${element}.dat
      
     done
    done

After the execution of the script, thanks to the design decision
(explained in sec. 3.2) that output is 100% defined by the user (in this
case with the PRINT instruction), one has several files
cantilever-${element}.dat files. When plotted, these show the shear
locking effect of fully-integrated first-order elements as illustrated
in fig. 12. The theoretical Euler-Bernoulli result is just a reference
as, among other things, it does not take into account the effect of the
material’s Poisson’s ratio. Note that the abscissa shows the number of
nodes, which are proportional to the number of degrees of freedom
(i.e. the size of the problem matrix) and not the number of elements,
which is irrelevant here and in most problems.

[Figure 12: Displacement at the free tip of a cantilevered beam
vs. number of nodes for different element types]

Figure 12: Displacement at the free tip of a cantilevered beam
vs. number of nodes for different element types

  [13]: cantilever-tet.png
  [14]: cantilever-hex.png
  [Bash]: https://en.wikipedia.org/wiki/Bash_(Unix_shell)
  [PRINT]: https://www.seamplex.com/feenox/doc/feenox-manual.html#print
  [Euler-Bernoulli]: https://en.wikipedia.org/wiki/Euler%E2%80%93Bernoulli_beam_theory
  [Poisson’s ratio]: https://en.wikipedia.org/wiki/Poisson%27s_ratio
  [Figure 12: Displacement at the free tip of a cantilevered beam vs. number of nodes for different element types]:
    cantilever-displacement.svg

Optimization loops

Optimization loops work very much like parametric runs from the FeenoX
point of view. The difference is mainly on the calling script that has
to implement a certain optimization algorithm such as conjugate
gradients, Nelder-Mead, simulated annealing, genetic algorithms, etc. to
choose which parameters to pass to FeenoX as command-line argument. The
only particularity on FeenoX’s side is that since the next argument that
the optimization loop will pass might depend on the result of the
current step, care has to be taken in order to be able to return back to
the calling script whatever results it needs in order to compute the
next arguments. This is usually just the scalar being optimized for, but
it can also include other results such as derivatives or other relevant
data.

To illustrate how to use FeenoX in an optimization loop, let us consider
the problem of finding the length ℓ₁ of a tuning fork (fig. 13) such
that the fundamental frequency on a free-free oscillation is equal to
the base A frequency at 440 Hz.

[Figure 13: What length ℓ₁ is needed so the fork vibrates at 440 Hz?]

Figure 13: What length ℓ₁ is needed so the fork vibrates at 440 Hz?

This extremely simple input file (rule of simplicity sec. 11.5) solves
the free-free mechanical modal problem (i.e. without any Dirichlet
boundary condition) and prints the fundamental frequency:

    PROBLEM modal 3D MODES 1  # only one mode needed
    READ_MESH fork.msh  # in [m]
    E = 2.07e11         # in [Pa]
    nu = 0.33
    rho = 7829          # in [kg/m^2]

    # no BCs! It is a free-free vibration problem
    SOLVE_PROBLEM

    # write back the fundamental frequency to stdout
    PRINT f(1)

Note that in this particular case, the FeenoX input files does not
expand any command-line argument. The trick is that the mesh file
fork.msh is overwritten in each call of the optimization loop. Since
this time the loop is slightly more complex than in the parametric run
of the last section, we now use Python. The function create_mesh() first
creates a CAD model of the fork with geometrical parameters r, w, ℓ₁ and
ℓ₂. It then meshes the CAD using n structured hexahedra through the
fork’s thickness. Both the CAD and the mesh are created using the Gmsh
Python API. The detailed steps between gmsh.initialize() and
gmsh.finalize() are not shown here, just the fact that this function
overwrites the previous mesh and always writes it into the file called
fork.msh which is the one that fork.fee reads. Hence, there is no need
to pass command-liner arguments to FeenoX. The full implementation of
the function is available in the examples directory of the FeenoX
distribution.

    import math
    import gmsh
    import subprocess  # to call FeenoX and read back

    def create_mesh(r, w, l1, l2, n):
      gmsh.initialize()
      ...
      gmsh.write("fork.msh")  
      gmsh.finalize()
      return len(nodes)
      
    def main():
      target = 440    # target frequency
      eps = 1e-2      # tolerance
      r = 4.2e-3      # geometric parameters
      w = 3e-3
      l1 = 30e-3
      l2 = 60e-3

      for n in range(1,7):   # mesh refinement level
        l1 = 60e-3              # restart l1 & error
        error = 60
        while abs(error) > eps:   # loop
          l1 = l1 - 1e-4*error
          # mesh with Gmsh Python API
          nodes = create_mesh(r, w, l1, l2, n)
          # call FeenoX and read scalar back
          # TODO: FeenoX Python API (like Gmsh)
          result = subprocess.run(['feenox', 'fork.fee'], stdout=subprocess.PIPE)
          freq = float(result.stdout.decode('utf-8'))
          error = target - freq
        
        print(nodes, l1, freq)

Since the computed frequency depends both on the length ℓ₁ and on the
mesh refinement level n, there are actually two nested loops: one
parametric over n = 1, 2…, 7 and the optimization loop itself that tries
to find ℓ₁ so as to obtain a frequency equal to 440 Hz within 0.01% of
error.

    $ python fork.py > fork.dat
    $

[Figure 14: Estimated length ℓ₁ needed to get 440 Hz for different mesh
refinement levels n]

Figure 14: Estimated length ℓ₁ needed to get 440 Hz for different mesh
refinement levels n

Note that the approach used here is to use Gmsh Python API to build the
mesh and then fork the FeenoX executable to solve the fork (no pun
intended). There are plans to provide a Python API for FeenoX so the
problem can be set up, solved and the results read back directly from
the script instead of needing to do a fork+exec, read back the standard
output as a string and then convert it to a Python float.

Fig. 14 shows the results of the combination of the optimization loop
over ℓ₁ and a parametric run over n. The difference for n = 6 and n = 7
is in the order of one hundredth of millimeter.

  [conjugate gradients]: https://en.wikipedia.org/wiki/Conjugate_gradient_method
  [Nelder-Mead]: https://en.wikipedia.org/wiki/Nelder%E2%80%93Mead_method
  [simulated annealing]: https://en.wikipedia.org/wiki/Simulated_annealing
  [genetic algorithms]: https://en.wikipedia.org/wiki/Genetic_algorithm
  [Figure 13: What length ℓ₁ is needed so the fork vibrates at 440 Hz?]:
    fork-meshed.svg
  [Figure 14: Estimated length ℓ₁ needed to get 440 Hz for different mesh refinement levels n]:
    fork.svg

Efficiency

  As required in the previous section, it is mandatory to be able to
  execute the tool on one or more remote servers. The computational
  resources needed from this server, i.e. costs measured in

  -   CPU/GPU time
  -   random-access memory
  -   long-term storage
  -   etc.

  needed to solve a problem should be comparable to other similar
  state-of-the-art cloud-based script-friendly finite-element tools.

One of the most widely known quotations in computer science is that one
that says “premature optimization is the root of all evil.” that is an
extremely over-simplified version of Donald E. Knuth’s analysis in his
The Art of Computer Programming. Bottom line is that the programmer
should not not spend too much time trying to optimize code based on
hunches but based on profiling measurements. Yet a disciplined
programmer can tell when an algorithm will be way too inefficient (say
something that scales up like O(n²)) and how small changes can improve
performance (say by understanding how caching levels work in order to
implement faster nested loops). It is also true that usually an
improvement in one aspect leads to a deterioration in another one
(e.g. a decrease in CPU time by caching intermediate results in an
increase of RAM usage).

Even though FeenoX is still evolving so it could be premature in many
cases, it is informative to compare running times and memory consumption
when solving the same problem with different cloud-friendly FEA
programs. In effect, a serial single-thread single-host comparison of
resource usage when solving the NAFEMS LE10 problem introduced above was
performed, using both unstructured tetrahedral and structured hexahedral
meshes. Fig. 15 shows two figures of the many ones contained in the
detailed report. In general, FeenoX using the iterative approach based
on PETSc’s Geometric-Algebraic Multigrid Preconditioner and a conjugate
gradients solver is faster for (relatively) large problems at the
expense of a larger memory consumption. The curves that use MUMPS
confirm the well-known theoretical result that direct linear solvers are
robust but not scalable.

[a]

a

[b]

b

Figure 15: Resource consumption when solving the NAFEMS LE10 problem in
the cloud for tetrahedral meshes.. a — Wall time vs. number of degrees
of freedom, b — Memory vs. number of degrees of freedom

Regarding storage, FeenoX needs space to store the input file
(negligible), the mesh file in .msh format (which can be either ASCII or
binary) and the optional output files in .msh or .vtu/.vtk formats. All
of these files can be stored gzip-compressed and un-compressed on demand
by exploiting FeenoX’s script-friendliness using proper calls to gzip
before and/or after calling the feenox binary.

  [Donald E. Knuth’s]: https://en.wikipedia.org/wiki/Donald_Knuth
  [The Art of Computer Programming]: https://en.wikipedia.org/wiki/The_Art_of_Computer_Programming
  [serial single-thread single-host comparison of resource usage when solving the NAFEMS LE10 problem]:
    https://seamplex.com/feenox/tests/nafems/le10/
  [unstructured tetrahedral]: https://www.seamplex.com/feenox/tests/nafems/le10/report-tet.html
  [structured hexahedral]: https://www.seamplex.com/feenox/tests/nafems/le10/report-hex.html
  [15]: wall-dofs-tet.svg
  [16]: memory-dofs-tet.svg

Scalability

  The tool ought to be able to start solving small problems first to
  check the inputs and outputs behave as expected and then allow
  increasing the problem size up in order to achieve to the desired
  accuracy of the results. As mentioned in sec. 2, large problem should
  be split among different computers to be able to solve them using a
  finite amount of per-host computational power (RAM and CPU).

When for a fixed problem the mesh is refined over and over, more and
more computational resources are needed to solve it (and to obtain more
accurate results, of course). Parallelization can help to

a.  reduce the wall time needed to solve a problem by using several
    processors at the same time
b.  allow to solve big problems that would not fit into a single
    computer by splitting them into smaller parts, each of them fitting
    in a single computer

There are three types of parallelization schemes:

Shared-memory systems (OpenMP)

    several processing units sharing a single memory address space

Distributed systems (MPI)

    several computational units, each with their own processing units
    and memory, inter-connected with high-speed network hardware

Graphical processing units (GPU)

    used as co-processors to solve numerically-intensive problems

In principle, any of these three schemes can be used to reduce the wall
time (a). But only the distributed systems scheme allows to solve
arbitrarily big problems (b).

It might seem that the most effective approach to solve a large problem
is to use OpenMP (not to be confused with OpenMPI!) among threads
running in processors that share the memory address space and to use MPI
among processes running in different hosts. But even though this hybrid
OpenMP+MPI scheme is possible, there are at least three main drawbacks
with respect to a pure MPI approach:

i.  the overall performance is not be significantly better
ii. the amount of lines of code that has to be maintained is more than
    doubled
iii. the number of possible points of synchronization failure increases

In many ways, the pure MPI mode has fewer synchronizations and thus
should perform better. Hence, FeenoX uses MPI (mainly through PETSc and
SLEPc) to handle large parallel problems.

To illustrate FeenoX’s MPI features, let us consider the following input
file (which is part of FeenoX’s tests suite):

    PRINTF_ALL "Hello MPI World!"

The instruction PRINTF_ALL (at the end of the day, it is a verb) asks
all the processes to write the printf-formatted arguments in the
standard output. A prefix is added to each line with the process id and
the name of the host. When running FeenoX with this input file through
mpiexec in an AWS server which has already been properly configured to
connect to another one and split the MPI processes, we get:

    ubuntu@ip-172-31-44-208:~/mpi/hello$ mpiexec --verbose --oversubscribe --hostfile hosts -np 4 ./feenox hello_mpi.fee 
    [0/4 ip-172-31-44-208] Hello MPI World!
    [1/4 ip-172-31-44-208] Hello MPI World!
    [2/4 ip-172-31-34-195] Hello MPI World!
    [3/4 ip-172-31-34-195] Hello MPI World!
    ubuntu@ip-172-31-44-208:~/mpi/hello$ 

That is to say,host ip-172-31-44-208 spawns two local processes feenox
and, at the same time, asks host ip-172-31-34-195 to create two new
processes in it. This scheme would allow to solve a problem in parallel
where the CPU and RAM loads are split into two different servers.

[Figure 16: Gmsh’s tutorial t21: two squares decomposed in 6
partitions.]

Figure 16: Gmsh’s tutorial t21: two squares decomposed in 6 partitions.

We can used Gmsh’s tutorial t21 that illustrated the concept of domain
decomposition (DDM) to show another aspect of how MPI parallelization
works in FeenoX. In effect, let us consider the mesh from fig. 16 that
consists of two non-dimensional squares of size 1 × 1 and let us say we
want to compute the integral of the constant 1 over the surface to
obtain the numerical result 2.

    READ_MESH t21.msh
    INTEGRATE 1 RESULT two
    PRINTF_ALL "%g" two

In this case, the instruction INTEGRATE is executed in parallel where
each process computes the local contribution and, before moving into the
next instruction (PRINTF_ALL), all processes synchronize and sum up all
these contributions (i.e. they perform a sum reduction) and all the
processes obtain the global result in the variable two:

    $ mpiexec -n 2 feenox t21.fee 
    [0/2 tom] 2
    [1/2 tom] 2
    $ mpiexec -n 4 feenox t21.fee 
    [0/4 tom] 2
    [1/4 tom] 2
    [2/4 tom] 2
    [3/4 tom] 2
    $ mpiexec -n 6 feenox t21.fee 
    [0/6 tom] 2
    [1/6 tom] 2
    [2/6 tom] 2
    [3/6 tom] 2
    [4/6 tom] 2
    [5/6 tom] 2
    $ 

To illustrate what is happening under the hood, let us temporarily
modify the FeenoX source code so that each process shows the local
contribution:

    $ mpiexec -n 2 feenox t21.fee
    [process 0] my local integral is 0.996699
    [process 1] my local integral is 1.0033
    [0/2 tom] 2
    [1/2 tom] 2
    $ mpiexec -n 3 feenox t21.fee
    [process 0] my local integral is 0.658438
    [process 1] my local integral is 0.672813
    [process 2] my local integral is 0.668749
    [0/3 tom] 2
    [1/3 tom] 2
    [2/3 tom] 2
    $ mpiexec -n 4 feenox t21.fee
    [process 0] my local integral is 0.505285
    [process 1] my local integral is 0.496811
    [process 2] my local integral is 0.500788
    [process 3] my local integral is 0.497116
    [0/4 tom] 2
    [1/4 tom] 2
    [2/4 tom] 2
    [3/4 tom] 2
    $ mpiexec -n 5 feenox t21.fee
    [process 0] my local integral is 0.403677
    [process 1] my local integral is 0.401883
    [process 2] my local integral is 0.399116
    [process 3] my local integral is 0.400042
    [process 4] my local integral is 0.395281
    [0/5 tom] 2
    [1/5 tom] 2
    [2/5 tom] 2
    [3/5 tom] 2
    [4/5 tom] 2
    $ mpiexec -n 6 feenox t21.fee
    [process 0] my local integral is 0.327539
    [process 1] my local integral is 0.330899
    [process 2] my local integral is 0.338261
    [process 3] my local integral is 0.334552
    [process 4] my local integral is 0.332716
    [process 5] my local integral is 0.336033
    [0/6 tom] 2
    [1/6 tom] 2
    [2/6 tom] 2
    [3/6 tom] 2
    [4/6 tom] 2
    [5/6 tom] 2
    $ 

Note that in the cases with 4 and 5 processes, the number of
partitions P is not a multiple of the number of processes N. Anyway,
FeenoX is able to distribute the load is able to distribute the load
among the N processes, even though the efficiency is slightly less than
in the other cases. :::

When solving PDEs, FeenoX builds the local matrices and vectors and then
asks PETSc to assemble the global objects by sending non-local
information as MPI messages. This way, all processes have contiguous
rows as local data and the system of equations can be solved in parallel
using the distributed system paradigm.

We can show that both

a.  the wall time, and
b.  the per-process memory

decrease when running a fixed-sized problem with MPI in parallel using
the IAEA 3D PWR benchmark:

    PROBLEM neutron_diffusion 3D GROUPS 2

    DEFAULT_ARGUMENT_VALUE 1 quarter
    READ_MESH iaea-3dpwr-$1.msh

    MATERIAL fuel1     D1=1.5 D2=0.4 Sigma_s1.2=0.02 Sigma_a1=0.01 Sigma_a2=0.08  nuSigma_f2=0.135
    MATERIAL fuel2     D1=1.5 D2=0.4 Sigma_s1.2=0.02 Sigma_a1=0.01 Sigma_a2=0.085 nuSigma_f2=0.135
    MATERIAL fuel2rod  D1=1.5 D2=0.4 Sigma_s1.2=0.02 Sigma_a1=0.01 Sigma_a2=0.13  nuSigma_f2=0.135
    MATERIAL reflector D1=2.0 D2=0.3 Sigma_s1.2=0.04 Sigma_a1=0    Sigma_a2=0.01  nuSigma_f2=0
    MATERIAL reflrod   D1=2.0 D2=0.3 Sigma_s1.2=0.04 Sigma_a1=0    Sigma_a2=0.055 nuSigma_f2=0
      
    BC vacuum   vacuum=0.4692
    BC mirror   mirror

    SOLVE_PROBLEM
    WRITE_RESULTS FORMAT vtk

    PRINT  "geometry = $1"
    PRINTF "    keff = %.5f"     keff
    PRINTF "   nodes = %g"       nodes
    PRINTF "    DOFs = %g"       total_dofs
    PRINTF "  memory = %.1f Gb (local) %.1f Gb (global)" mpi_memory_local() mpi_memory_global()
    PRINTF "    wall = %.1f sec" wall_time()

    $ mpiexec -n 1 feenox iaea-3dpwr.fee quarter
    geometry = quarter
        keff = 1.02918
       nodes = 70779
        DOFs = 141558
    [0/1 tux]   memory = 2.3 Gb (local) 2.3 Gb (global)
        wall = 26.2 sec
    $ mpiexec -n 2 feenox iaea-3dpwr.fee quarter
    geometry = quarter
        keff = 1.02918
       nodes = 70779
        DOFs = 141558
    [0/2 tux]   memory = 1.5 Gb (local) 3.0 Gb (global)
    [1/2 tux]   memory = 1.5 Gb (local) 3.0 Gb (global)
        wall = 17.0 sec
    $ mpiexec -n 4 feenox iaea-3dpwr.fee quarter
    geometry = quarter
        keff = 1.02918
       nodes = 70779
        DOFs = 141558
    [0/4 tux]   memory = 1.0 Gb (local) 3.9 Gb (global)
    [1/4 tux]   memory = 0.9 Gb (local) 3.9 Gb (global)
    [2/4 tux]   memory = 1.1 Gb (local) 3.9 Gb (global)
    [3/4 tux]   memory = 0.9 Gb (local) 3.9 Gb (global)
        wall = 13.0 sec
    $ 

  [Figure 16: Gmsh’s tutorial t21: two squares decomposed in 6 partitions.]:
    t21.svg

Flexibility

  The tool should be able to handle engineering problems involving
  different materials with potential spatial and time-dependent
  properties, such as temperature-dependent thermal expansion
  coefficients and/or non-constant densities. Boundary conditions must
  be allowed to depend on both space and time as well, like non-uniform
  pressure loads and/or transient heat fluxes.

The third-system effect mentioned in sec. 2 involves more than ten years
of experience in the nuclear industry,[4] where complex dependencies of
multiple material properties over space through intermediate
distributions (temperature, neutronic poisons, etc.) and time (control
rod positions, fuel burn-up, etc.) are mandatory. One of the cornerstone
design decisions in FeenoX is that everything is an expression
(sec. 3.1.5). Here, “everything” means any location in the input file
where a numerical value is expected. The most common use case is in the
PRINT keyword. For example, the Sophomore’s dream (in contrast to
Freshman’s dream) identity

$$
\int_{0}^{1} x^{-x} \, dx = \sum_{n=1}^{\infty} n^{-n}
$$

can be illustrated like this:

    VAR x
    PRINT %.7f integral(x^(-x),x,0,1)
    VAR n
    PRINT %.7f sum(n^(-n),n,1,1000)

    $ feenox sophomore.fee
    1.2912861
    1.2912860
    $

Of course most engineering problems will not need explicit
integrals—although a few of them do—but some might need summation loops,
so it is handy to have these functionals available inside the FEA tool.
This might seem to go against the “keep it simple” and “do one thing
good” Unix principle, but definitely follows Alan Kay’s idea that
“simple things should be simple, complex things should be possible”
(further discussion in sec. 3.1.4).

Flexibility in defining non-trivial material properties is illustrated
with the following example, where two squares made of different
dimensionless materials are juxtaposed in thermal contact (glued?) and
subject to different boundary conditions at each of the four sides
(fig. 17).

[Figure 17: Two non-dimensional 1 × 1 squares each in thermal contact
made of different materials.]

Figure 17: Two non-dimensional 1 × 1 squares each in thermal contact
made of different materials.

The yellow square is made of a certain material with a conductivity that
depends algebraically (and fictitiously) the temperature like

$$
k_\text{yellow}(x,y) = \frac{1}{2} + T(x,y)
$$

The cyan square has a space-dependent temperature given by a table of
scattered data as a function of the spatial coordinates x and y (origin
is left bottom corner of the yellow square) without any particular
structure on the definition points:

    x     y    k_(cyan)(x, y)
  ----- ----- ----------------
    1     0         1.0
    1     1         1.5
    2     0         1.3
    2     1         1.8
   1.5   0.5        1.7

The cyan square generates a temperature-dependent power density (per
unit area) given by

q_(cyan)^(′′)(x, y) = 0.2 ⋅ T(x, y)

The yellow one does not generate any power so q_(yellow)^(′′) = 0.
Boundary conditions are

$$
\begin{cases}
T(x,y) = y & \text{at the left edge $y=0$} \\
T(x,y) = 1-\cos\left(\frac{1}{2}\pi \cdot x\right) & \text{at the bottom edge $x=0$} \\
q'(x,y) = 2-y & \text{at the right edge $x=2$} \\
q'(x,y) = 1 & \text{at the top edge $y=1$} \\
\end{cases}
$$

The input file illustrate how flexible FeenoX is and, again, how the
problem definition in a format that the computer can understand
resembles the humanly-written formulation of the original engineering
problem:

    PROBLEM thermal 2d            # heat conduction in two dimensions
    READ_MESH two-squares.msh

    k_yellow(x,y) = 1/2+T(x,y)    # thermal conductivity
    FUNCTION k_cyan(x,y) INTERPOLATION shepard DATA {
        1   0    1.0
        1   1    1.5
        2   0    1.3
        2   1    1.8
        1.5 0.5  1.7 }

    q_cyan(x,y) = 1-0.2*T(x,y)    # dissipated power density
    q_yellow(x,y) = 0
        
    BC left   T=y                 # temperature (dirichlet) bc
    BC bottom T=1-cos(pi/2*x)
    BC right  q=2-y               # heat flux (neumann) bc
    BC top    q=1

    SOLVE_PROBLEM
    WRITE_MESH two-squares-results.msh  T #CELLS k

Note that FeenoX is flexible enough to…

1.  handle mixed meshes (the yellow square is meshed with triangles and
    the other one with quadrangles)
2.  use point-wise defined properties even though there is not
    underlying structure nor topology for the points where the data is
    defined (FeenoX could have read data from a .msh or .vtk file
    respecting the underlying topology)
3.  understand that the problem is non-linear so as to use PETSc’s SNES
    framework automatically (the conductivity and power source depend on
    the temperature).

[a]

a

[b]

b

Figure 18: Temperature (main result) and conductivity for the
two-squares thermal problem.. a — Temperature defined at nodes, b —
Conductivity defined at cells

In the very same sense that variables x, y and z appearing in the input
refer to the spatial coordinates x, y and z respectively, the special
variable t refers to the time t. The requirement of allowing
time-dependent boundary conditions can be illustrated by solving the
NAFEMS T3 one-dimensional transient heat transfer benchmark. It consists
of a slab of 0.1 meters long subject to a fixed homogeneous temperature
on one side, i.e.

T(x = 0) = 0 °C

and to a transient temperature

$$
T(x=0.1~\text{m},t)=100~\text{°C} \cdot \sin\left( \frac{\pi \cdot t}{40~\text{s}}\right)
$$

at the other side. There is zero internal heat generation, at t = 0 all
temperature is equal to 0°C (sic) and conductivity, specific heat and
density are constant and uniform. The problem asks for the temperature
at location x = 0.08 m at time t = 32 s. The reference result is
T(0.08 m, 32 s) = 36.60 °C.

    PROBLEM thermal DIM 1 # NAFEMS-T3 benchmark: 1d transient heat conduction
    READ_MESH slab-0.1m.msh

    end_time = 32      # transient up to 32 seconds
    T_0(x) = 0         # initial condition "all temperature is equal to 0°C"

    # prescribed temperatures as boundary conditions
    BC left  T=0       
    BC right T=100*sin(pi*t/40)

    # uniform and constant properties
    k = 35.0           # conductivity [W/(m K)]
    cp = 440.5         # heat capacity [J/(kg K)]
    rho = 7200         # density [kg/m^3]

    SOLVE_PROBLEM

    # print detailed evolution into an ASCII file 
    PRINT FILE nafems-t3.dat %.3f t dt %.2f T(0.05) T(0.08) T(0.1) 

    # print the asked result into the standard output
    IF done
     PRINT "T(0.08m,32s) = " T(0.08) "ºC"
    ENDIF

    $ gmsh -1 slab-0.1m.geo 
    [...]
    Info    : Done meshing 1D (Wall 0.000213023s, CPU 0.000836s)
    Info    : 61 nodes 62 elements
    Info    : Writing 'slab-0.1m.msh'...
    Info    : Done writing 'slab-0.1m.msh'
    Info    : Stopped on Sun Dec 12 19:41:18 2021 (From start: Wall 0.00293443s, CPU 0.02605s)
    $ feenox nafems-t3.fee 
    T(0.08m,32s) =  36.5996 ºC
    $ pyxplot nafems-t3.ppl
    $

[Figure 19: Temperature vs. time at three axial locations for the
NAFEMS T3 benchmark]

Figure 19: Temperature vs. time at three axial locations for the
NAFEMS T3 benchmark

Besides “everything is an expression,” FeenoX follows another
cornerstone rule: simple problems ought to have simple inputs, akin to
Unix’ rule of simplicity—that addresses the first half of Alan Kay’s
quote above. This rule is further discussed in sec. 3.1.

[4] This experience also shaped many of the features that FeenoX has and
most of the features is does deliberately not have.

  [PRINT]: https://www.seamplex.com/feenox/doc/feenox-manual.html#print
  [Sophomore’s dream]: https://en.wikipedia.org/wiki/Sophomore%27s_dream
  [Freshman’s dream]: https://en.wikipedia.org/wiki/Freshman%27s_dream
  [Alan Kay]: https://en.wikipedia.org/wiki/Alan_Kay
  [Figure 17: Two non-dimensional 1 × 1 squares each in thermal contact made of different materials.]:
    two-squares-mesh.svg
  [17]: two-squares-temperature.png
  [18]: two-squares-conductivity.png
  [Figure 19: Temperature vs. time at three axial locations for the NAFEMS T3 benchmark]:
    nafems-t3.svg

Extensibility

  It should be possible to add other problem types casted as PDEs (such
  as the Schröedinger equation) to the tool using a reasonable amount of
  time by one or more skilled programmers. The tool should also allow
  new models (such as non-linear stress-strain constitutive
  relationships) to be added as well.

When solving partial differential equations numerically, there are some
steps that are independent of the type of PDE. For example,

1.  read the mesh
2.  evaluate the coefficients (i.e. material properties)
3.  solve the discretized systems of algebraic equations
4.  write the results

Even though FeenoX is written in C, it makes extensive use of function
pointers to mimic C++’s virtual methods. This way, depending on the
problem type given with the PROBLEM keyword, particular PDE-specific
routines are called to

1.  initialize and set up solver options (steady-state/transient,
    linear/non-linear, regular/eigenproblem, etc.)
2.  parse boundary conditions given in the BC keyword
3.  build elemental contributions for
    a.  volumetric stiffness and/or mass matrices
    b.  natural boundary conditions
4.  compute secondary fields (heat fluxes, strains and stresses, etc.)
    out of the gradients of the primary fields
5.  compute per-problem key performance indicators (min/max temperature,
    displacement, stress, etc.)
6.  write particular post-processing outputs

Indeed, each of the supported problems, namely

-   laplace
-   thermal
-   mechanical
-   modal
-   neutron_diffusion
-   neutron_sn

is a separate directory under src/pdes that implements these “virtual”
methods (recall that they are function pointers) that are resolved at
runtime when parsing the main input file.

FeenoX was designed with separated common “mathematical” routines from
the particular “physical” ones in such a way that any of these
directories can be removed and the code would still compile. The
autogen.sh is in charge of

1.  parsing the source tree
2.  detect which are the available PDEs
3.  create appropriate snippets of code so the common mathematical
    framework can resolve the function pointers for the entry points
4.  build the Makefile.am templates used by the configure script

For example, if we removed the directory src/pdes/thermal from a
temporary clone of the main Git repository then the whole bootstrapping,
configuration and compilation procedure would produce a feenox
executable without the ability to solve thermal problems:

    ~$ cd tmp/
    ~/tmp$ git clone https://github.com/seamplex/feenox
    Cloning into 'feenox'...
    remote: Enumerating objects: 6908, done.
    remote: Counting objects: 100% (4399/4399), done.
    remote: Compressing objects: 100% (3208/3208), done.
    remote: Total 6908 (delta 3085), reused 2403 (delta 1126), pack-reused 2509
    Receiving objects: 100% (6908/6908), 10.94 MiB | 6.14 MiB/s, done.
    Resolving deltas: 100% (4904/4904), done.
    ~/tmp$ cd feenox
    ~/tmp/feenox$ rm -rf src/pdes/thermal/
    ~/tmp/feenox$ ./autogen.sh 
    creating Makefile.am... ok
    creating src/Makefile.am... ok
    calling autoreconf... 
    configure.ac:18: installing './compile'
    configure.ac:15: installing './config.guess'
    configure.ac:15: installing './config.sub'
    configure.ac:17: installing './install-sh'
    configure.ac:17: installing './missing'
    parallel-tests: installing './test-driver'
    src/Makefile.am: installing './depcomp'
    done
    ~/tmp/feenox$ ./configure.sh 
    [...]
    configure: creating ./config.status
    config.status: creating Makefile
    config.status: creating src/Makefile
    config.status: creating doc/Makefile
    config.status: executing depfiles commands
    ~/tmp/feenox$ make
    [...]
    make[1]: Leaving directory '/home/gtheler/tmp/feenox'
    ~/tmp/feenox$

Now if we wanted to run the thermal problem with the two juxtaposed
squares from sec. 2.5 above, the “temporary” FeenoX would complain. But
it would still be able solve the NAFEMS LE10 problem problem right away:

    ~/tmp/feenox$ cd doc/
    ~/tmp/feenox/doc$ ../feenox two-squares.fee 
    error: two-squares.fee: 1: unknown problem type 'thermal'
    ~/tmp/feenox/doc$ cd ../examples
    ~/tmp/feenox/examples$ ../feenox nafems-le10.fee 
    sigma_y @ D =   -5.38367        MPa
    ~/tmp/feenox/examples$

The list of available PDEs that a certain FeenoX binary has can be found
by using the --pdes option. They are sorted alphabetically, one type per
line:

    ~/tmp/feenox/examples$ feenox --pdes
    laplace
    mechanical
    modal
    neutron_diffusion
    ~/tmp/feenox/examples$

Besides removals, additions—which are also handled by autogen.sh as
describe above—are far more interesting to discuss. Additional elliptic
problems can be added by using the laplace directory as a template while
using the other directories as examples about how to add further
features (e.g. a Robin-type boundary condition in thermal and a
vector-valued unknown in mechanical). More information can be found in
the FeenoX programming & contributing section.

As already discussed in sec. 1, FeenoX is free-as-in-freedom software
licensed under the terms of the GNU General Public License version 3 or,
at the user convenience, any later version. In the particular case of
additions to the code base, this fact has two implications.

i.  Every person in the world is free to modify FeenoX to suit their
    needs, including adding a new problem type either by

    a.  using one of the existing ones as a template, or
    b.  creating a new directory from scratch

    without asking anybody for any kind of permission. In case this
    person does not how to program, he or she has the freedom to hire
    somebody else to do it. It is this the sense of the word “free” in
    the compound phrase “free software:” freedom to do what they think
    fit (except to make it non-free, see next bullet).

ii. People adding code own the copyright of the additional code. Yet, if
    they want to distribute the modified version they have to do it also
    under the terms of the GPLv3+ and under a name that does not induce
    the users to think the modified version is the original FeenoX
    distribution.[5] That is to say, free software ought to remain
    free—a.k.a. as copyleft.

Regarding additional material models, the virtual methods that compute
the elemental contributions to the stiffness matrix also use function
pointers to different material models (linear isotropic elastic,
orthotropic elastic, etc.) and behaviors (isotropic thermal expansion,
orthotropic thermal expansion, etc.) that are resolved at run time.
Following the same principle, new models can be added by adding new
routines and resolving them depending on the user’s input.

[5] Even better, these authors should ask to merge their contributions
into FeenoX’s main code base.

  [C]: https://en.wikipedia.org/wiki/C_(programming_language)
  [function pointers]: https://en.wikipedia.org/wiki/Function_pointer
  [C++]: https://en.wikipedia.org/wiki/C%2B%2B
  [virtual methods]: https://en.wikipedia.org/wiki/Virtual_function
  [PROBLEM]: https://www.seamplex.com/feenox/doc/feenox-manual.html#problem
  [laplace]: https://github.com/seamplex/feenox/tree/main/src/pdes/laplace
  [thermal]: https://github.com/seamplex/feenox/tree/main/src/pdes/thermal
  [mechanical]: https://github.com/seamplex/feenox/tree/main/src/pdes/mechanical
  [modal]: https://github.com/seamplex/feenox/tree/main/src/pdes/modal
  [neutron_diffusion]: https://github.com/seamplex/feenox/tree/main/src/pdes/neutron_difussion
  [neutron_sn]: https://github.com/seamplex/feenox/tree/main/src/pdes/neutron_sn
  [src/pdes]: https://github.com/seamplex/feenox/tree/main/src/pdes
  [NAFEMS LE10 problem]: https://www.seamplex.com/feenox/examples/#nafems-le10-thick-plate-pressure-benchmark
  [FeenoX programming & contributing]: https://www.seamplex.com/feenox/doc/#programming-and-contributing
  [free-as-in-freedom]: https://en.wikipedia.org/wiki/Free_as_in_Freedom
  [GNU General Public License]: https://www.gnu.org/licenses/gpl-3.0
  [copyleft]: https://en.wikipedia.org/wiki/Copyleft

Interoperability

  A mean of exchanging data with other computational tools complying to
  requirements similar to the ones outlined in this document. This
  includes pre and post-processors but also other computational programs
  so that coupled calculations can be eventually performed by
  efficiently exchanging information between calculation codes.

Sec. 1.2 already introduced the ideas about interoperability behind the
Unix philosophy which make up for most the the FeenoX design basis.
Essentially, they sum up to “do only one thing but do it well.” Since
FeenoX is filter (or a transfer-function), interoperability is a must.
So far, this SDS has already shown examples of exchanging information
with:

-   Kate (with syntax highlighting): fig. 3
-   Gmsh (both as a mesher and a post-processor): figs. 8, 9, 11, 13,
    17, 18
-   Paraview: fig. 4
-   Gnuplot: figs. 6, 15
-   Pyxplot: figs. 12, 14, 19

To illustrate this approach, consider the following input file that
solves Laplace’s equation ∇²ϕ = 0 on a square with some space-dependent
boundary conditions. Either Gmsh or Paraview can be used to post-process
the results:

$$
\begin{cases}
\phi(x,y) = +y & \text{for $x=-1$ (left)} \\
\phi(x,y) = -y & \text{for $x=+1$ (right)} \\
\nabla \phi \cdot \hat{\vec{n}} = \sin\left(\frac{\pi}{2} \cdot x\right) & \text{for $y=-1$ (bottom)} \\
\nabla \phi \cdot \hat{\vec{n}} =0 & \text{for $y=+1$ (top)} \\
\end{cases}
$$

    PROBLEM laplace 2d
    READ_MESH square-centered.msh # [-1:+1]x[-1:+1]

    # boundary conditions
    BC left    phi=+y
    BC right   phi=-y
    BC bottom  dphidn=sin(pi/2*x)
    BC top     dphidn=0

    SOLVE_PROBLEM

    # same output in .msh and in .vtk formats
    WRITE_MESH laplace-square.msh phi VECTOR dphidx dphidy 0
    WRITE_MESH laplace-square.vtk phi VECTOR dphidx dphidy 0

[a] [b]

Figure 20: Laplace’s equation solved with FeenoX. a — Post-processed
with Gmsh, b — Post-processed with Paraview

A great deal of FeenoX interoperability capabilities comes from another
design decision: output is 100% controlled by the user (further
discussed in sec. 3.2), a.k.a. “no PRINT, no OUTPUT” whose corollary is
the Unix rule of silence (sec. 11.11). The following input file computes
the natural frequencies of oscillation of a cantilevered wire both using
the Euler-Bernoulli theory and finite elements. It writes a
Gihub-formatted markdown table into the standard output which is then
piped to Pandoc and then converted to HTML:

    # compute the first five natural modes of a cantilever wire
    # see https://www.seamplex.com/docs/alambre.pdf (in Spanish)
    # (note that there is a systematic error of a factor of two in the measured values)
    # see https://www.seamplex.com/feenox/examples/modal.html#five-natural-modes-of-a-cantilevered-wire
    # for a slightly more complex example

    # wire geometry
    l = 0.5*303e-3   # [ m ] cantilever length
    d = 1.948e-3     # [ m ] diameter

    # material properties for copper
    mass = 0.5*8.02e-3       # [ kg ] total mass (half the measured because of the experimental disposition)
    volume = pi*(0.5*d)^2*l
    rho = mass/volume        # [ kg / m^3 ] density = mass (measured) / volume 
    E = 2*66.2e9             # [ Pa ] Young modulus (twice because the factor-two error)
    nu = 0                   # Poisson’s ratio (does not appear in Euler-Bernoulli)

    # compute analytical solution
    # first compute the first five roots ok cosh(kl)*cos(kl)+1 
    VECTOR kl[5]
    kl[i] = root(cosh(t)*cos(t)+1, t, 3*i-2,3*i+1)

    # then compute the frequencies according to Euler-Bernoulli
    # note that we need to use SI inside the square root
    A = pi * (d/2)^2
    I = pi/4 * (d/2)^4

    VECTOR f_euler[5]
    f_euler[i] = 1/(2*pi) * kl(i)^2 * sqrt((E * I)/(rho * A * l^4))

    # now compute the modes numerically with FEM
    # note that each mode is duplicated as it is degenerated
    PROBLEM modal 3D MODES 10
    READ_MESH wire-hex.msh
    BC fixed fixed
    SOLVE_PROBLEM


    # write a github-formatted markdown table comparing the frequencies
    PRINT "  \$n\$ |   FEM  | Euler | Relative difference [%]"
    PRINT ":----:+:------:+:-----:+:-----------------------:"
    PRINT_VECTOR SEP " | "  %g i  %.4g f(2*i-1) f_euler   %.2f 100*(f_euler(i)-f(2*i-1))/f_euler(i)
    PRINT
    PRINT ": Comparison of analytical and numerical frequencies, in Hz"

    $ gmsh -3 wire-hex.geo 
    [...]
    $ feenox wire.fee | pandoc  
    <table>
    <caption>Comparison of analytical and numerical frequencies, in Hz</caption>
    <thead>
    <tr class="header">
    <th style="text-align: center;"><span class="math inline"><em>n</em></span></th>
    <th style="text-align: center;">FEM</th>
    <th style="text-align: center;">Euler</th>
    <th style="text-align: center;">Relative difference [%]</th>
    </tr>
    </thead>
    <tbody>
    <tr class="odd">
    <td style="text-align: center;">1</td>
    <td style="text-align: center;">45.84</td>
    <td style="text-align: center;">45.84</td>
    <td style="text-align: center;">0.02</td>
    </tr>
    <tr class="even">
    <td style="text-align: center;">2</td>
    <td style="text-align: center;">287.1</td>
    <td style="text-align: center;">287.3</td>
    <td style="text-align: center;">0.06</td>
    </tr>
    <tr class="odd">
    <td style="text-align: center;">3</td>
    <td style="text-align: center;">803.4</td>
    <td style="text-align: center;">804.5</td>
    <td style="text-align: center;">0.13</td>
    </tr>
    <tr class="even">
    <td style="text-align: center;">4</td>
    <td style="text-align: center;">1573</td>
    <td style="text-align: center;">1576</td>
    <td style="text-align: center;">0.24</td>
    </tr>
    <tr class="odd">
    <td style="text-align: center;">5</td>
    <td style="text-align: center;">2596</td>
    <td style="text-align: center;">2606</td>
    <td style="text-align: center;">0.38</td>
    </tr>
    </tbody>
    </table>
    $

Of course these kind of FeenoX-generated tables can be inserted verbatim
into Markdown documents (just like this one) and rendered as tbl. 1.

   n    FEM    Euler   Relative difference [%]
  --- ------- ------- -------------------------
   1   45.84   45.84            0.02
   2   287.1   287.3            0.06
   3   803.4   804.5            0.13
   4   1573    1576             0.24
   5   2596    2606             0.38

  : Table 1: Comparison of analytical and numerical frequencies, in Hz

[a]

a

[b]

b

Figure 21: Results of the same fatigue problem solved using two
different philosophies.. a — A multi-billion-dollar agency using the
Windows philosophy (presumably mouse-based copy and pasted into Word), b
— A small third-world consulting company using the Unix philosophy
(FeenoX+AWK+LaTeX)

It should be noted that all of the programs and tools mentioned to be
interoperable with FeenoX are free and open source software. This is not
a requirement from the SRS, but is indeed a nice-to-have feature.

  [Kate]: https://kate-editor.org/
  [Gmsh3]: http://gmsh.info/
  [Paraview]: https://www.paraview.org/
  [Gnuplot6]: http://gnuplot.info/
  [Pyxplot]: http://www.pyxplot.org.uk/
  [19]: laplace-square-gmsh
  [20]: laplace-square-paraview
  [PRINT]: https://www.seamplex.com/feenox/doc/feenox-manual.html#print
  [Gihub-formatted markdown table]: https://github.github.com/gfm/#tables-extension-
  [Pandoc]: https://pandoc.org/
  [21]: nureg.png
  [22]: cne.png
  [free and open source software]: https://en.wikipedia.org/wiki/Free_and_open-source_software

Interfaces

  The tool should be able to allow remote execution without any user
  intervention after the tool is launched. To achieve this goal it is
  required that the problem should be completely defined in one or more
  input files and the output should be complete and useful after the
  tool finishes its execution, as already required. The tool should be
  able to report the status of the execution (i.e. progress, errors,
  etc.) and to make this information available to the user or process
  that launched the execution, possibly from a remote location.

FeenoX is provided as a console-only executable (recall it is a program,
not a library) which can be run remotely through the mechanisms
discussed in sec. 2.2 without any requirement such as graphical servers
or special input devices. As already explained, when executed without
any arguments, FeenoX writes a brief message with the version (further
discussed in sec. 4.1) and the basic usage on the standard output and
return to the calling shell with a return errorlevel zero:

    $ feenox 
    FeenoX v0.3.292-gc932cb5 
    a cloud-first free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    usage: feenox [options] inputfile [replacement arguments] [petsc options]

      -h, --help         display options and detailed explanations of command-line usage
      -v, --version      display brief version information and exit
      -V, --versions     display detailed version information
      --pdes             list the types of PROBLEMs that FeenoX can solve, one per line
      --elements_info    output a document with information about the supported element types
      --linear           force FeenoX to solve the PDE problem as linear
      --non-linear       force FeenoX to solve the PDE problem as non-linear

    Run with --help for further explanations.
    $ echo $?
    0
    $ 

The --version option follows the GNU Coding Standards guidelines:

    $ feenox --version
    FeenoX v0.3.292-gc932cb5 
    a cloud-first free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    Copyright © 2009--2024 https://seamplex.com/feenox
    GNU General Public License v3+, https://www.gnu.org/licenses/gpl.html. 
    FeenoX is free software: you are free to change and redistribute it.
    There is NO WARRANTY, to the extent permitted by law.
    $

The --versions option shows more information about the FeenoX build and
the libraries the binary was linked against:

    $ feenox -V
    FeenoX v1.0.8-g731ca5d 
    a cloud-first free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    Last commit date   : Wed Mar 20 08:11:05 2024 -0300
    Build date         : Wed Mar 20 16:38:10 2024 -0300
    Build architecture : linux-gnu x86_64
    Compiler version   : gcc (Debian 12.2.0-14) 12.2.0
    Compiler expansion : gcc -Wl,-z,relro -I/usr/include/x86_64-linux-gnu/mpich -L/usr/lib/x86_64-linux-gnu -lmpich
    Compiler flags     : -O3 -flto=auto -no-pie
    Builder            : gtheler@tom
    GSL version        : 2.7.1
    SUNDIALS version   : N/A
    PETSc version      : Petsc Development GIT revision: v3.20.5-935-g78ad52f83fb  GIT Date: 2024-03-25 05:31:58 +0000
    PETSc arch         : arch-linux-c-debug
    PETSc options      : --download-eigen --download-hdf5 --download-hypre --download-metis --download-mumps --download-parmetis --download-scalapack --download-slepc --with-64-bit-indices=no --with-debugging=yes --with-precision=double --with-scalar-type=real PETSC_ARCH=arch-linux-c-debug
    SLEPc version      : SLEPc Development GIT revision: v3.20.1-36-g7a35a7b97  GIT Date: 2023-12-02 02:30:03 -0600
    $

The --help option gives a more detailed usage:

    $ feenox --help
    usage: feenox [options] inputfile [replacement arguments] [petsc options]

      -h, --help         display options and detailed explanations of command-line usage
      -v, --version      display brief version information and exit
      -V, --versions     display detailed version information
      -c, --check        validates if the input file is sane or not
      --pdes             list the types of PROBLEMs that FeenoX can solve, one per line
      --elements_info    output a document with information about the supported element types
      --linear           force FeenoX to solve the PDE problem as linear
      --non-linear       force FeenoX to solve the PDE problem as non-linear

      --progress         print ASCII progress bars when solving PDEs
      --mumps            ask PETSc to use the direct linear solver MUMPS

    Instructions will be read from standard input if “-” is passed as
    inputfile, i.e.

        $ echo 'PRINT 2+2' | feenox -
        4

    The optional [replacement arguments] part of the command line mean that
    each argument after the input file that does not start with an hyphen
    will be expanded verbatim in the input file in each occurrence of $1,
    $2, etc. For example

        $ echo 'PRINT $1+$2' | feenox - 3 4
        7

    PETSc and SLEPc options can be passed in [petsc options] (or [options])
    as well, with the difference that two hyphens have to be used instead of
    only once. For example, to pass the PETSc option -ksp_view the actual
    FeenoX invocation should be

        $ feenox input.fee --ksp_view

    For PETSc options that take values, en equal sign has to be used:

        $ feenox input.fee --mg_levels_pc_type=sor

    See https://www.seamplex.com/feenox/examples for annotated examples.

    Report bugs at https://github.com/seamplex/feenox/issues
    Ask questions at https://github.com/seamplex/feenox/discussions
    Feenox home page: https://www.seamplex.com/feenox/
    $

The input file provided as the first argument to the feenox binary
contains all the information needed to solve the problem, so any further
human intervention is not needed after execution begins, as requested by
the SRS. If the execution finishes successfully, FeenoX returns a zero
errorlevel to the calling shell (and follows the Unix rule of silence,
i.e. no PRINT no output):

    $ feenox maze.fee
    $ echo $?
    0
    $

If there is problem during execution (including parsing and run-time
errors), a line prefixed with error: is written into the standard error
file descriptor and a non-zero errorlevel is returned:

    $ feenox hello.fee 
    error: input file needs at least one more argument in commandline
    $ echo $?
    1
    $ feenox hello.fee world
    Hello world!
    $ echo $?
    0
    $ 

This way, the error line can easily be parsed with standard Unix tools
like grep and cut or with a proper regular expression parser.
Eventually, any error should be forwarded back to the initiating
entity—which depending on the workflow can be a human or an automation
script—in order for her/him/it to fix it.

Following the rule of repair (sec. 11.12), ill-defined input files with
missing material properties or inconsistent boundary conditions are
detected before the actual assembly of the matrix begins:

    $ feenox thermal-1d-dirichlet-no-k.fee
    error: undefined thermal conductivity 'k'
    $ feenox thermal-1d-dirichlet-wrong-bc.fee
    error: boundary condition 'xxx' does not have a physical group in mesh file 'slab.msh'
    $ 

Error code are designed to be useful and helpful. An attempt to open a
file might fail due to a wide variety of reasons. FeenoX clearly states
which one caused the error so it can be remedied:

    $ cat test.fee 
    READ_MESH cantilever.msh
    $ feenox test.fee 
    $ chmod -r cantilever.msh 
    $ feenox test.fee 
    error: 'Permission denied' when opening file 'cantilever.msh' with mode 'r'
    $ rm cantilever.msh 
    $ feenox test.fee 
    error: 'No such file or directory' when opening file 'cantilever.msh' with mode 'r'
    $ 

If the command-line option --progress (or the PROGRESS keyword in
PROBLEM) is used, then FeenoX writes into the standard output three
“bars” showing the progress of

1.  (.) the build and assembly of the problem matrices (stiffness and
    mass if applicable)
2.  (-) the iterative solution of the problem (either linear or
    non-linear)
3.  (=) the recovery of gradient-based (i.e. strains and stresses) out
    of the primary solution

    $ gmsh -3 nafems-le10.geo
    Info    : Running 'gmsh -3 nafems-le10.geo' [Gmsh 4.9.4-git-10d6a15fd, 1 node, max. 1 thread]
    Info    : Started on Sat Feb  5 11:26:39 2022
    Info    : Reading 'nafems-le10.geo'...
    Info    : Reading 'nafems-le10.step'...
    Info    :  - Label 'Shapes/Open CASCADE STEP translator 7.6 1' (3D)
    Info    : Done reading 'nafems-le10.step'
    Info    : Done reading 'nafems-le10.geo'
    Info    : Meshing 1D...
    [...]
    Info    : Done optimizing mesh (0.106654 s)
    Info    : Done optimizing high-order mesh (0.106654 s)
    Info    : Done optimizing mesh (Wall 0.114461s, CPU 0.114465s)
    Info    : 50580 nodes 40278 elements
    Info    : Writing 'nafems-le10.msh'...
    Info    : Done writing 'nafems-le10.msh'
    Info    : Stopped on Sat Feb  5 11:26:40 2022 (From start: Wall 1.08693s, CPU 1.1709s)
    $ feenox nafems-le10.fee --progress
    .............................................................................................
    ---------------------------------------------------------------------------------------------
    =============================================================================================
    sigma_y @ D =   -5.38228        MPa
    $ 

Once again, these ASCII-based progress bars can be parsed by the calling
entity and then present it back to the user. For example, fig. 10 shows
how the web-based GUI CAEplex shows progress inside an Onshape tab.

Since FeenoX uses PETSc (and SLEPc), command-line options can be passed
from FeenoX to PETSc. The only difference is that since FeenoX follows
the POSIX standard regarding options and PETSc does not, double dashes
are required instead of PETSc’ single-dash approach. That is to say,
instead of -ksp_monitor one would have to pass --ksp_monitor (see
sec. 3.1.3 for details about the input files):

    $ feenox thermal-1d-dirichlet-uniform-k.fee --ksp_monitor
      0 KSP Residual norm 1.913149816332e+00 
      1 KSP Residual norm 2.897817223901e-02 
      2 KSP Residual norm 3.059845525572e-03 
      3 KSP Residual norm 1.943995979588e-04 
      4 KSP Residual norm 7.418444674938e-06 
      5 KSP Residual norm 1.233527903582e-07 
    0.5
    $

Any PETSc command-line option takes precedence over the settings in the
input file, so the pre-conditioner can be changed even if explicitly
given with the PRECONDITIONER keyword:

    $ feenox thermal-1d-dirichlet-uniform-k.fee --ksp_monitor --pc_type=ilu
      0 KSP Residual norm 2.678619047193e+00
      1 KSP Residual norm 7.172418823644e-16
    0.5
    $ 

If PETSc is compiled with MUMPS, FeenoX provides a --mumps option:

    $ feenox thermal-1d-dirichlet-uniform-k.fee --ksp_monitor --mumps
      0 KSP Residual norm 1.004987562109e+01 
      1 KSP Residual norm 4.699798436762e-15 
    0.5
    $

An illustration of the usage of PETSc arguments and the fact that FeenoX
automatically detects whether a problem is linear or not is given below.
The case thermal-1d-dirichlet-uniform-k.fee is linear while the
two-squares.fee from section sec. 2.5 is not. Therefore, an SNES monitor
should give output for the latter but not for the former. In effect:

    $ feenox thermal-1d-dirichlet-uniform-k.fee --snes_monitor
    0.5
    $ feenox two-squares.fee --snes_monitor
      0 SNES Function norm 9.658033489479e+00 
      1 SNES Function norm 1.616559951959e+00 
      2 SNES Function norm 1.879821597500e-01 
      3 SNES Function norm 2.972104258103e-02 
      4 SNES Function norm 2.624028350822e-03 
      5 SNES Function norm 1.823396478825e-04 
      6 SNES Function norm 2.574514225532e-05 
      7 SNES Function norm 2.511975376809e-06 
      8 SNES Function norm 4.230090605033e-07 
      9 SNES Function norm 5.154440365087e-08 
    $

As already explained in sec. 2.2.2, FeenoX supports run-time replacement
arguments that get replaced verbatim in the input file. This feature is
handy when the same problem has to be solved over different meshes, such
as when investigating the h-convergence order over Gmsh’s element scale
factor -clscale:

    PROBLEM thermal 1D
    READ_MESH slab-$1.msh
    k(x) = 1+T(x)
    BC left  T=0
    BC right T=1
    SOLVE_PROBLEM
    PRINT nodes %+.2e integral((T(x)-(sqrt(1+(3*x))-1))^2,x,0,1)

    $ for c in $(feenox steps.fee); do gmsh -v 0 -1 slab.geo -clscale ${c} -o slab-${c}.msh; feenox thermal-1d-dirichlet-temperature-k-parametric.fee ${c}; done  | sort -g
    11      +6.50e-07
    13      +3.15e-07
    14      +2.29e-07
    15      +1.70e-07
    17      +1.00e-07
    20      +5.04e-08
    24      +2.34e-08
    32      +7.19e-09
    39      +3.46e-09
    49      +1.31e-09
    $

Since the main input file is the first argument (not counting POSIX
options starting with at least one dash), FeenoX might be invoked
indirectly by adding a shebang line to the input file with the location
of the system-wide executable and setting execution permissions on the
input file itself. So if we modify the above hello.fee example as hello

    #!/usr/local/bin/feenox
    PRINT "Hello $1!"

and then we can do

    $ chmod +x hello
    $ ./hello world
    Hello world!
    $ ./hello universe
    Hello universe!
    $

For example, the following she-banged input file can be used to compute
the derivative of a column with respect to the other as a Unix filter:

    #!/usr/local/bin/feenox
    FUNCTION f(t) FILE - INTERPOLATION steffen

    a = vecmin(vec_f_t)
    b = vecmax(vec_f_t)

    # time step from arguments (or default 10 steps)
    DEFAULT_ARGUMENT_VALUE 1 (b-a)/10
    h = $1

    VAR t'
    f'(t) = derivative(f(t'),t',t)

    PRINT_FUNCTION f' MIN a+0.5*h MAX b-0.5*h STEP h

    $ feenox f.fee "sin(t)" 1 | ./derivative.fee 
    0.05    0.998725
    0.15    0.989041
    0.25    0.968288
    0.35    0.939643
    0.45    0.900427
    0.55    0.852504
    0.65    0.796311
    0.75    0.731216
    0.85    0.66018
    0.95    0.574296
    $

where f.fee is a “command-line function generator”:

    end_time = $2
    PRINT t $1

  [GNU Coding Standards guidelines]: https://www.gnu.org/prep/standards/standards.html#g_t_002d_002dversion
  [PRINT]: https://www.seamplex.com/feenox/doc/feenox-manual.html#print
  [PROBLEM]: https://www.seamplex.com/feenox/doc/feenox-manual.html#problem
  [shebang]: https://en.wikipedia.org/wiki/Shebang_%28Unix%29
  [compute the derivative of a column with respect to the other as a Unix filter]:
    https://seamplex.com/feenox/examples/basic.html#computing-the-derivative-of-a-function-as-a-unix-filter

Problem input

  The problem should be completely defined by one or more input files.
  These input files might be

  a.  particularly formatted files to be read by the tool in an ad-hoc
      way, and/or
  b.  source files for interpreted languages which can call the tool
      through and API or equivalent method, and/or
  c.  any other method that can fulfill the requirements described so
      far.

  Preferably, these input files should be plain ASCII files in order to
  allow to manage changes using distributed version control systems such
  as Git. If the tool provides an API for an interpreted language such
  as Python, then the Python source used to solve a particular problem
  should be Git-friendly. It is recommended not to track revisions of
  mesh data files but of the source input files, i.e. to track the
  mesher’s input and not the mesher’s output. Therefore, it is
  recommended not to mix the problem definition with the problem mesh
  data.

  It is not mandatory to include a GUI in the main distribution, but the
  input/output scheme should be such that graphical pre and
  post-processing tools can create the input files and read the output
  files so as to allow third parties to develop interfaces. It is
  recommended to design the workflow as to make it possible for the
  interfaces to be accessible from mobile devices and web browsers.

  It is expected that 80% of the problems need 20% of the functionality.
  It is acceptable if only basic usage can be achieved through the usage
  of graphical interfaces to ease basic usage at first. Complex problems
  involving non-trivial material properties and boundary conditions not
  be treated by a GUI and only available by needing access to the input
  files.

FeenoX currently works by reading an input file (which in turn can
recursively INCLUDE further input files) with an ad-hoc format, whose
rationale is described in this section. Therefore, it already does
satisfy requirement a. but, eventually, could also satisfy
requirement b. by adding a wrapper for high-level languages such as

-   Python
-   Julia
-   R

that would either

i.  create an input file and run FeenoX in the back, or
ii. successively call the FeenoX functions that define definitions and
    execute instructions (to be done).

As already explained in sec. 1, the motto is “FeenoX is—in a certain
sense—to desktop FEA programs and libraries what Markdown is to Word and
(La)TeX, respectively and deliberately.” Hence, the input files act as
the Markdown source: instructions about what to do but not how to do it.

The input files are indeed plain-text ASCII files with English-like
keywords that fully define the problem. The main features of the input
format, thoroughly described below, are:

1.  It is syntactically sugared by using English-like keywords.
2.  Nouns are definitions and verbs are instructions.
3.  Simple problems need simple inputs.
4.  Simple things should be simple, complex things should be possible.
5.  Whenever a numerical value is needed an expression can be given
    (i.e. “everything is an expression.”)
6.  The input file should match as much as possible the paper (or
    blackboard) formulation of the problem.
7.  It provides means to compare numerical solutions against analytical
    ones.
8.  It should be possible to read run-time arguments from the command
    line.
9.  Input files are distributed version control-friendly.

  [INCLUDE]: https://www.seamplex.com/feenox/doc/feenox-manual.html#include
  [syntactically sugared]: https://en.wikipedia.org/wiki/Syntactic_sugar
  [distributed version control]: https://en.wikipedia.org/wiki/Distributed_version_control

Syntactic sugar & highlighting

The ultimate goal of FeenoX is to solve mathematical equations that are
hard to solve with pencil and paper. In particular, to integrate
differential equations (recall that the first usable computer was named
ENIAC, which stands for Electronic Numerical Integrator and Computer).
The input file format was designed as to how to ask the computer what to
compute. The syntax, based on keywords and alphanumerical arguments was
chosen as to sit in the middle of the purely binary numerical system
employed by digital computers[6] and the purely linguistical nature of
human communication. The rationale behind its design is that an average
user can peek a FeenoX input file and tell what it is asking the
computer to compute, as already illustrated for the NAFEMS LE10 problem
in fig. 3. Even if the input files are created by a computer and not by
a human, the code used to create a human-friendly input file will be
human-friendlier than a code that writes only zeroes and ones as its
output (that will become the input of another one following the Unix
rule of composition sec. 11.3). As an exercise, compare the input file
in fig. 3 (or in fig. 22) with the inputs files used by other open
source FEA solvers shown in appendix sec. 14.

The first argument not starting with a dash to the feenox executable is
the path to the main input file. This main input file can in turn
include other FeenoX input files (with the INCLUDE keyword) and/or read
data from other files (such as meshes with the READ_MESH instruction) or
other resources (such as data files for point-wise data interpolation
with FUNCTION or shared memory objects TBD).

For instance, the test directory includes some spinning-disk cases that
compare the analytical solution for the hoop and radial stresses with
the numerical ones obtained with FeenoX. These cases read the radius R
and thickness t from the .geo file used by Gmsh to build the mesh in the
first place:

    # analytical solution
    INCLUDE spinning-disk-dimensions.geo
    S_h(r) = ((3+nu)*R^2 - (1+3*nu)*r^2)
    S_r(r) = (3+nu) * (R^2 - r^2)

where spinning-disk-dimensions.geo is

    R = 0.1;
    t = 0.003;

The input files are plain text files, either pure ASCII or UTF-8 (more
details in sec. 3.1.9). In principle any extension (even no extension)
can be used for the FeenoX input files. Throughout the FeenoX repository
and documentation the extension .fee is used, which has a couple of
advantages:

1.  The .fee extension is detected by syntax-highlighting extensions for
    common editors (both graphical such as Kate and cloud-friendly such
    as Vim) as illustrated in fig. 22.

2.  The expression $0 (or ${0}) is expanded to the base name of the
    input file, i.e. the directory part (if present) is removed and the
    .fee extension is removed. Therefore,

        READ_MESH $0.msh

    would read a mesh file whose name is the same as the FeenoX input
    file, without the .fee extension.

[a]

[b]

Figure 22: Syntax highlighting of input files in GUI and cloud-friendly
text editors. a — Kate, b — Vim

[6] Analog and quantum computers are out of the scope.

  [ENIAC]: https://en.wikipedia.org/wiki/ENIAC
  [NAFEMS LE10 problem]: https://www.seamplex.com/feenox/examples/#nafems-le10-thick-plate-pressure-benchmark
  [INCLUDE]: https://www.seamplex.com/feenox/doc/feenox-manual.html#include
  [READ_MESH]: https://www.seamplex.com/feenox/doc/feenox-manual.html#read_mesh
  [FUNCTION]: https://www.seamplex.com/feenox/doc/feenox-manual.html#function
  [test directory]: https://github.com/seamplex/feenox/tree/main/tests
  [spinning-disk cases]: https://github.com/seamplex/feenox/blob/main/tests/spinning-disk-parallel-solid-half.fee
  [Kate]: https://kate-editor.org/
  [Vim]: https://www.vim.org/
  [23]: highlighting-kate.png
  [24]: highlighting-vim.png

Definitions and instructions

The way to tell the computer what problem it has to solve and how to
solve it is by using keywords in the input file. Each non-commented line
of the input file should start with either

i.  a primary keyword such as PROBLEM or READ_MESH, or
ii. a variable such as end_time or a vector or matrix with the
    corresponding index(es) such as v[2] or A[i][j] followed by the =
    keyword, or
iii. a function name with its arguments such as f(x,y) followed by the =
     keyword.

A primary keyword usually is followed by arguments and/or secondary
keywords, which in turn can take arguments as well. For example, in

    PROBLEM mechanical DIMENSIONS 3
    READ_MESH $0.msh 
    [...]
    # print the direct stress y at D (and nothing more)
    PRINT "σ_y @ D = " sigmay(2000,0,300) "MPa"

we have PROBLEM acting as a primary keyword, taking mechanical as its
first argument and then DIMENSIONS as a secondary keyword with 3 being
an argument to the secondary keyword. Then READ_MESH is another primary
keyword taking $0.msh (which would be expanded to something like
nafems-le10.msh) as its argument.

A primary keyword can be

1.  a definition,
2.  an instruction, or
3.  both.

Definitions are English nouns and instructions are English verbs. In the
example above, PROBLEM is a definition because it tells FeenoX about
something it has to do (i.e. that it has to solve a three-dimensional
problem), but does not do anything actually. On the other hand,
READ_MESH is both a definition and an instruction: it defines that there
exists a mesh named nafems-le10.msh which might be referenced later (for
example in an INTEGRATE or WRITE_MESH instructions), but it also asks
FeenoX to read the mesh at that point of the instruction list (more
details below). Finally, PRINT is a primary keyword taking different
types and number or arguments. It is an instruction because it does not
define anything, it just asks FeenoX to print the value of the function
named sigmay evaluated at 2000, 0, 300. In this case, sigmay is a
function which is implicitly defined when PROBLEM is set to mechanical.
If sigmay was referenced before PROBLEM, FeenoX would not find it. And
if the problem was of any other type, FeenoX would not find it even when
referenced from the last line of the input file.

The following example further illustrates the differences between
definitions and instructions. It compares the result of (numerically but
adaptively) integrating f(x, y, z) = sin (x³ + y² + z) over a unit cube
against using a 3D Gauss integration scheme over a fixed set of
quadrature points on the same unit cube meshes with two regular
hexahedra in each direction (totaling 8 hexahedra). In one case hex20
are used and in the other one, hex27. Both cases use 27 quadrature
points per element.

    # these two are instructions to read a two meshes
    # but they also define two mesh names that can be referred to later
    READ_MESH hex20.msh DIM 3
    READ_MESH hex27.msh DIM 3

    # these three lines are definitions, they define three functions
    # the first two also define four vectors for each function
    #  1. vec_f20_x and vec_f27_x with the x coordinates of the mesh' nodes
    #  2. vec_f20_y and vec_f27_y with the y coordinates of the mesh' nodes
    #  3. vec_f20_z and vec_f27_z with the z coordinates of the mesh' nodes
    #  4. vec_f20 and vec_f27 with the value of the function at the i-th node
    # these definitions do not evaluate the functions, but they fill vectors 1-3
    # (we'll fill vectors 4 below)
    # note that these definitions refer to the meshes defined above in READ_MESH
    FUNCTION f20(x,y,z) MESH hex20.msh
    FUNCTION f27(x,y,z) MESH hex27.msh
    f(x,y,z) = sin(x^3 + y^2 + z)

    # these two lines are assignment instructions, they "fill" in
    # the vectors with the value of the functinos f20(x,y,z) and f27(x,y,z)
    # by evaluating f(x,y,z) at the nodes of the two meshes
    # (there is a implicit loop for the index i over the size of the vectors)
    vec_f20[i] = f(vec_f20_x[i], vec_f20_y[i], vec_f20_z[i])
    vec_f27[i] = f(vec_f27_x[i], vec_f27_y[i], vec_f27_z[i])

    # this line is an assignment, that first defines a variable If0
    # and then calls the functional integral three times to perform a
    # "continuous" (in the sense that it is numeric but adaptive) triple integration
    If0 = integral(integral(integral(f(x,y,z), z, 0, 1), y, 0, 1), x, 0, 1)

    # these two lines are instructions, they integrate functions f20 and f27 over
    # each of the meshes and then they store the results in the (implicitly defined)
    # variables If20 and If27
    INTEGRATE f20  MESH hex20.msh RESULT If20
    INTEGRATE f27  MESH hex27.msh RESULT If27

    # these lines are instructions, they print stuff to the standard output
    # nothing is defined
    PRINT %.10f If0
    PRINT %.10f If20  %+.2e If20-If0
    PRINT %.10f If27  %+.2e If27-If0

    $ $ feenox  integral_over_hex.fee 
    0.7752945175
    0.7753714586    +7.69e-05
    0.7739155101    -1.38e-03
    $

  [PROBLEM]: https://www.seamplex.com/feenox/doc/feenox-manual.html#problem
  [READ_MESH]: https://www.seamplex.com/feenox/doc/feenox-manual.html#read_mesh
  [end_time]: https://www.seamplex.com/feenox/doc/feenox-manual.html#end_time
  [INTEGRATE]: https://www.seamplex.com/feenox/doc/feenox-manual.html#integrate
  [WRITE_MESH]: https://www.seamplex.com/feenox/doc/feenox-manual.html#write_mesh
  [PRINT]: https://www.seamplex.com/feenox/doc/feenox-manual.html#print

Simple inputs

Consider solving heat conduction on a one-dimensional slab spanning the
unitary range x ∈ [0, 1]. The slab has a uniform unitary
conductivity k = 1 and Dirichlet boundary conditions

$$
\begin{cases}
T(0) &= 0 \\
T(1) &= 1
\end{cases}
$$

This simple problem has the following simple input:

    PROBLEM thermal 1D               # tell FeenoX what we want to solve 
    READ_MESH slab.msh               # read mesh in Gmsh's v4.1 format
    k = 1                            # set uniform conductivity
    BC left  T=0                     # set fixed temperatures as BCs
    BC right T=1                     # "left" and "right" are defined in the mesh
    SOLVE_PROBLEM                    # tell FeenoX we are ready to solve the problem
    PRINT T(0.5)                     # ask for the temperature at x=0.5

    $ feenox thermal-1d-dirichlet-uniform-k.fee
    0.5
    $

Now, if instead of having a uniform conductivity the problem had a
space-dependent k(x) = 1 + x then the input would read

    PROBLEM thermal 1D
    READ_MESH slab.msh
    k(x) = 1+x                       # space-dependent conductivity
    BC left  T=0
    BC right T=1
    SOLVE_PROBLEM
    PRINT T(1/2) log(1+1/2)/log(2)   # print numerical and analytical solutions

    $ feenox thermal-1d-dirichlet-space-k.fee 
    0.584893    0.584963
    $

Finally, if the conductivity depended on temperature (rendering the
problem non-linear) say like k(x) = 1 + T(x) then

    PROBLEM thermal 1D
    READ_MESH slab.msh
    k(x) = 1+T(x)                    # temperature-dependent conductivity
    BC left  T=0
    BC right T=1
    SOLVE_PROBLEM
    PRINT T(1/2) sqrt(1+(3*0.5))-1   # print numerical and analytical solutions

    $ feenox thermal-1d-dirichlet-space-k.fee 
    0.581139    0.581139
    $

Note that FeenoX could figure out by itself that the two first cases
were linear while the last one was not. This can be verified by passing
the extra argument --snes_view. In the first two cases, there will be no
extra output. In the last one, the details of the non-linear solver used
by PETSc will be written into the standard output. The experienced
reader should take some time to compare the effort and level of
complexity that other FEA solvers require in order to set up simple
problems like these. A discussion of the difference between linear and
non-linear problems can be found in the heat conduction tutorial.

  [non-linear]: https://seamplex.com/feenox/doc/tutorials/320-thermal/#non-linear-state-state-problems

Complex things

Alan Kay’s idea that “simple things should be simple, complex things
should be possible” has already been mentioned in sec. 2.5. The first
part of the quote was addressed in the previous section. Of course,
complexity can scale up almost indefinitely so we cannot show an example
right here. But the following repositories contain the scripts and input
files (for Gmsh, FeenoX and other common Unix tools such as Sed and Awk)
that solve non-trivial problems using FeenoX as the main tool and
employing free and open source software only, both for the computation
and for the creation of figures and result tables.

-   Convergence study on stress linearization of an infinite pipe
    according to ASME: a parametric study over the number of elements
    through the thickness of a pipe and the error committed when
    computing membrane and bending stresses according to ASME VIII Div 2
    Sec 5. The study uses the following element types

    -   unstructured tet4
    -   unstructured straight tet10
    -   unstructured curved tet10
    -   structured straight tet10
    -   structured curved tet10
    -   structured hex8
    -   structured straight hex20
    -   structured curved hex20
    -   structured straight hex27
    -   structured curved hex27

    The linearized stresses for different number of elements through the
    pipe thickness are compared against the analytical solution. Figures
    with the meshes employed in each case and with plots of profiles
    vs. the radial coordinate and linearized stresses vs. number of
    elements through the thickness are created.

-   Environmentally-assisted fatigue analysis of dissimilar material
    interfaces in piping systems of a nuclear power plant: a case that
    studies environmentally-assisted fatigue using environment factors
    applied to traditional in-air ASME fatigue analysis for operational
    an incidental transients in nuclear power plant as propose by EPRI.
    A fictitious CAD geometry representing a section of a piping system
    is studied. Four operational transients are made up with
    time-dependent data for pressure and water temperature.

    1.  A transient heat conduction problem with temperature-dependent
        material properties (according to ASME property tables) are
        solved over a small region around a material interface between
        carbon and stainless steel.
    2.  Primary stresses according to ASME are computed for each of the
        operational transients.
    3.  The results of a modal analysis study are convoluted with a
        frequency spectrum of a design-basis earthquake using the SRSS
        method to obtain an equivalent static volumetric force
        distribution.
    4.  The time-dependent temperature distribution for each transient
        is then used in quasi-static mechanical problems to compute
        secondary stresses according to ASME, including the equivalent
        seismic loads at the moment of higher thermal stresses.
    5.  The history of linearized Tresca stresses are juxtaposed to
        compute the cumulative usage factors using the ASME peak-valley
        method.
    6.  Environmental data is used to affect each cumulative usage
        factors with an environment factor to account for in-water
        conditions.

These repositories contain a run.sh that, when executed in a
properly-set-up GNU/Linux host (either on premises or in the cloud),
will perform a number of steps including

-   creation of appropriate meshes
-   execution FeenoX
-   generation post-processing views, plots or tables with the results
-   etc.

Refer to the READMEs in each repository for further details about the
mathematical models involved.

  [Alan Kay]: https://en.wikipedia.org/wiki/Alan_Kay
  [Convergence study on stress linearization of an infinite pipe according to ASME]:
    https://github.com/seamplex/pipe-linearize
  [Environmentally-assisted fatigue analysis of dissimilar material interfaces in piping systems of a nuclear power plant]:
    https://github.com/seamplex/piping-asme-fatigue

Everything is an expression

As explained in the history of FeenoX (sec. 12), the first objective of
the code was to solve ODEs written in an ASCII file as human-friendly as
possible. So even before any other feature, the first thing the FeenoX
ancestors had was an algebraic parser and evaluator. This was back in
2009, and I performed an online search before writing the whole thing
from scratch. I found a nice post in Slack Overflow[7] that discussed
some cool ideas and even had some code published under the terms of the
Creative Commons license.

Besides ODEs, algebraic expressions are a must if one will be dealing
with arbitrary functions in general and spatial distributions in
particular—which is essentially what PDE solvers are for. If a piece of
software wants to allow features ranging from comparing numerical
results with analytical expression to converting material properties
from a system of units to another one in a straightforward way for the
user (either an actual human being or a computer creating an input
file), it ought to be able to handle algebraic expressions.

Appropriately handling algebraic expressions leads to fulfilling the
Unix rule of least surprise (sec. 11.10). If the user needs to define a
function f(x) = 1/2 ⋅ x², all she has to do is write

    f(x) = 1/2 * x^2

And conversely, if someone reads the line above, she can rest assure
that there’s a function called f(x) that will evaluate to 1/2 ⋅ x² when
needed. In effect, anyone can expect the output of this instruction

    PRINT integral(f(x), x, 0, 1)

to be one third.

Of course, expressions are needed to get 100%-user defined output
(further discussed in sec. 3.2), as with the PRINT instruction above.
But once an algebraic parser and evaluator is available, it does not
make sense to keep force the user to write numerical data only. What if
a the angular speed is in RPM and the model needs it in radians per
second? Instead of having to write 104.72, FeenoX allows the user to
write

    w = 1000 * 60*pi/180

This way,

1.  it is easy to see what the speed in RPM is
2.  precision is not lost
3.  should the speed change, it is trivial to change the 1000 for
    anything else.

Whenever an input keyword needs a numerical value, any expression will
do:

    n = 3
    VECTOR x SIZE 2+n
    x[i] = i^2
    PRINT x

    $ feenox vector_size_one_plus_n.fee 
    1       4       9       16      25
    $

It goes without saying that algebraic expressions are a must when
defining transient and/or space-dependent boundary conditions for PDEs:

    PROBLEM thermal 1D
    READ_MESH slab.msh

    end_time = 10
    k = 1
    kappa = 0.1

    FUNCTION f(t) DATA {
    0    0
    1    1
    2    1
    3    2
    4    0
    10   0
    }
    BC left  T=f(t)

    w = 0.5*pi
    BC right T=1+sin(w*t)

    SOLVE_PROBLEM
    PRINT t T(0) T(0.5) T(1)

Besides purely algebraic expressions, FeenoX can handle point-wise
defined functions which can then be used in algebraic expressions. A
useful example is allowing material properties (e.g. Young modulus) to
depend on temperature. Consider a simple plane-strain
square [−1, +1] × [−1, +1] fixed on one side and with a uniform tension
in the opposite one while leaving the other two free. The square’s Young
modulus depends on temperature according to a one-dimensional point-wise
defined function E_(carbon)(T) given by pairs stated according to one of
the many material properties tables from ASME II and interpolated using
Steffen’s method. Although in this example the temperature is given as
an algebraic expression of space, in particular

T(x, y) [ºC] = 200 + 350 ⋅ y

    PROBLEM mechanical plane_strain
    READ_MESH square-centered.msh # [-1:+1]x[-1:+1]

    # fixed at left, uniform traction in the x direction at right
    BC left    fixed
    BC right   tx=50

    # ASME II Part D pag. 785 Carbon steels with C<=0.30%
    FUNCTION E_carbon(temp) INTERPOLATION steffen DATA {
    -200  216
    -125  212
    -75   209
    25    202
    100   198
    150   195
    200   192
    250   189
    300   185
    350   179
    400   171
    450   162
    500   151
    550   137
    }


    # known temperature distribution
    # (we could have read it from an output of a thermal problem)
    T(x,y) := 200 + 350*y

    # Young modulus is the function above evaluated at the local temperature
    E(x,y) := E_carbon(T(x,y))

    # uniform Poisson's ratio
    nu = 0.3

    SOLVE_PROBLEM
    WRITE_MESH mechanical-square-temperature.vtk  E  VECTOR u v 0   

By replacing T(x,y) = 200 + 350*y with T(x,y) = 200 we can compare the
results of the temperature-dependent case with the uniform-properties
case (fig. 23):

    $ feenox mechanical-square-temperature.fee 
    $ diff mechanical-square-temperature.fee mechanical-square-uniform.fee 
    29c29
    < T(x,y) := 200 + 350*y
    ---
    > T(x,y) := 200
    38c38
    < WRITE_MESH mechanical-square-temperature.vtk  E  VECTOR u v 0   
    ---
    > WRITE_MESH mechanical-square-uniform.vtk  E  VECTOR u v 0   
    $ feenox mechanical-square-uniform.fee 
    $

[a]

[b]

Figure 23: Mechanical plane-strain square with temperature-dependent
Young modulus and comparison with uniform reference case.. a —
Temperature-dependent E, b — Uniform E for reference

In real applications this distribution T(x, y) can be read from the
output of an actual heat conduction problem. See sec. 3.2.2 for a
revisit of this case, reading the temperature from an unstructured
triangular mesh instead of hard-coding it as an algebraic expression of
space.

So remember, in FeenoX everything is an expression—especially
temperature, as also shown in the next section.

[7] http://stackoverflow.com/questions/1384811/code-golf-mathematical-expression-evaluator-that-respects-pemdas

  [PRINT]: https://www.seamplex.com/feenox/doc/feenox-manual.html#print
  [25]: mechanical-square-temperature.png
  [26]: mechanical-square-uniform.png

Matching formulations

The Lorenz’ dynamical system system and the NAFEMS LE10 benchmark
problem, both discussed earlier in sec. 1.2, illustrate how well the
FeenoX input file matches the usual human-readable formulation of ODE or
PDE problems. In effect, fig. 3 shows there is a trivial one-to-one
correspondence between the sections of the problem formulated in a sheet
of paper and the text file nafems-le10.fee. The same effect can be seen
in the NAFEMS LE11 problem, which involves a temperature distribution
given as an algebraic expression of x⃗:

Let us consider the NAFEMS LE11 benchmark problem titled “Solid
cylinder/taper/sphere-temperature” stated in fig. 24. It consists of an
axi-symmetrical geometry subject to thermal loading by a temperature
distribution given by an algebraic expression. The material properties
are linear, orthotropic and uniform. The boundary conditions prescribe
symmetries in all directions.

[Figure 24: Formulation of the NAFEMS LE11 problem.]

Figure 24: Formulation of the NAFEMS LE11 problem.

-   Loading
    -   Linear temperature gradient in the radial an axial direction

        T(x, y, z) [ºC] = (x² + y²)^(1/2) + z
-   Boundary conditions
    -   Symmetry on x-z plane, i.e. zero y-displacement
    -   Symmetry on y-z plane, i.e. zero x-displacement
    -   Face on x-y plane zero z-displacement
    -   Face HIH′I′ zero z-displacement
-   Material properties
    -   Isotropic, E = 210 × 10³ MPa, ν = 0.3
    -   Thermal expansion coefficient α = 2.3 × 10⁻⁴ ºC⁻¹
-   Output
    -   Direct stress σ_(zz) at point A

To solve this problem, we can use the following FeenoX input file that
exactly matches the human-readable formulation:

    PROBLEM mechanical
    READ_MESH $0.msh

    # linear temperature gradient in the radial and axial direction
    T(x,y,z) = (x^2 + y^2)^(1/2) + z

    # Boundary conditions
    BC xz     symmetry
    BC yz     symmetry
    BC xy     w=0
    BC HIH'I' w=0

    # material properties (isotropic & uniform so we can use scalar constants)
    E = 210e3*1e6       # mesh is in meters, so E=210e3 MPa -> Pa
    nu = 0.3            # dimensionless
    alpha = 2.3e-4      # in 1/ºC as in the problem

    SOLVE_PROBLEM
    WRITE_RESULTS FORMAT vtk
    PRINT "sigma_z(A) =" sigmaz(0,1,0)/1e6 "MPa (target was -105 MPa)" SEP " "

    $ time feenox nafems-le11.fee
    sigma_z(A) = -105.041 MPa (target was -105 MPa)

    real    0m1.766s
    user    0m1.642s
    sys     0m0.125s

[a] [b]

Figure 25: The NAFEMS LE11 problem results. a — Problem statement, b —
Structured hex mesh

[Figure 26: The NAFEMS LE11 problem statement and the corresponding
FeenoX input]

Figure 26: The NAFEMS LE11 problem statement and the corresponding
FeenoX input

This feature can be better appreciated by comparing the input files
needed to solve these kind of NAFEMS benchmarks with other
finite-element tools. Sec. 14 gives a glimpse for the NAFEMS LE10
problem, where the input files are way too cryptic and cumbersome as
compared to what FeenoX needs.

  [Lorenz’ dynamical system]: http://en.wikipedia.org/wiki/Lorenz_system
  [NAFEMS LE10]: https://www.nafems.org/publications/resource_center/p18/
  [Figure 24: Formulation of the NAFEMS LE11 problem.]: nafems-le11-problem.png
  [27]: nafems-le11-temperature.png
  [28]: nafems-le11-sigmaz.png
  [Figure 26: The NAFEMS LE11 problem statement and the corresponding FeenoX input]:
    nafems-le11-problem-input.svg

Comparison of solutions

One cornerstone design feature is that FeenoX has to provide a way to
compare its numerical results with other already-know solutions—either
analytical or numerical—in order to verify their validity. Indeed, being
able to take the difference between the numerical result and an
algebraic expression evaluated at arbitrary locations (usually
quadrature points to compute~L_(p) norms of the error) is a must if code
verification is required.

Let us consider a one-dimensional slab reactor with uniform macroscopic
cross sections

$$
\begin{aligned}
\Sigma_t &= 0.54628~\text{cm}^{-1} \\
\Sigma_s &= 0.464338~\text{cm}^{-1} \\
\nu\Sigma_f &= 1.70 \cdot 0.054628~\text{cm}^{-1}
\end{aligned}
$$

such that, if computed with neutron transport theory, is exactly
critical with a width of a = 2 ⋅ 10.371065 cm. Just to illustrate a
simple case, we can solve it using the diffusion approximation with zero
flux at both as. This case has an analytical solution for both the
effective multiplication factor

$$
k_\text{eff} = \frac{\nu\Sigma_f}{(\Sigma_t - \Sigma_s) + D \cdot \left(\frac{\pi}{a} \right)^2}
$$

and the flux distribution

$$
\phi(x) = \frac{\pi}{2} \cdot \sin\left(\frac{x}{a} \cdot \pi\right)
$$

provided the diffusion coefficient D is defined as

$$
D = \frac{1}{3 \cdot \Sigma_t}
$$

We can solve both the numerical and analytical problems in FeenoX, and
more importantly, we can subtract them at any point of space we want:

    PROBLEM neutron_diffusion 1D
    READ_MESH slab-UD20-1-0-SL.msh

    a = 2 * 10.371065 # critical size of the problem UD20-1-0-SL (number 22 report Los Alamos)

    Sigma_t1 = 0.54628
    Sigma_s1.1 = 0.464338
    nuSigma_f1 = 1.70*0.054628
    D1 = 1/(3*Sigma_t1)

    # null scalar flux at both ends of the slab 
    BC left  null
    BC right null

    SOLVE_PROBLEM

    # analytical effective multiplication factor (diffusion approximation)
    keff_diff = nuSigma_f1/((Sigma_t1-Sigma_s1.1) + D1*(pi/a)^2)

    # analytical normalized flux distribution (diffusion approximation)
    phi_diff(x) = pi/2 * sin(x/a * pi)

    PRINT_FUNCTION FORMAT %+.3f phi1 phi_diff phi1(x)-phi_diff(x) HEADER
    PRINT TEXT "\# keff      = " %.8f keff
    PRINT TEXT "\# kdiff     = " %.8f keff_diff
    PRINT TEXT "\# rel error = " %+.2e (keff-keff_diff)/keff

    $ feenox neutron-diffusion-1d-null.fee 
    # x     phi1    phi_diff        phi1(x)-phi_diff(x)
    +0.000  +0.000  +0.000  +0.000
    +10.371 +1.574  +1.571  +0.003
    +20.742 +0.000  +0.000  -0.000
    +1.474  +0.348  +0.348  +0.001
    +2.829  +0.654  +0.653  +0.001
    +4.074  +0.911  +0.909  +0.002
    +5.217  +1.118  +1.116  +0.002
    +6.268  +1.280  +1.277  +0.002
    +7.233  +1.399  +1.397  +0.003
    +8.120  +1.483  +1.480  +0.003
    +8.935  +1.537  +1.534  +0.003
    +9.683  +1.565  +1.562  +0.003
    +11.059 +1.565  +1.562  +0.003
    +11.807 +1.537  +1.534  +0.003
    +12.622 +1.483  +1.480  +0.003
    +13.509 +1.399  +1.397  +0.003
    +14.474 +1.280  +1.277  +0.002
    +15.525 +1.118  +1.116  +0.002
    +16.668 +0.911  +0.909  +0.002
    +17.913 +0.654  +0.653  +0.001
    +19.268 +0.348  +0.348  +0.001
    # keff      =   0.96774162
    # kdiff     =   0.96797891
    # rel error =   -2.45e-04
    $

Something similar could have been done for two groups of energy,
although the equations get a little bit more complex so we leave it as
an example in the Git repository.

A notable non-trivial thermo-mechanical problem that nevertheless has an
analytical solution for the displacement field is the “Parallelepiped
whose Young’s modulus is a function of the temperature” (fig. 27). The
problem consists of finding the non-dimensional temperature T and
displacements u, v and w distributions within a solid parallelepiped of
length ℓ whose base is a square of h × h. The solid is subject to heat
fluxes and to a traction pressure at the same time. The non-dimensional
Young’s modulus E of the material depends on the temperature T in a know
algebraically way, whilst both the Poisson coefficient ν and the thermal
conductivity k are uniform and do not depend on the spatial coordinates:

$$
\begin{aligned}
E(T) &= \frac{1000}{800-T} \\
\nu &= 0.3 \\
k &= 1
\end{aligned}
$$

[Figure 27: Parallelepiped whose Young’s modulus is a function of the
temperature. Original figure from v7.03.100.pdf]

Figure 27: Parallelepiped whose Young’s modulus is a function of the
temperature. Original figure from v7.03.100.pdf

The thermal boundary conditions are

-   Temperature at point A at (ℓ, 0, 0) is zero
-   Heat flux q^(′′) through x = ℓ is +2
-   Heat flux q^(′′) through x = 0 is -2
-   Heat flux q^(′′) through y = h/2 is +3
-   Heat flux q^(′′) through y = −h/2 is -3
-   Heat flux q^(′′) through z = h/2 is +4
-   Heat flux q^(′′) through z = −h/2 is -4

The mechanical boundary conditions are

-   Point O at (0, 0, 0) is fixed
-   Point B at (0, h/2, 0) is restricted to move only in the y direction
-   Point C at (0, 0, /h2) cannot move in the x direction
-   Surfaces x = 0 and x = ℓ are subject to an uniform normal traction
    equal to one

The analytical solution is

$$
\begin{aligned}
T(x,y,z) &= -2x -3y -4z + 40 \\
u(x,y,z) &= \frac{A}{2} \cdot\left[x^2 + \nu\cdot\left(y^2+z^2\right)\right] + B\cdot xy + C\cdot xz + D\cdot x - \nu\cdot \frac{Ah}{4} \cdot \left(y+z\right) \\
v(x,y,z) &= -\nu\cdot \left[A\cdot x y + \frac{B}{2} \cdot \left(y^2-z^2+\frac{x^2}{\nu}\right) + C\cdot y z + D\cdot y -A\cdot h/4\cdot x - C\cdot h/4\cdot z\right] \\
w(x,y,z) &= -\nu\cdot \left[A\cdot x z + B\cdot yz + C/2\cdot \left(z^2-y^2+\frac{x^2}{\nu}\right) + D\cdot z + \frac{Ch}{4} \cdot y - \frac{Ah}{4} \cdot x\right] \\
\end{aligned}
$$

where~A = 0.002, B = 0.003, C = 0.004 and~D = 0.76. The reference
results are the temperature at points O and D and the displacements at
points A and D (tbl. 2}.

   Point   Unknown  Reference value
  ------- --------- -----------------
     O        T     +40.0
     D        T     -35.0
     A        u     +15.6
     v      -0.57   
     w      -0.77   
     D        u     +16.3
     v     -1.785   
     w     -2.0075  

  : Table 2: Reference results the original benchmark problem

First, the thermal problem is solved with FeenoX and the temperature
distribution T(x, y, z) is written into a .msh file.

    PROBLEM neutron_diffusion 1D
    READ_MESH slab-UD20-1-0-SL.msh

    a = 2 * 10.371065 # critical size of the problem UD20-1-0-SL (number 22 report Los Alamos)

    Sigma_t1 = 0.54628
    Sigma_s1.1 = 0.464338
    nuSigma_f1 = 1.70*0.054628
    D1 = 1/(3*Sigma_t1)

    # null scalar flux at both ends of the slab 
    BC left  null
    BC right null

    SOLVE_PROBLEM

    # analytical effective multiplication factor (diffusion approximation)
    keff_diff = nuSigma_f1/((Sigma_t1-Sigma_s1.1) + D1*(pi/a)^2)

    # analytical normalized flux distribution (diffusion approximation)
    phi_diff(x) = pi/2 * sin(x/a * pi)

    PRINT_FUNCTION FORMAT %+.3f phi1 phi_diff phi1(x)-phi_diff(x) HEADER
    PRINT TEXT "\# keff      = " %.8f keff
    PRINT TEXT "\# kdiff     = " %.8f keff_diff
    PRINT TEXT "\# rel error = " %+.2e (keff-keff_diff)/keff

Then, the mechanical problem reads two meshes: one for solving the
actual mechanical problem and another one for reading T(x, y, z) from
the previous step. Note that the former contains second-order hexahedra
and the latter first-order tetrahedra. After effectively solving the
problem, it writes again tbl. 2 in Markdown.

  [“Parallelepiped whose Young’s modulus is a function of the temperature”]:
    https://www.seamplex.com/feenox/examples/#parallelepiped-whose-youngs-modulus-is-a-function-of-the-temperature
  [v7.03.100.pdf]: http://www.code-aster.org/V2/doc/default/fr/man_v/v7/v7.03.100.pdf
  [Figure 27: Parallelepiped whose Young’s modulus is a function of the temperature. Original figure from v7.03.100.pdf]:
    parallelepiped.svg

Run-time arguments

The usage of run-time command-line arguments was illustrated
in sec. 2.2.2. The idea is that if the expression $n (or ${n}) is found
in the input file, the FeenoX parser expands the expression literally as
the n-th non-optional argument in the command line. The case n = 0 is
particular in the sense that, as explained in sec. 3.1.1, expands to the
name of the input file without the leading directory path and the
trailing extension .fee.

The definition DEFAULT_ARGUMENT_VALUE can be used to give a default
value for arguments not provided. otherwise, FeenoX would complain:

    $ echo "PRINT \$1" | feenox -
    error: input file needs at least one more argument in commandline
    $ echo -e "DEFAULT_ARGUMENT_VALUE 1 hello\nPRINT \$1" | feenox -
    hello
    $ 

This feature is extensively used in parametric and optimization runs
such as in the verification using the Method of Manufactured solutions:

    # MMS data, set T_mms(x) and k_mms(x) as desired
    T_mms(x,y) = 1 + sin(2*x)^2 * cos(3*y)^2
    k_mms(x,y) = 1 + x - 0.5*y

    READ_MESH square-$2-$3-$4.msh DIMENSIONS 2
    PROBLEM thermal

    DEFAULT_ARGUMENT_VALUE 1 dirichlet # BCs = dirichlet/neumann
    DEFAULT_ARGUMENT_VALUE 2 tri3      # shape = tri3/tri6/quad4/quad8/quad9
    DEFAULT_ARGUMENT_VALUE 3 struct    # algorithm = struct/frontal/delaunay
    DEFAULT_ARGUMENT_VALUE 4 8         # refinement factor = 1/2/3/4...
    DEFAULT_ARGUMENT_VALUE 5 0         # write vtk? = 0/1

    # read the results of the symbolic derivatives
    INCLUDE thermal-square-q.fee

    # set the PDE coefficients and BCs we just read above
    k(x,y) = k_mms(x,y)
    q(x,y) = q_mms(x,y)

    # set the BCs (depending on $1)
    INCLUDE thermal-square-bc-$1.fee

    SOLVE_PROBLEM   # this line should be self-explanatory 

    # output
    PHYSICAL_GROUP bulk DIM 2 
    h = sqrt(bulk_area/cells)

    # L-2 error
    INTEGRATE (T(x,y)-T_mms(x,y))^2 RESULT e_2
    error_2 = sqrt(e_2)

    # L-inf error
    FIND_EXTREMA abs(T(x,y)-T_mms(x,y)) MAX error_inf

    PRINT %.6f log(h) log(error_inf) log(error_2) %g $4 cells nodes %.2f 1024*memory() wall_time()

    IF $5
      WRITE_MESH thermal-square_$1-$2-$3-$4.vtk T q T_mms T(x,y)-T_mms(x,y)
    ENDIF

which is called from a Bash loop that looks like

    bcs="dirichlet neumann"
    elems="tri3 tri6 quad4 quad8 quad9"
    algos="struct frontal delaunay"
    cs="4 6 8 10 12 16 20 24 30 36 48"

    [...]

    for bc in ${bcs}; do
     for elem in ${elems}; do
      for algo in ${algos}; do

        [...]
         
        for c in ${cs}; do
      
         name="thermal_square_${bc}-${elem}-${algo}-${c}"
       
         # prepare mesh
         if [ ! -e square-${elem}-${algo}-${c}.msh ]; then
           lc=$(echo "PRINT 1/${c}" | feenox -)
           gmsh -v 0 -2 square.geo ${elem}.geo ${algo}.geo -clscale ${lc} -o square-${elem}-${algo}-${c}.msh
         fi
       
         # run feenox
         feenox thermal-square.fee ${bc} ${elem} ${algo} ${c} ${vtk} | tee -a ${dat}.dat 
          
        done
     
        [...]
        
      done
     done
    done

The full script can be found in tests/mms/thermal2d/2d/run.sh.

In the input file above, the instruction WRITE_MESH with an explicit
file name was given

    WRITE_MESH thermal-square_$1-$2-$3-$4.vtk T q T_mms T(x,y)-T_mms(x,y)

because non-standard output fields are needed (namely T_mms and
T(x,y)-T_mms(x,y)). If the WRITE_RESULTS is used without and explicit
FILE keyword, the output file name is the basename of the input file and
the expansion of all the arguments in the command line,
i.e. $0-[$1-[$2...]].msh.

The study “Comparison of resource consumption for different FEA
programs” also performs a parametric run on the mesh size using similar
ideas.

  [DEFAULT_ARGUMENT_VALUE]: https://www.seamplex.com/feenox/doc/feenox-manual.html#default_argument_value
  [verification using the Method of Manufactured solutions]: https://github.com/seamplex/feenox/tree/main/tests/mms
  [tests/mms/thermal2d/2d/run.sh]: https://github.com/seamplex/feenox/blob/main/tests/mms/thermal/2d/run.sh
  [WRITE_MESH]: https://www.seamplex.com/feenox/doc/feenox-manual.html#write_mesh
  [WRITE_RESULTS]: https://www.seamplex.com/feenox/doc/feenox-manual.html#write_results
  [“Comparison of resource consumption for different FEA programs”]: https://github.com/seamplex/feenox/tree/main/tests/nafems/le10

Git and macro-friendliness

The FeenoX input files as plain ASCII files by design. This means that
they can be tracked with Git or any other version control system so as
to allow reliable traceability of computations. Along with the facts
that FeenoX interacts well with

a.  Gmsh, that can either use ASCII input files as well or be used as an
    API from C, C++, Python and Julia, and
b.  Other scripting languages such as Bash, Python or even AWK, whose
    input files are ASCII files as well,

makes it possible to track a whole computation using FeenoX as a Git
repository, as already exemplified in sec. 3.1.4. It is important to
note that what files that should be tracked in Git include

1.  READMEs and documentation in Markdown
2.  Shell scripts
3.  Gmsh input files and/or scripts
4.  FeenoX input files

Files that should not be tracked include

1.  Documentation in HTML or PDF
2.  Mesh files
3.  VTU/VTK and result files

since in principle they could be generated from the files in the Git
repository by executing the scripts, Gmsh and/or FeenoX.

Even more, in some cases, the FeenoX input files—following the Unix rule
of generation sec. 11.14–can be created out of generic macros that
create particular cases. For example, say one has a mesh of a fin-based
dissipator where all the surfaces are named surf_1_i for i = 1, ..., 26.
All of them will have a convection boundary condition while surface
number 6 is the one that is attached to the electronic part that has to
be cooled. Instead of having to “manually” giving the list of surfaces
that have the convection condition, we can use M4 to do it for us:

    PROBLEM thermal 3d
    READ_MESH fins.msh

    include(forloop.m4)
    BC convection h=10 Tref=-5 forloop(i, 1, 5, `PHYSICAL_GROUP "surf_1_`'i"' ) forloop(i, 7, 26, `PHYSICAL_GROUP "surf_1_`'i"' )

    BC surf_1_6 q=1000
    k = 237
    SOLVE_PROBLEM
    WRITE_MESH fins.vtk T

Note that since FeenoX was born in Unix, we can pipe the output of m4 to
FeenoX directly by using - as the input file in the command line:

    $ m4 fins.fee.m4 | feenox -
    $

Fig. 28 confirms that all the faces have the right boundary conditions:
face number six got the power BC and all the rest got the convection BC.

[Figure 28: Temperature distribution in a fin dissipator where all the
faces have a convection BC except one that has a fixed heat flux of
q″ = 1, 000W ⋅ m⁻².]

Figure 28: Temperature distribution in a fin dissipator where all the
faces have a convection BC except one that has a fixed heat flux of
q″ = 1, 000W ⋅ m⁻².

Besides being ASCII files, should special characters be needed for any
reason within a particular application of FeenoX, UTF-8 characters can
be used natively as illustrated in fig. 29.

[a]

[b]

Figure 29: Special characters in Kate and in Bash.. a — UTF-8 in Kate, b
— UTF-8 in Bash (through Konsole)

  [Figure 28: Temperature distribution in a fin dissipator where all the faces have a convection BC except one that has a fixed heat flux of q″ = 1, 000W ⋅ m⁻².]:
    fins-temp.png
  [29]: utf8-kate.png
  [30]: utf8-shell.png

Results output

  The output ought to contain useful results and should not be cluttered
  up with non-mandatory information such as ASCII art, notices,
  explanations or copyright notices. Since the time of cognizant
  engineers is far more expensive than CPU time, output should be easily
  interpreted by either a human or, even better, by other programs or
  interfaces—especially those based in mobile and/or web platforms.
  Open-source formats and standards should be preferred over privative
  and ad-hoc formatting to encourage the possibility of using different
  workflows and/or interfaces.

The output in FeenoX is 100% user defined, i.e. everything that FeenoX
writes comes from one of the following output instructions:

-   PRINT
-   PRINTF
-   PRINT_FUNCTION
-   PRINT_VECTOR
-   WRITE_MESH
-   WRITE_RESULTS
-   DUMP

In the absence of any of these instructions, FeenoX will not write
anything. Not in the standard output, not in any other file. Nothing
(Unix rule of silence, sec. 11.11).

  ------------------------------------------------------------------------
  Computer                Monthly Rental         Relative        First
                                                   Speed       Delivery
  ----------------- -------------------------- ------------- -------------
  CDC 3800                   $ 50,000                1          Jan 66

  CDC 6600                   $ 80,000                6          Sep 64

  CDC 6800                   $ 85,000               20          Jul 67

  GE 635                     $ 55,000                1          Nov 64

  IBM 360/62                 $ 58,000                1          Nov 65

  IBM 360/70                 $ 80,000                2          Nov 65

  IBM 360/92                $ 142,000               20          Nov 66

  PHILCO 213                 $ 78,000                2          Sep 65

  UNIVAC 1108                $ 45,000                2          Aug 65
  ------------------------------------------------------------------------

  : Table 3: Relative speed is expressed with reference to IBM 7030.
  Data for computers expected to appear after 1965 was estimated.

This is a sound design decision that follows the Unix rules of silence
and, more importantly, of economy. In effect, more than fifty years ago
CPU time was far more expensive than engineering time (tbl. 3). At that
time, engineering programs had to write everything they computed because
it was too expensive to re-run the calculation in case a single result
was missing.

Nowadays the engineering time is far more expensive than CPU time.
Therefore, the time needed for the user to find and process a single
result in a soup of megabytes of a cluttered output file far outweighs
the cost of running a computation from scratch with the needed result as
the only output. Especially if the expensive engineers are smart enough
to set up the problem using a coarse mesh and run the actual fine
execution only after having checked everything works as expected.

The input file from the tensile-test tutorial illustrates this idea:
only 8 lines are needed to define and solve the problem (including the
instructions SOLVE_PROBLEM and COMPUTE_REACTION) and almost twice as
much instructions for getting the required output as needed (mostly
PRINTs and one WRITE_RESULTS):

    PROBLEM mechanical           # self-descriptive
    READ_MESH tensile-test.msh   # lengths are in mm

    # material properties, E and nu are "special" variables for the mechanical problem
    E = 200e3   # [ MPa = N / mm^2 ]
    nu = 0.3

    # boundary conditions, fixed and Fx are "special" keywords for the mechanical problem
    # the names "left" and "right" should match the physical names in the .geo
    BC left  fixed
    BC right Fx=10e3  # [ N ]

    # we can now solve the problem, after this keyword the results will be available for output
    SOLVE_PROBLEM

    # essentially we are done by now, we have to write the expected results

    # 1. a VTK file to be post-processed in ParaView with
    #    a. the displacements [u,v,w] as a vector
    #    b. the von Mises stress sigma as a scalar
    #    c. the six components of the stress tensor as six scalars
    WRITE_MESH tensile-test.vtk VECTOR u v w  sigma sigmax sigmay sigmaz tauxy tauyz tauzx
    PRINT "1. post-processing view written in tensile-test.vtk"

    # 2. the displacement vector at the center of the specimen
    PRINT "2. displacement in x at origin:   " u(0,0,0)   "[ mm ]"
    PRINT "   displacement in y at (0,10,0): " v(0,10,0)  "[ mm ]"
    PRINT "   displacement in z at (0,0,2.5):" w(0,0,2.5) "[ mm ]"

    # 3. the principal stresses at the center
    PRINT "3. principal stresses at origin: " %.4f sigma1(0,0,0) sigma2(0,0,0) sigma3(0,0,0) "[ MPa ]"

    # 4. the reaction at the left surface
    COMPUTE_REACTION left  RESULT R_left
    PRINT "4. reaction at left surface: " R_left "[ N ]"

    # 5. stress concentrations at a sharp edge
    PRINT "5. stress concentrations at x=55, y=10, z=2.5 mm"
    PRINT "von Mises stress:" sigma(55,10,2.5) "[ MPa ]"
    PRINT "Tresca    stress:" sigma1(55,10,2.5)-sigma3(55,10,2.5) "[ MPa ]"
    PRINT "stress tensor:"
    PRINT %.1f sigmax(55,10,2.5) tauxy(55,10,2.5)  tauzx(55,10,2.5)
    PRINT %.1f tauxy(55,10,2.5)  sigmay(55,10,2.5) tauyz(55,10,2.5)
    PRINT %.1f tauzx(55,10,2.5)  tauyz(55,10,2.5)  sigmaz(55,10,2.5)

Moreover, when solving PDEs, FeenoX will be also smart enough not to
compute quantities which are not going to be written anywhere. For
example, if the input file does not reference the principal stress
sigma1 (or WRITE_RESULTS does not ask for it) then FeenoX will not
compute it.

  [PRINT]: https://www.seamplex.com/feenox/doc/feenox-manual.html#print
  [PRINTF]: https://www.seamplex.com/feenox/doc/feenox-manual.html#printf
  [PRINT_FUNCTION]: https://www.seamplex.com/feenox/doc/feenox-manual.html#print_function
  [PRINT_VECTOR]: https://www.seamplex.com/feenox/doc/feenox-manual.html#print_vector
  [WRITE_MESH]: https://www.seamplex.com/feenox/doc/feenox-manual.html#write_mesh
  [WRITE_RESULTS]: https://www.seamplex.com/feenox/doc/feenox-manual.html#write_results
  [DUMP]: https://www.seamplex.com/feenox/doc/feenox-manual.html#dump
  [tensile-test tutorial]: https://www.seamplex.com/feenox/doc/tutorials/110-tensile-test/
  [SOLVE_PROBLEM]: https://www.seamplex.com/feenox/doc/feenox-manual.html#solve_problem
  [COMPUTE_REACTION]: https://www.seamplex.com/feenox/doc/feenox-manual.html#compute_reaction

Output formats

With the ASCII output to standard output (and other text files)
controlled with PRINT-like instructions, YAML or JSON outputs can be
easily implemented within the input file itself. For example,

    DEFAULT_ARGUMENT_VALUE 1 "hello world"
    phi = (1+sqrt(5))/2 

    PRINTF "a: %.3f" 1/3
    PRINT TEXT "phi:" phi SEP " "
    PRINT message: ${1}   SEP " "

would give

    $ feenox yaml.fee | tee test.yaml | yq .
    {
      "a": 0.333,
      "phi": 1.61803,
      "message": "hello world"
    }
    $ cat test.yaml 
    a: 0.333
    phi: 1.61803
    message: hello world
    $ 

Now, JSON is more picky and care with quoted characters is needed:

1.  Curly brackets { and } are used for multi-line input in FeenoX so
    they have to be quoted as \{ and \}.
2.  Double quotes " are used to delimit keywords with blanks, so they
    also have to be quoted \" when appearing verbatim in an output
    token.

    DEFAULT_ARGUMENT_VALUE 1 "hello world"
    phi = (1+sqrt(5))/2 

    PRINTF "\{ \"a\": %.3f," 1/3
    PRINT  TEXT "\"phi\":" phi ,
    PRINT  "\"message\": \"${1}\" \}"

    $ feenox json.fee | jq .
    {
      "a": 0.333,
      "phi": 1.61803,
      "message": "hello world"
    }
    $

In the same sense, in principle any ASCII-based format can be
implemented this way. Markdown output, which can then be converted to
other formats as well (such as LaTeX which can then create
professionally-looking tables as in fig. 21), has been already covered
in sec. 2.7.

Current version can write space and time-dependent distributions into
Gmsh’s .msh and VTK’s vtu/.vtk formats. Both of them are open standard
and have open-source readers. Other formats such .med should be easy to
add, but in any case the mesh data converters such as Meshio can be used
to convert FeenoX’s post-processing output to other formats as well.

  [Meshio]: https://github.com/nschloe/meshio

Data exchange between non-conformal meshes

To illustrate how the output of a FeenoX execution can be read by
another FeenoX instance, let us revisit the plane-strain square from
sec. 3.1.5. This time, instead of setting the temperature with an
algebraic expression, we will solve a thermal problem that gives rise to
the same temperature distribution but on a different mesh.

First, we solve a thermal problem on the same square [−1, +1] × [−1, +1]
such that the resulting temperature field is T(x, y) = 200 + 350 ⋅ y:

    PROBLEM thermal 2D
    READ_MESH square-centered-unstruct.msh # [-1:+1]x[-1:+1]

    BC bottom    T=-150
    BC top       T=+550
    k = 1

    SOLVE_PROBLEM
    WRITE_MESH thermal-square-temperature.msh T

Now, we read the temperature T(x, y) from the thermal output mesh file
thermal-square-temperature.msh (which is a triangular unstructured grid)
into the mechanical input mesh file square-centered.msh (which is a
structured quadrangular grid):

    PROBLEM mechanical plane_strain
    READ_MESH square-centered.msh # [-1:+1]x[-1:+1]

    # fixed at left, uniform traction in the x direction at right
    BC left    fixed
    BC right   tx=50

    # ASME II Part D pag. 785 Carbon steels with C<=0.30%
    FUNCTION E_carbon(temp) INTERPOLATION steffen DATA {
    -200  216
    -125  212
    -75   209
    25    202
    100   198
    150   195
    200   192
    250   189
    300   185
    350   179
    400   171
    450   162
    500   151
    550   137
    }

    # read the temperature from a previous result
    READ_MESH thermal-square-temperature.msh DIM 2 READ_FUNCTION T

    # Young modulus is the function above evaluated at the local temperature
    E(x,y) := E_carbon(T(x,y))

    # uniform Poisson's ratio
    nu = 0.3

    SOLVE_PROBLEM
    WRITE_MESH mechanical-square-temperature-from-msh.vtk  E T VECTOR u v 0   

Indeed, the terminal mimic shows the difference between the mechanical
input from this section and the one that used an explicit algebraic
expression.

    $ gmsh -2 square-centered-unstruct.geo 
    [...]
    Info    : Done meshing 2D (Wall 0.012013s, CPU 0.033112s)
    Info    : 65 nodes 132 elements
    Info    : Writing 'square-centered-unstruct.msh'...
    Info    : Done writing 'square-centered-unstruct.msh'
    Info    : Stopped on Wed Aug  3 17:47:39 2022 (From start: Wall 0.0208329s, CPU 0.064825s)
    $ feenox thermal-square.fee 
    $ feenox mechanical-square-temperature-from-msh.fee 
    $ diff mechanical-square-temperature-from-msh.fee mechanical-square-temperature.fee
    26,27c26,29
    < # read the temperature from a previous result
    < READ_MESH thermal-square-temperature.msh DIM 2 READ_FUNCTION T
    ---
    > 
    > # known temperature distribution
    > # (we could have read it from an output of a thermal problem)
    > T(x,y) := 200 + 350*y
    36c38
    < WRITE_MESH mechanical-square-temperature-from-msh.vtk  E T VECTOR u v 0   
    ---
    > WRITE_MESH mechanical-square-temperature.vtk  E  VECTOR u v 0   
    $ 

Quality assurance

  Since the results obtained with the tool might be used in verifying
  existing equipment or in designing new mechanical parts in sensitive
  industries, a certain level of software quality assurance is needed.
  Not only are best-practices for developing generic software such as

  -   employment of a version control system,
  -   automated testing suites,
  -   user-reported bug tracking support.
  -   etc.

  required, but also since the tool falls in the category of engineering
  computational software, verification and validation procedures are
  also mandatory, as discussed below. Design should be such that
  governance of engineering data including problem definition, results
  and documentation can be efficiently performed using state-of-the-art
  methodologies, such as distributed control version systems

The development of FeenoX is tracked with the distributed version
control system Git. The official repository is hosted on Github at
https://github.com/seamplex/feenox/. New non-trivial features are added
in new branches which are then eventually merged into the main branch.

Note that nowadays mentioning that the source code of a piece of
software is tracked with Git (why wouldn’t it?) is like saying a hotel
has a private bathroom in each room (why wouldn’t it?). But the reader
ought to keep in mind that there is a non-negligible fraction of
production calculation codes (even nuclear-related) whose source code is
not tracked with a DVCS, let alone features and bug fixes follow the
branch-review-merge path.

Reproducibility and traceability

  The full source code and the documentation of the tool ought to be
  maintained under a control version system. Whether access to the
  repository is public or not is up to the vendor, as long as the
  copying conditions are compatible with the definitions of both free
  and open source software from the FSF and the OSI, respectively as
  required in sec. 1.

  In order to be able to track results obtained with different version
  of the tools, there should be a clear release procedure. There should
  be periodical releases of stable versions that are required

  -   not to raise any warnings when compiled using modern versions of
      common compilers (e.g. GNU, Clang, Intel, etc.)
  -   not to raise any errors when assessed with dynamic memory analysis
      tools (e.g. Valgrind) for a wide variety of test cases
  -   to pass all the automated test suites as specified in sec. 4.2

  These stable releases should follow a common versioning scheme, and
  either the tarballs with the sources and/or the version control system
  commits should be digitally signed by a cognizant responsible. Other
  unstable versions with partial and/or limited features might be
  released either in the form of tarballs or made available in a code
  repository. The requirement is that unstable tarballs and main (a.k.a.
  trunk) branches on the repositories have to be compilable. Any feature
  that does not work as expected or that does not even compile has to be
  committed into develop branches before being merge into trunk.

  If the tool has an executable binary, it should be able to report
  which version of the code the executable corresponds to. If there is a
  library callable through an API, there should be a call which returns
  the version of the code the library corresponds to.

  It is recommended not to mix mesh data like nodes and element
  definition with problem data like material properties and boundary
  conditions so as to ease governance and tracking of computational
  models and the results associated with them. All the information
  needed to solve a particular problem (i.e. meshes, boundary
  conditions, spatially-distributed material properties, etc.) should be
  generated from a very simple set of files which ought to be
  susceptible of being tracked with current state-of-the-art version
  control systems. In order to comply with this suggestion, ASCII
  formats should be favored when possible.

As stated in the previous section, the official repository is freely
available on Github. As long as the copying conditions (GPLv3+) are met,
the repository can be freely cloned and/or forked.

Each binary executable feenox has embedded a literal string with the
version of the source code used to build it. When running without
arguments, it will print the version (which includes the hash of the
last commit to the repository) and the usage:

    $ feenox
    FeenoX v1.0.7-g9b98430 
    a cloud-first free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    usage: feenox [options] inputfile [replacement arguments] [petsc options]

      -h, --help         display options and detailed explanations of command-line usage
      -v, --version      display brief version information and exit
      -V, --versions     display detailed version information
      -c, --check        validates if the input file is sane or not
      --pdes             list the types of PROBLEMs that FeenoX can solve, one per line
      --elements_info    output a document with information about the supported element types
      --linear           force FeenoX to solve the PDE problem as linear
      --non-linear       force FeenoX to solve the PDE problem as non-linear

    Run with --help for further explanations.
    $ 

As required by the GNU Standards, running with -v or --version will
print copyright information as well:

    $ feenox -v
    FeenoX v1.0.7-g9b98430 
    a cloud-first free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    Copyright © 2009--2024 https://seamplex.com/feenox
    GNU General Public License v3+, https://www.gnu.org/licenses/gpl.html. 
    FeenoX is free software: you are free to change and redistribute it.
    There is NO WARRANTY, to the extent permitted by law.
    $ 

And running with -V or --versions will print detailed versioning
information about

1.  the date and time of the last commit to the repository
2.  the date and time of compilation
3.  the architecture, compiler type, version and flags used to build the
    executable
4.  the versions of the external numerical libraries used to link the
    executable

    $ feenox --versions
    FeenoX v1.0.7-g9b98430 
    a cloud-first free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    Last commit date   : Tue Mar 19 16:17:30 2024 -0300
    Build date         : Wed Mar 20 07:40:34 2024 -0300
    Build architecture : linux-gnu x86_64
    Compiler version   : gcc (Debian 12.2.0-14) 12.2.0
    Compiler expansion : gcc -Wl,-z,relro -I/usr/include/x86_64-linux-gnu/mpich -L/usr/lib/x86_64-linux-gnu -lmpich
    Compiler flags     : -O3 -flto=auto -no-pie
    Builder            : gtheler@tom
    GSL version        : 2.7.1
    SUNDIALS version   : N/A
    PETSc version      : Petsc Development GIT revision: v3.20.5-856-g0d3f65ad054  GIT Date: 2024-03-20 02:13:21 +0000
    PETSc arch         : arch-linux-c-debug
    PETSc options      : --download-eigen --download-hdf5 --download-hypre --download-metis --download-mumps --download-parmetis --download-scalapack --download-slepc --with-64-bit-indices=no --with-debugging=yes --with-precision=double --with-scalar-type=real PETSC_ARCH=arch-linux-c-debug --force
    SLEPc version      : SLEPc Development GIT revision: v3.20.1-36-g7a35a7b97  GIT Date: 2023-12-02 02:30:03 -0600
    $ 

The version is composed of three dot-separated integers:

1.  the major version (major changes)
2.  the minor version (incompatible input changes)
3.  the revision (individual commits from last tag)

The autogen.sh script builds this string at compile time, which is
stored in a header and finally embedded into the executable. The major m
and minor n integers are read from the git tag formatted as vm.n, which
is bumped manually by adding an annotated tag to a particular commit.
The revision is computed automatically with git describe as the number
of commits in the main branch from the tag to the last commit. The hash
is also added to avoid ambiguities in case the repository is forked and
diverged from the official one. Periodically, source and binary tarballs
are built (using automated scripts in the dist subdirectory) and
published online.

Given the input-file scheme thoroughfully explained in
sec. 3.1—especially the separation of the problem formulation from the
mesh data–the input files can be tracked with Git (or any other VCS) as
well, therefore enhancing traceability of results and data governance.
Again, this might be obvious in the 2020s. But there are many FEM
solvers which mix the mesh data with the problem definition (e.g. when
external loads have to be given at the nodes instead of using
expressions like p=rho*g*z or Fx=1e3).

Automated testing

  A mean to automatically test the code works as expected is mandatory.
  A set of problems with known solutions should be solved with the tool
  after each modification of the code to make sure these changes still
  give the right answers for the right questions and no regressions are
  introduced. Unit software testing practices like continuous
  integration and test coverage are recommended but not mandatory.

  The tests contained in the test suite should be

  -   varied,
  -   diverse, and
  -   independent

  Due to efficiency issues, there can be different sets of tests
  (e.g. unit and integration tests, quick and thorough tests, etc.)
  Development versions stored in non-main branches can have
  temporarily-failing tests, but stable versions have to pass all the
  test suites.

The make check target will execute a set of Bash scripts which will run
hundreds of cases and compare their solutions to reference values. These
references might be

i.  analytical solutions,
ii. known reference solutions, or
iii. random reference solutions.

Depending on the type of case being run, some of these tests might work
as very simplified verification cases. But the bulk work as regressions
tests so developers adding new features can check they do not break
existing working code.

For example, if by mistake a developer flips a sign of one term when
setting convection boundary conditions in the heat-conduction PDE,
i.e. from

    double rhs = h*Tref;

to

    double rhs = -h*Tref;

then the make check step will detect it. In effect,

    $ make check
    [...]
    XFAIL: tests/abort.sh
    PASS: tests/algebraic_expr.sh
    PASS: tests/annulus-modal.sh
    PASS: tests/uo2-pellet.sh
    [...]
    PASS: tests/t21.sh
    FAIL: tests/thermal-1d.sh
    PASS: tests/thermal-2d.sh
    FAIL: tests/thermal-3d.sh
    XFAIL: tests/thermal-slab-no-k.sh
    XFAIL: tests/thermal-slab-wrong-bc.sh
    FAIL: tests/thermal-radiation.sh
    PASS: tests/transient-mesh.sh
    PASS: tests/trig.sh
    [...]
    ============================================================================
    Testsuite summary for feenox 1.0.7
    ============================================================================
    # TOTAL: 75
    # PASS:  64
    # SKIP:  2
    # XFAIL: 6
    # FAIL:  3
    # XPASS: 0
    # ERROR: 0
    ============================================================================
    See ./test-suite.log
    Please report to jeremy@seamplex.com
    ============================================================================
    make[3]: *** [Makefile:1723: test-suite.log] Error 1
    [...]
    make: *** [Makefile:1608: check-recursive] Error 1
    $ 

Bug reporting and tracking

  A system to allow developers and users to report bugs and errors and
  to suggest improvements should be provided. If applicable, bug reports
  should be tracked, addressed and documented. User-provided suggestions
  might go into the back log or TO-DO list if appropriate.

  Here, “bug and errors” mean failure to

  -   compile on supported architectures,
  -   run (unexpected run-time errors, segmentation faults, etc.)
  -   return a correct result

The Github Issues feature at https://github.com/seamplex/feenox/issues
is used to report and track bugs and errors (fig. 30).

[Figure 30: Github Issues for FeenoX]

Figure 30: Github Issues for FeenoX

  [Figure 30: Github Issues for FeenoX]: issues.png

Documentation

  Documentation should be complete and cover both the user and the
  developer point of view. It should include a user manual adequate for
  both reference and tutorial purposes. Other forms of simplified
  documentation such as quick reference cards or video tutorials are not
  mandatory but highly recommended. Since the tool should be extendable
  (sec. 2.6), there should be a separate development manual covering the
  programming design and implementation, explaining how to extend the
  code and how to add new features. Also, as non-trivial mathematics
  which should be verified are expected, a thorough explanation of what
  equations are taken into account and how they are solved is required.

  It should be possible to make the full documentation available online
  in a way that it can be both printed in hard copy and accessed easily
  from a mobile device. Users modifying the tool to suit their own needs
  should be able to modify the associated documentation as well, so a
  clear notice about the licensing terms of the documentation itself
  (which might be different from the licensing terms of the source code
  itself) is mandatory. Tracking changes in the documentation should be
  similar to tracking changes in the code base. Each individual document
  ought to explicitly state to which version of the tool applies. Plain
  ASCII formats should be preferred. It is forbidden to submit
  documentation in a non-free format.

  The documentation shall also include procedures for

  -   reporting errors and bugs
  -   releasing stable versions
  -   performing verification and validation studies
  -   contributing to the code base, including
      -   code of conduct
      -   coding styles
      -   variable and function naming conventions

According to Eric Raymond’s book “The Art of Unix Programming”:

  Compactness is the property that a design can fit inside a human
  being’s head. A good practical test for compactness is this: Does an
  experienced user normally need a manual? If not, then the design (or
  at least the subset of it that covers normal use) is compact.

Following to 20-80 rule, we could say that FeenoX is compact for 80% of
its usage. But the most complex 20% of the cases might need users (even
the author) to look up the syntax of the definition and instructions in
the manual page (illustrated in fig. 31), which is accessible with
man feenox after installing with make install:

    $ man -k feenox
    feenox (1)           - a cloud-first free no-X uniX-like finite-element(ish) computational engineering tool
    $ man feenox
    $

[a]

a

[b]

b

Figure 31: The FeenoX Unix manpage in section 1 when running man feenox.
a — Gnome Terminal, b — Konsole

This man page is compiled into troff from a markdown source, which in
turn has some sections involving the syntax and reference of the

-   definitions and instructions
-   special variables
-   internal built-in functions and functionals

generated by a script that parses the actual source code. For instance,
the code that parses the INTEGRATE function has three-forward-slash
comments that tell this script that it has to prepare documentation:

    int feenox_parse_integrate(void) {
      
      mesh_integrate_t *mesh_integrate = NULL;
      feenox_check_alloc(mesh_integrate = calloc(1, sizeof(mesh_integrate_t)));
      
    ///kw_pde+INTEGRATE+usage { <expression> | <function> }
    ///kw_pde+INTEGRATE+detail Either an expression or a function of space $x$, $y$ and/or $z$ should be given.
    ///kw_pde+INTEGRATE+detail If the integrand is a function, do not include the arguments, i.e. instead of `f(x,y,z)` just write `f`.
    ///kw_pde+INTEGRATE+detail The results should be the same but efficiency will be different (faster for pure functions).
      char *token = feenox_get_next_token(NULL);
      if ((mesh_integrate->function = feenox_get_function_ptr(token)) == NULL) {
        feenox_call(feenox_expression_parse(&mesh_integrate->expr, token));
      }
      
      char *name_mesh = NULL;
      char *name_physical_group = NULL;
      char *name_result = NULL;
      
      while ((token = feenox_get_next_token(NULL)) != NULL) {
    ///kw_pde+INTEGRATE+usage [ OVER <physical_group> ]
    ///kw_pde+INTEGRATE+detail By default the integration is performed over the highest-dimensional elements of the mesh,
    ///kw_pde+INTEGRATE+detail i.e. over the whole volume, area or length for three, two and one-dimensional meshes, respectively.
    ///kw_pde+INTEGRATE+detail If the integration is to be carried out over just a physical group, it has to be given in `OVER`.

        if (strcasecmp(token, "OVER") == 0) {
          feenox_call(feenox_parser_string(&name_physical_group));
          
    [...]

The script doc/reference.sh would create the markdown snippet shown in
fig. 32 (a), which then can be converted to other output formats
(figs. 32 (b), 32 (c), 32 (d)) for the final user (and author) to look
up the syntax of the input keywords.

[a]

a

[b]

b

[c]

c

[d]

d

Figure 32: Reference for the keyword INTEGRATE in Markdown created out
of special comments in the C source converted to different output
formats.. a — Markdown, b — Manpage, c — HTML, d — PDF

Other pieces of documentation in markdown which then are converted to
HTML & PDF (with Pandoc and XeLaTeX) include:

-   The FeenoX manual
-   The FeenoX description (converted to Texinfo as well)
-   Software Requirements Specification
-   Software Design Specification
-   Frequently Asked Questions
-   FeenoX Unix man page
-   History
-   Compilation guide
-   Programming guide

  [31]: manpage-gnome.png
  [32]: manpage.png
  [33]: integrate-md
  [34]: integrate-man
  [35]: integrate-html
  [36]: integrate-pdf
  [The FeenoX manual]: https://github.com/seamplex/feenox/blob/main/doc/feenox-desc.md
  [37]: https://github.com/seamplex/feenox/blob/main/doc/srs.md
  [Software Design Specification]: https://github.com/seamplex/feenox/blob/main/doc/sds.md
  [Frequently Asked Questions]: https://github.com/seamplex/feenox/blob/main/doc/FAQ.md
  [FeenoX Unix man page]: https://github.com/seamplex/feenox/blob/main/doc/feenox.1.md
  [History]: https://github.com/seamplex/feenox/blob/main/doc/history.md
  [38]: https://github.com/seamplex/feenox/blob/main/doc/compilation.md
  [Programming guide]: https://github.com/seamplex/feenox/blob/main/doc/programming.md

Appendix: Downloading and compiling FeenoX

Binary executables

Browse to https://www.seamplex.com/feenox/dist/ and check what the
latest version for your architecture is. Then do

    feenox_version=1.0.8
    wget -c https://www.seamplex.com/feenox/dist/linux/feenox-v${feenox_version}-linux-amd64.tar.gz
    tar xzf feenox-v${feenox_version}-linux-amd64.tar.gz
    sudo cp feenox-v${feenox_version}-linux-amd64/bin/feenox /usr/local/bin

You’ll have the binary under bin and examples, documentation, manpage,
etc under share. Copy bin/feenox into somewhere in the PATH and that
will be it. If you are root, do

    sudo cp feenox-v${feenox_version}-linux-amd64/bin/feenox /usr/local/bin

If you are not root, the usual way is to create a directory $HOME/bin
and add it to your local path. If you have not done it already, do

    mkdir -p $HOME/bin
    echo 'expot PATH=$PATH:$HOME/bin' >> .bashrc

Then finally copy bin/feenox to $HOME/bin

    cp feenox-v${feenox_version}-linux-amd64/bin/feenox $HOME/bin

Check if it works by calling feenox from any directory (you might need
to open a new terminal so .bashrc is re-read):

    $ feenox
    FeenoX v1.0.8-g731ca5d 
    a cloud-first free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    usage: ./feenox [options] inputfile [replacement arguments] [petsc options]

      -h, --help         display options and detailed explanations of command-line usage
      -v, --version      display brief version information and exit
      -V, --versions     display detailed version information
      -c, --check        validates if the input file is sane or not
      --pdes             list the types of PROBLEMs that FeenoX can solve, one per line
      --elements_info    output a document with information about the supported element types
      --linear           force FeenoX to solve the PDE problem as linear
      --non-linear       force FeenoX to solve the PDE problem as non-linear

    Run with --help for further explanations.
    $ 

Source tarballs

To compile the source tarball, proceed as follows. This procedure does
not need git nor autoconf but a new tarball has to be downloaded each
time there is a new FeenoX version.

1.  Install mandatory dependencies

        sudo apt-get update
        sudo apt-get install gcc make libgsl-dev

    If you cannot install libgsl-dev, you can have the configure script
    to download and compile it for you. See point 4 below.

2.  Install optional dependencies (of course these are optional but
    recommended)

        sudo apt-get install libsundials-dev petsc-dev slepc-dev

3.  Download and un-compress FeenoX source tarball. Browse to
    https://www.seamplex.com/feenox/dist/src/ and pick the latest
    version:

        wget https://www.seamplex.com/feenox/dist/src/feenox-v0.1.66-g1c4b17b.tar.gz
        tar xvzf feenox-v0.1.66-g1c4b17b.tar.gz

4.  Configure, compile & make

        cd feenox-v0.1.66-g1c4b17b
        ./configure
        make -j4

    If you cannot (or do not want) to use libgsl-dev from a package
    repository, call configure with --enable-download-gsl:

        ./configure --enable-download-gsl

    If you do not have Internet access, get the tarball manually, copy
    it to the same directory as configure and run again.

5.  Run test suite (optional)

        make check

6.  Install the binary system wide (optional)

        sudo make install

Git repository

To compile the Git repository, proceed as follows. This procedure does
need git and autoconf but new versions can be pulled and recompiled
easily. If something goes wrong and you get an error, do not hesitate to
ask in FeenoX’s discussion page.

1.  Install mandatory dependencies

        sudo apt-get update
        sudo apt-get install git build-essential make automake autoconf libgsl-dev

    If you cannot install libgsl-dev but still have git and the build
    toolchain, you can have the configure script to download and compile
    it for you. See point 4 below.

2.  Install optional dependencies (of course these are optional but
    recommended)

        sudo apt-get install libsundials-dev petsc-dev slepc-dev

3.  Clone Github repository

        git clone https://github.com/seamplex/feenox

4.  Bootstrap, configure, compile & make

        cd feenox
        ./autogen.sh
        ./configure
        make -j4

    If you cannot (or do not want to) use libgsl-dev from a package
    repository, call configure with --enable-download-gsl:

        ./configure --enable-download-gsl

    If you do not have Internet access, get the tarball manually, copy
    it to the same directory as configure and run again. See the
    detailed compilation instructions for an explanation.

5.  Run test suite (optional)

        make check

6.  Install the binary system wide (optional)

        sudo make install

To stay up to date, pull and then autogen, configure and make (and
optionally install):

    git pull
    ./autogen.sh; ./configure; make -j4
    sudo make install

  [discussion page]: https://github.com/seamplex/feenox/discussions
  [detailed compilation instructions]: compilation.md

Appendix: Rules of Unix philosophy

In 1978, Doug McIlroy—the inventor of Unix pipes and one of the founders
of the Unix tradition—stated:

i.  Make each program do one thing well. To do a new job, build afresh
    rather than complicate old programs by adding new features.

ii. Expect the output of every program to become the input to another,
    as yet unknown, program. Don’t clutter output with extraneous
    information. Avoid stringently columnar or binary input formats.
    Don’t insist on interactive input.

iii. Design and build software, even operating systems, to be tried
     early, ideally within weeks. Don’t hesitate to throw away the
     clumsy parts and rebuild them.

iv. Use tools in preference to unskilled help to lighten a programming
    task, even if you have to detour to build the tools and expect to
    throw some of them out after you’ve finished using them.

He later summarized it this way:

  This is the Unix philosophy: Write programs that do one thing and do
  it well. Write programs to work together. Write programs to handle
  text streams, because that is a universal interface.

FeenoX explicitly followed the above ideas from scratch, especially the
for sentences in bullet ii. It is even, like Unix itself, a third-system
effect where clumsy parts of previous attempts were thrown away and
rebuilt from scratch. The following sections explain how each of the
seventeen rules was taken into account when designing and implementing
FeenoX.

Rule of Modularity

  Developers should build a program out of simple parts connected by
  well defined interfaces, so problems are local, and parts of the
  program can be replaced in future versions to support new features.
  This rule aims to save time on debugging code that is complex, long,
  and unreadable.

FeenoX is designed to be as lightweight as possible. On the one hand, it
relies on third-party high-quality libraries to do the heavy
mathematical weightlifting such as

-   GNU Scientific Library for general mathematics,
-   SUNDIALS IDA for ODEs and DAEs,
-   PETSc for linear, non-linear and transient PDEs, and
-   SLEPc for PDEs involving eigen problems

because these libraries were written by professional programmers using
algorithms designed by professional mathematicians. Yet-to-be-discovered
improved mathematical schemes and/or coding algorithms can be eventually
used by FeenoX by just updating those dependencies, which for sure will
keep their well-defined interfaces (because they are programmed by
professional programmers).

Moreover, the extensibility feature (sec. 11.17) of having each PDE in
separate directories which can be added or removed at compile time
without changing any line of the source code goes into this direction as
well. Relying of C function pointers allows (in principle) to replace
these “virtual” methods with other ones using the same interface.

  Note that our (human) languages in general and words in particular
  shape and limit the way we think. Fortran’s concept of “modules” is
  not the same as Unix’s concept of “modularity.” I wish two different
  words had been used.

  [GNU Scientific Library]: https://www.gnu.org/software/gsl/
  [SUNDIALS IDA]: https://computing.llnl.gov/projects/sundials/ida
  [PETSc]: https://petsc.org/
  [SLEPc]: http://slepc.upv.es/

Rule of Clarity

  Developers should write programs as if the most important
  communication is to the developer who will read and maintain the
  program, rather than the computer. This rule aims to make code as
  readable and comprehensible as possible for whoever works on the code
  in the future.

Of course there might be a confirmation bias in this section because
every programmer thinks their code is clear (and everybody else’s is
not). But the first design decision to fulfill this rule is the
programming language: there is little change to fulfill it with Fortran.
One might argue that C++ can be clearer than C in some points, but for
the vast majority of the source code they are equally clear. Besides, C
is far simpler than C++ (see rule of simplicity).

The second decision is not about the FeenoX source code but about FeenoX
inputs: clear human-readable input files without any extra unneeded
computer-level nonsense. The two illustrative cases are the NAFEMS LE10
& LE11 benchmarks, where there is a clear one-to-one correspondence
between the “engineering” formulation and the input file FeenoX
understands.

  [LE10]: https://www.seamplex.com/feenox/examples/mechanical.html#nafems-le10-thick-plate-pressure-benchmark
  [LE11]: https://www.seamplex.com/feenox/examples/mechanical.html#nafems-le11-solid-cylindertapersphere-temperature-benchmark

Rule of Composition

  Developers should write programs that can communicate easily with
  other programs. This rule aims to allow developers to break down
  projects into small, simple programs rather than overly complex
  monolithic programs.

Previous designs of FeenoX’ predecessors used to include instructions to
perform parametric sweeps( and even optimization loops), non-trivial
macro expansions using M4 and even execution of arbitrary shell
commands. These non-trivial operations were removed from FeenoX to focus
on the rule of composition, paying especially attention to easing the
inclusion of calling the feenox binary from shell scripts, enforcing the
composition with other Unix-like tools. Emphasis has been put on adding
flexibility to programmatic generation of input files (see also rule of
generation in sec. 11.14) and the handling and expansion of command-line
arguments to increase the composition with other programs.

Moreover, the output is 100% controlled by the user at run-time so it
can be tailored to suit any other programs’ input needs as well. An
illustrative example is creating professional-looking tables with
results using AWK & LaTeX.

  [creating professional-looking tables with results using AWK & LaTeX]:
    https://www.seamplex.com/feenox/doc/sds.html#sec:interoperability

Rule of Separation

  Developers should separate the mechanisms of the programs from the
  policies of the programs; one method is to divide a program into a
  front-end interface and a back-end engine with which that interface
  communicates. This rule aims to prevent bug introduction by allowing
  policies to be changed with minimum likelihood of destabilizing
  operational mechanisms.

FeenoX relies of the rule of separation (which also links to the next
two rules of simplicity and parsimony) from the very beginning of its
design phase. It was explicitly designed as a glue layer between a
mesher like Gmsh and a post-processor like Gnuplot, Gmsh or Paraview.
This way, not only flexibility and diversity (see #sec:unix-diversity)
can be boosted, but also technological changes can be embraced with
little or no effort. For example, CAEplex provides a web-based platform
for performing thermo-mechanical analysis on the cloud running from the
browser. Had FeenoX been designed as a traditional desktop-GUI program,
this would have been impossible. If in the future CAD/CAE interfaces
migrate into virtual and/or augmented reality with interactive 3D
holographic input/output devices, the development effort needed to use
FeenoX as the back end is negligible.

  [CAEplex]: https://www.caeplex.com

Rule of Simplicity

  Developers should design for simplicity by looking for ways to break
  up program systems into small, straightforward cooperating pieces.
  This rule aims to discourage developers’ affection for writing
  “intricate and beautiful complexities” that are in reality bug prone
  programs.

The main source of simplicity comes from the design of the syntax of the
input files, discussed in detail in the SDS:

-   English-like self-evident input files matching as close as possible
    the problem text.
-   Simple problems need simple input.
-   Similar problems need similar inputs.
-   If there is a single material there is no need to link volumes to
    properties.

  [SDS]: https://www.seamplex.com/feenox/doc/sds.html#sec:input

Rule of Parsimony

  Developers should avoid writing big programs. This rule aims to
  prevent overinvestment of development time in failed or suboptimal
  approaches caused by the owners of the program’s reluctance to throw
  away visibly large pieces of work. Smaller programs are not only
  easier to write, optimize, and maintain; they are easier to delete
  when deprecated.

We already said that FeenoX is a glue layer between a mesher and a
post-processing tool. Even more, at another level, it acts as two glue
layers between the mesher and PETSc, and PETSc and the post-processor.

On the other hand, we also already stated that FeenoX was written from
scratch after throwing away clumsy code from two previous attempts. For
instance, these previous versions used to implement parametric and
optimization schemes. Instead, in FeenoX, these type of runs have to be
driven from an outer script (Bash, Python, etc.)

Rule of Transparency

  Developers should design for visibility and discoverability by writing
  in a way that their thought process can lucidly be seen by future
  developers working on the project and using input and output formats
  that make it easy to identify valid input and correct output. This
  rule aims to reduce debugging time and extend the lifespan of
  programs.

As with the rule of clarity (sec. 11.2), there is a risk of falling into
the confirmation bias because every programmer thinks its code is
transparent. Anyway, FeenoX is written in C99 which is way easier to
debug than both Fortran and C++. Yet, very much like PETSc, FeenoX makes
use of structures and function pointers to give the same functionality
as C++’s virtual methods without needing to introduce other complexities
that make the code base harder to maintain and to debug.

Regarding identification of valid inputs and correct outputs,

1.  The build system includes a make check target that runs hundreds of
    regressions tests.
2.  The code supports verification using the Method of Manufactured
    Solutions

  [regressions tests]: https://github.com/seamplex/feenox/tree/main/tests
  [Method of Manufactured Solutions]: https://github.com/seamplex/feenox/tree/main/tests/mms

Rule of Robustness

  Developers should design robust programs by designing for transparency
  and discoverability, because code that is easy to understand is easier
  to stress test for unexpected conditions that may not be foreseeable
  in complex programs. This rule aims to help developers build robust,
  reliable products.

Robustness is the child of transparency and simplicity.

Rule of Representation

  Developers should choose to make data more complicated rather than the
  procedural logic of the program when faced with the choice, because it
  is easier for humans to understand complex data compared with complex
  logic. This rule aims to make programs more readable for any developer
  working on the project, which allows the program to be maintained.

There is a trade off between clarity and efficiency. However, avoiding
Fortran should already fulfill this rule. FeenoX uses C structures with
function pointers, which make it far simple to understand than similar
Fortran-based FEM tools. Just compare the source directories of FeenoX
and CalculiX. Take for instance the file stress.c from
src/pdes/mechanical (which if deleted, will remove support for
mechanical problems but it will not prevent the compilation of feenox)
from the former and calcstress.f (buried inside 2,400 files in src) from
the latter. There might be more illustrative examples showing how
FeenoX’ design is more representative than of CalculiX, but it is way
too hard to understand the source code of the latter (even though the
license is supposed to be GPL).

  [stress.c]: https://github.com/seamplex/feenox/blob/main/src/pdes/mechanical/stress.c
  [calcstress.f]: https://github.com/calculix/ccx_prool/blob/master/CalculiX/ccx_2.21/src/calcstress.f
  [src]: https://github.com/calculix/ccx_prool/tree/master/CalculiX/ccx_2.21/src

Rule of Least Surprise

  Developers should design programs that build on top of the potential
  users’ expected knowledge; for example, ‘+’ in a calculator program
  should always mean ‘addition’. This rule aims to encourage developers
  to build intuitive products that are easy to use.

The rules of input syntax have been designed with this rule in mind.
Just note a couple of them:

-   The command-line arguments after the input file are available to be
    expanded verbatim in the input file as $1, $2, etc. (or ${1}, ${2},
    etc. if they appear in the middle of strings). This syntax matches
    Bash’ syntax for expanding command-line arguments, so any person
    reading an input file with this syntax already knows what it does. ´

-   If one needs a problem where the conductivity depends on x as
    k(x) = 1 + x then the input is

        k(x) = 1+x

-   If a problem needs a temperature distribution given by an algebraic
    expression $T(x,y,z)=\sqrt{x^2+y^2}+z$ then do

        T(x,y,z) = sqrt(x^2+y^2) + z

-   This syntax for (basic) algebraic expressions matches the common
    syntax found in Gmsh, Maxima and many other scientific tools. More
    complex expressions (e.g. involving hyperbolic tangents) might
    differ slightly.

Rule of Silence

  Developers should design programs so that they do not print
  unnecessary output. This rule aims to allow other programs and
  developers to pick out the information they need from a program’s
  output without having to parse verbosity.

TL;DR: no PRINT (or WRITE_RESULTS), no output.

Rule of Repair

  Developers should design programs that fail in a manner that is easy
  to localize and diagnose or in other words “fail noisily”. This rule
  aims to prevent incorrect output from a program from becoming an input
  and corrupting the output of other code undetected.

Input errors are detected before the computation is started:

    $ feenox thermal-error.fee 
    error: undefined thermal conductivity 'k'
    $ 

Run-time errors (even inside the numerical libraries) are caught with
custom handlers.

Rule of Economy

  Developers should value developer time over machine time, because
  machine cycles today are relatively inexpensive compared to prices in
  the 1970s. This rule aims to reduce development costs of projects.

As explained in the SDS, output is 100% user-defined so only the desired
results are directly obtained instead of needing further digging into
tons of undesired data. The approach of “compute and write everything
you can in one single run” made sense in 1970 where CPU time was more
expensive than human time, but not anymore. Once again, the iconic
examples are the NAFEMS LE10 & LE11 benchmarks, where just the required
scalar stress at the required location is written into the standard
output.

  [39]: https://www.seamplex.com/feenox/doc/sds.html#sec:output
  [LE10]: https://www.seamplex.com/feenox/examples/mechanical.html#nafems-le10-thick-plate-pressure-benchmark
  [LE11]: https://www.seamplex.com/feenox/examples/mechanical.html#nafems-le11-solid-cylindertapersphere-temperature-benchmark

Rule of Generation

  Developers should avoid writing code by hand and instead write
  abstract high-level programs that generate code. This rule aims to
  reduce human errors and save time.

Some key points:

-   Input files are M4-like-macro friendly.
-   Parametric runs can be done from scripts through expansion of
    command line arguments.
-   Documentation is created out of simple Markdown sources and
    assembled as needed.

More saliently, the automatic detection of the available PDEs in
src/pdes is an example of this rule. The autogen.sh would loop over each
subdirectory and create a source file src/pdes/parser.c with a function
feenox_pde_parse_problem_type() which then will be part of the actual
FeenoX source base as the entry point for parsing the PROBLEM keyword.

Rule of Optimization

  Developers should prototype software before polishing it. This rule
  aims to prevent developers from spending too much time for marginal
  gains.

FeenoX is still “premature” for heavy optimization. Yet, it is
(relatively) faster than other alternatives. It does use link-time
optimization to allow for inlining of small routines. There is even a
FeenoX benchmarking repository that uses Google’s Benchmark library to
prototype code optimization:
https://github.com/seamplex/feenox-benchmark.

Rule of Diversity

  Developers should design their programs to be flexible and open. This
  rule aims to make programs flexible, allowing them to be used in ways
  other than those their developers intended.

FeenoX can read Gmsh files, but they need not necessarily be created by
Gmsh. Other meshing formats (VTK with group names?) are planned to be
implemented. Also, either Gmsh or Paraview can be used to post-process
results. But also other formats are planned. See sec. 11.17. Diversity
is embraced from the bottom up!

Rule of Extensibility

  Developers should design for the future by making their protocols
  extensible, allowing for easy plugins without modification to the
  program’s architecture by other developers, noting the version of the
  program, and more. This rule aims to extend the lifespan and enhance
  the utility of the code the developer writes.

The main extensibility feature is that each PDE has a separate source
directory. Any of them can be used as as template to add new PDEs, which
are detected at compile time by the Autotools bootstrapping script.

A final note is that FeenoX is GPLv3+. First, this means that extensions
and contributions are welcome. Each author retains the copyright on the
contributed code (as long as it is free software). Second, the + is
there for the future.

Appendix: FeenoX history

Very much like Unix in the late 1960s and C in the early 1970s, FeenoX
is a third-system effect: I wrote a first hack that seemed to work
better than I had expected. Then I tried to add a lot of features and
complexities which I felt the code needed. After ten years of actual
usage, I then realized

1.  what was worth keeping,
2.  what needed to be rewritten and
3.  what had to be discarded.

The first version was called wasora, the second was “The wasora suite”
(i.e. a generic framework plus a bunch of “plugins”, including a
thermo-mechanical one named Fino) and then finally FeenoX. The story
that follows explains why I wrote the first hack to begin with.

------------------------------------------------------------------------

It was at the movies when I first heard about dynamical systems,
non-linear equations and chaos theory. The year was 1993, I was ten
years old and the movie was Jurassic Park. Dr. Ian Malcolm (the
character portrayed by Jeff Goldblum) explained sensitivity to initial
conditions in a memorable scene, which is worth watching again and
again. Since then, the fact that tiny variations may lead to unexpected
results has always fascinated me. During high school I attended a very
interesting course on fractals and chaos that made me think further
about complexity and its mathematical description. Nevertheless, it was
not not until college that I was able to really model and solve the
differential equations that give rise to chaotic behavior.

[Dr. Ian Malcolm (Jeff Goldblum) explains sensitivity to initial
conditions.]

In fact, initial-value ordinary differential equations arise in a great
variety of subjects in science and engineering. Classical mechanics,
chemical kinetics, structural dynamics, heat transfer analysis and
dynamical systems, among other disciplines, heavily rely on equations of
the form

$$
\dot{\mathbf{x}} = F(\mathbf{x},t)
$$

During my years of undergraduate student (circa 2004–2007), whenever I
had to solve these kind of equations I had to choose one of the
following three options:

1.  to program an ad-hoc numerical method such as Euler or Runge-Kutta,
    matching the requirements of the system of equations to solve, or
2.  to use a standard numerical library such as the GNU Scientific
    Library and code the equations to solve into a C program (or maybe
    in Python), or
3.  to use a high-level system such as Octave, Maxima, or some non-free
    (and worse, see below) programs.

Of course, each option had its pros and its cons. But none provided the
combination of advantages I was looking for, namely flexibility (option
one), efficiency (option two) and reduced input work (partially given by
option three). Back in those days I ended up wandering between options
one and two, depending on the type of problem I had to solve. However,
even though one can, with some effort, make the code read some
parameters from a text file, any other drastic change usually requires a
modification in the source code—some times involving a substantial
amount of work—and a further recompilation of the code. This was what I
most disliked about this way of working, but I could nevertheless live
with it.

Regardless of this situation, during my last year of Nuclear
Engineering, the tipping point came along. Here’s a
slightly-fictionalized of a dialog between myself and the teacher at the
computer lab (Dr E.), as it might have happened (or not):

  — (Prof.) Open MATLAB.™
  — (Me) It’s not installed here. I type mathlab and it does not work.
  — (Prof.) It’s spelled matlab.
  — (Me) Ok, working. (A screen with blocks and lines connecting them
  appears)
  — (Me) What’s this?
  — (Prof.) The point reactor equations.
  — (Me) It’s not. These are the point reactor equations:

  $$
  \begin{cases}
  \dot{\phi}(t) = \displaystyle \frac{\rho(t) - \beta}{\Lambda} \cdot \phi(t) + \sum_{i=1}^{N} \lambda_i \cdot c_i \\
  \dot{c}_i(t)  = \displaystyle \frac{\beta_i}{\Lambda} \cdot \phi(t) - \lambda_i \cdot c_i
  \end{cases}
  $$

  — (Me) And in any case, I’d write them like this in a computer:

      phi_dot = (rho-Beta)/Lambda * phi + sum(lambda[i], c[i], i, 1, N)
      c_dot[i] = beta[i]/Lambda * phi - lambda[i]*c[i]

This conversation forced me to re-think the ODE-solving issue. I could
not (and still cannot) understand why somebody would prefer to solve a
very simple set of differential equations by drawing blocks and
connecting them with a mouse with no mathematical sense whatsoever. Fast
forward fifteen years, and what I wrote above is essentially how one
would solve the point kinetics equations with FeenoX.

  [40]: https://www.seamplex.com/feenox
  [Dr. Ian Malcolm]: https://en.wikipedia.org/wiki/Ian_Malcolm_(character)
  [Jeff Goldblum]: https://en.wikipedia.org/wiki/Jeff_Goldblum
  [memorable scene]: https://www.youtube.com/watch?v=n-mpifTiPV4
  [Dr. Ian Malcolm (Jeff Goldblum) explains sensitivity to initial conditions.]:
    jurassicpark.jpg
  [Euler]: https://en.wikipedia.org/wiki/Euler_method
  [Runge-Kutta]: https://en.wikipedia.org/wiki/Runge%E2%80%93Kutta_methods
  [GNU Scientific Library]: https://www.gnu.org/software/gsl/
  [Octave]: https://www.gnu.org/software/octave/index
  [Maxima]: https://maxima.sourceforge.io/

Appendix: Downloading & compiling

  Please note that FeenoX is a cloud-first back end aimed at advanced
  users. It does not include a graphical interface and it is not
  expected to run in Windows. See this 5-min explanation about why:

  For an easy-to-use web-based front end with FeenoX running in the
  cloud directly from your browser see CAEplex at
  https://www.caeplex.com.

  Any contribution to make desktop GUIs such as PrePoMax or FreeCAD to
  work with FeenoX are welcome.

  [back end]: https://en.wikipedia.org/wiki/Front_and_back_ends
  [CAEplex]: https://www.caeplex.com
  [PrePoMax]: https://prepomax.fs.um.si/
  [FreeCAD]: http://https://www.freecadweb.org

Downloads

FeenoX is distributed under the terms of the GNU General Public License
version 3 or (at your option) any later version.

  ----------------------------- -----------------------------------------------------
  Debian packages               https://packages.debian.org/unstable/science/feenox

  GNU/Linux binaries            https://www.seamplex.com/feenox/dist/linux

  Source tarballs               https://www.seamplex.com/feenox/dist/src

  Github repository             https://github.com/seamplex/feenox/
  ----------------------------- -----------------------------------------------------

-   FeenoX is cloud-first. It was designed to run on servers.

-   Be aware that FeenoX does not have a GUI. Read the documentation,
    especially the description and the FAQs. Ask for help on the GitHub
    discussions page if you do now understand what this bullet means.

-   Debian/Ubuntu packages are unofficial, i.e. they are not available
    in apt repositories. They contain dynamically-linked binaries and
    their dependencies are hard-coded for each Debian/Ubuntu release.
    Make sure you get the right .deb for your release
    (i.e. bookworm/bullseye for Debian, kinetic/focal for Ubuntu).

-   Generic GNU/Linux binaries are provided as statically-linked
    executables for convenience. They do not support MUMPS nor MPI and
    have only basic optimization flags. Please compile from source for
    high-end applications. See detailed compilation instructions.

-   Try to avoid Windows as much as you can. The binaries are provided
    as transitional packages for people that for some reason still use
    such an outdated, anachronous, awful and invasive operating system.
    They are compiled with Cygwin and have no support whatsoever.
    Really, really, get rid of Windows ASAP.

      “It is really worth any amount of time and effort to get away from
      Windows if you are doing computational science.”

      https://lists.mcs.anl.gov/pipermail/petsc-users/2015-July/026388.html

  [GNU General Public License version 3]: https://www.gnu.org/licenses/gpl-3.0.en.html
  [cloud-first]: https://seamplex.com/feenox/doc/sds.html#cloud-first
  [documentation]: https://seamplex.com/feenox/doc/
  [description]: https://www.seamplex.com/feenox/doc/feenox-desc.html
  [FAQs]: https://seamplex.com/feenox/doc/FAQ.html
  [GitHub discussions page]: https://github.com/seamplex/feenox/discussions
  [41]: https://seamplex.com/feenox/doc/compilation.html
  [42]: http://cygwin.com/

Debian/Ubuntu packages

Debian/Ubuntu packages are available at
https://www.seamplex.com/feenox/dist/. Find the directory for your
Debian or Ubuntu release, i.e.

-   bookworm is Debian 12
-   bullseye is Debian 11
-   buster is Debian 10
-   kinetic is Ubuntu 22.10
-   jammy is Ubuntu 22.04
-   focal is Ubuntu 20.04

If you know how to install .deb packages, feel free to use your method
(i.e. gdebi or with the “Software Center” thing).

You can can always use dpkg (as root):

    $ sudo dpkg -i feenox-0.3_1_amd64.deb

Most likely, this step will fail due to failed dependencies. Just call
apt to fix them for you:

    $ sudo apt-get --fix-broken install

Now the command feenox should be globally available:

    $ feenox
    FeenoX v0.3
    a cloud-first free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    usage: ./feenox [options] inputfile [replacement arguments] [petsc options]

      -h, --help         display options and detailed explanations of command-line usage
      -v, --version      display brief version information and exit
      -V, --versions     display detailed version information
      -c, --check        validates if the input file is sane or not
      --pdes             list the types of PROBLEMs that FeenoX can solve, one per line
      --elements_info    output a document with information about the supported element types
      --linear           force FeenoX to solve the PDE problem as linear
      --non-linear       force FeenoX to solve the PDE problem as non-linear

    Run with --help for further explanations.
    $

If the execution fails, most likely the version of the .deb does not
match your GNU/Linux release. Please try the statically-linked binaries
below or ask in the FeenoX discussions page.

The FeenoX Unix man page should be available in section one:

    $ man -k feenox
    feenox (1)           - a cloud-first free no-X uniX-like finite-element(ish) computational engineering tool
    $ man feenox
    $

  [bookworm]: https://www.seamplex.com/feenox/dist/deb/bookworm
  [bullseye]: https://www.seamplex.com/feenox/dist/deb/bullseye
  [buster]: https://www.seamplex.com/feenox/dist/deb/buster
  [kinetic]: https://www.seamplex.com/feenox/dist/deb/kinetic
  [jammy]: https://www.seamplex.com/feenox/dist/deb/jammy
  [focal]: https://www.seamplex.com/feenox/dist/deb/focal
  [FeenoX discussions]: https://github.com/seamplex/feenox/discussions

Statically-linked binaries

Browse to https://www.seamplex.com/feenox/dist/ and check what the
latest version for your architecture is. Then do

    feenox_version=1.0.8
    wget -c https://www.seamplex.com/feenox/dist/linux/feenox-v${feenox_version}-linux-amd64.tar.gz
    tar xzf feenox-v${feenox_version}-linux-amd64.tar.gz
    sudo cp feenox-v${feenox_version}-linux-amd64/bin/feenox /usr/local/bin

You’ll have the binary under bin and examples, documentation, manpage,
etc under share. Copy bin/feenox into somewhere in the PATH and that
will be it. If you are root, do

    sudo cp feenox-v${feenox_version}-linux-amd64/bin/feenox /usr/local/bin

If you are not root, the usual way is to create a directory $HOME/bin
and add it to your local path. If you have not done it already, do

    mkdir -p $HOME/bin
    echo 'expot PATH=$PATH:$HOME/bin' >> .bashrc

Then finally copy bin/feenox to $HOME/bin

    cp feenox-v${feenox_version}-linux-amd64/bin/feenox $HOME/bin

Check if it works by calling feenox from any directory (you might need
to open a new terminal so .bashrc is re-read):

    $ feenox
    FeenoX v1.0.8-g731ca5d 
    a cloud-first free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    usage: ./feenox [options] inputfile [replacement arguments] [petsc options]

      -h, --help         display options and detailed explanations of command-line usage
      -v, --version      display brief version information and exit
      -V, --versions     display detailed version information
      -c, --check        validates if the input file is sane or not
      --pdes             list the types of PROBLEMs that FeenoX can solve, one per line
      --elements_info    output a document with information about the supported element types
      --linear           force FeenoX to solve the PDE problem as linear
      --non-linear       force FeenoX to solve the PDE problem as non-linear

    Run with --help for further explanations.
    $ 

Compile from source

To compile the source tarball, proceed as follows. This procedure does
not need git nor autoconf but a new tarball has to be downloaded each
time there is a new FeenoX version.

1.  Install mandatory dependencies

        sudo apt-get update
        sudo apt-get install gcc make libgsl-dev

    If you cannot install libgsl-dev, you can have the configure script
    to download and compile it for you. See point 4 below.

2.  Install optional dependencies (of course these are optional but
    recommended)

        sudo apt-get install libsundials-dev petsc-dev slepc-dev

3.  Download and un-compress FeenoX source tarball. Browse to
    https://www.seamplex.com/feenox/dist/src/ and pick the latest
    version:

        wget https://www.seamplex.com/feenox/dist/src/feenox-v0.1.66-g1c4b17b.tar.gz
        tar xvzf feenox-v0.1.66-g1c4b17b.tar.gz

4.  Configure, compile & make

        cd feenox-v0.1.66-g1c4b17b
        ./configure
        make -j4

    If you cannot (or do not want) to use libgsl-dev from a package
    repository, call configure with --enable-download-gsl:

        ./configure --enable-download-gsl

    If you do not have Internet access, get the tarball manually, copy
    it to the same directory as configure and run again.

5.  Run test suite (optional)

        make check

6.  Install the binary system wide (optional)

        sudo make install

Github repository

To compile the Git repository, proceed as follows. This procedure does
need git and autoconf but new versions can be pulled and recompiled
easily. If something goes wrong and you get an error, do not hesitate to
ask in FeenoX’s discussion page.

1.  Install mandatory dependencies

        sudo apt-get update
        sudo apt-get install git build-essential make automake autoconf libgsl-dev

    If you cannot install libgsl-dev but still have git and the build
    toolchain, you can have the configure script to download and compile
    it for you. See point 4 below.

2.  Install optional dependencies (of course these are optional but
    recommended)

        sudo apt-get install libsundials-dev petsc-dev slepc-dev

3.  Clone Github repository

        git clone https://github.com/seamplex/feenox

4.  Bootstrap, configure, compile & make

        cd feenox
        ./autogen.sh
        ./configure
        make -j4

    If you cannot (or do not want to) use libgsl-dev from a package
    repository, call configure with --enable-download-gsl:

        ./configure --enable-download-gsl

    If you do not have Internet access, get the tarball manually, copy
    it to the same directory as configure and run again. See the
    detailed compilation instructions for an explanation.

5.  Run test suite (optional)

        make check

6.  Install the binary system wide (optional)

        sudo make install

To stay up to date, pull and then autogen, configure and make (and
optionally install):

    git pull
    ./autogen.sh; ./configure; make -j4
    sudo make install

See the Compilation Guide for details. Ask in the GitHub Discussions
page for help.

  [discussion page]: https://github.com/seamplex/feenox/discussions
  [detailed compilation instructions]: compilation.md
  [43]: doc/compile.md

Licensing

FeenoX is distributed under the terms of the GNU General Public License
version 3 or (at your option) any later version. The following text was
borrowed from the Gmsh documentation. Replacing “Gmsh” with “FeenoX”
gives:

  FeenoX is “free software”; this means that everyone is free to use it
  and to redistribute it on a free basis. FeenoX is not in the public
  domain; it is copyrighted and there are restrictions on its
  distribution, but these restrictions are designed to permit everything
  that a good cooperating citizen would want to do. What is not allowed
  is to try to prevent others from further sharing any version of FeenoX
  that they might get from you.

  Specifically, we want to make sure that you have the right to give
  away copies of FeenoX, that you receive source code or else can get it
  if you want it, that you can change FeenoX or use pieces of FeenoX in
  new free programs, and that you know you can do these things.

  To make sure that everyone has such rights, we have to forbid you to
  deprive anyone else of these rights. For example, if you distribute
  copies of FeenoX, you must give the recipients all the rights that you
  have. You must make sure that they, too, receive or can get the source
  code. And you must tell them their rights.

  Also, for our own protection, we must make certain that everyone finds
  out that there is no warranty for FeenoX. If FeenoX is modified by
  someone else and passed on, we want their recipients to know that what
  they have is not what we distributed, so that any problems introduced
  by others will not reflect on our reputation.

  The precise conditions of the license for FeenoX are found in the
  General Public License that accompanies the source code. Further
  information about this license is available from the GNU Project
  webpage http://www.gnu.org/copyleft/gpl-faq.html.

FeenoX is licensed under the terms of the GNU General Public License
version 3 or, at the user convenience, any later version. This means
that users get the four essential freedoms:[8]

0.  The freedom to run the program as they wish, for any purpose.
1.  The freedom to study how the program works, and change it so it does
    their computing as they wish.
2.  The freedom to redistribute copies so they can help others.
3.  The freedom to distribute copies of their modified versions to
    others.

So a free program has to be open source, but it also has to explicitly
provide the four freedoms above both through the written license and
through appropriate mechanisms to get, modify, compile, run and document
these modifications using well-established and/or reasonable
straightforward procedures. That is why licensing FeenoX as GPLv3+ also
implies that the source code and all the scripts and makefiles needed to
compile and run it are available for anyone that requires it (i.e. it is
compiled with ./configure && make). Anyone wanting to modify the program
either to fix bugs, improve it or add new features is free to do so. And
if they do not know how to program, the have the freedom to hire a
programmer to do it without needing to ask permission to the original
authors. Even more, the documentation is released under the terms of the
Creative Commons Attribution-ShareAlike 4.0 International License so
these new (or modified) features can be properly documented as well.

Nevertheless, since these original authors are the copyright holders,
they still can use it to either enforce or prevent further actions from
the users that receive FeenoX under the GPLv3+. In particular, the
license allows re-distribution of modified versions only if

a.  they are clearly marked as different from the original, and
b.  they are distributed under the same terms of the GPLv3+.

There are also some other subtle technicalities that need not be
discussed here such as

-   what constitutes a modified version (which cannot be redistributed
    under a different license)
-   what is an aggregate (in which each part be distributed under
    different licenses)
-   usage over a network and the possibility of using AGPL instead of
    GPL to further enforce freedom

These issues are already taken into account in the FeenoX licensing
scheme.

It should be noted that not only is FeenoX free and open source, but
also all of the libraries it depends on (and their dependencies) also
are. It can also be compiled using free and open source build tool
chains running over free and open source operating systems.

These detailed compilation instructions are aimed at amd64 Debian-based
GNU/Linux distributions. The compilation procedure follows the POSIX
standard, so it should work in other operating systems and architectures
as well. Distributions not using apt for packages (i.e. yum) should
change the package installation commands (and possibly the package
names). The instructions should also work for in MacOS, although the
apt-get commands should be replaced by brew or similar. Same for Windows
under Cygwin, the packages should be installed through the Cygwin
installer. WSL was not tested, but should work as well.

[8]  There are some examples of pieces of computational software which
are described as “open source” in which even the first of the four
freedoms is denied. The most iconic case is that of Android, whose
sources are readily available online but there is no straightforward way
of updating one’s mobile phone firmware with a customized version, not
to mention vendor and hardware lock ins and the possibility of bricking
devices if something unexpected happens. In the nuclear industry, it is
the case of a Monte Carlo particle-transport program that requests users
to sign an agreement about the objective of its usage before allowing
its execution. The software itself might be open source because the
source code is provided after signing the agreement, but it is not free
(as in freedom) at all.

  [44]: http://www.gnu.org/copyleft/gpl.html
  [Gmsh documentation]: http://gmsh.info/doc/texinfo/gmsh.html#Copying-conditions
  [General Public License]: https://github.com/seamplex/feenox/blob/master/COPYING
  [GNU General Public License]: https://www.gnu.org/licenses/gpl-3.0
  [the documentation]: https://seamplex.com/feenox/doc/
  [Creative Commons Attribution-ShareAlike 4.0 International License]: https://creativecommons.org/licenses/by-sa/4.0/
  [AGPL]: https://en.wikipedia.org/wiki/GNU_Affero_General_Public_License
  [POSIX standard]: https://en.wikipedia.org/wiki/POSIX
  [Cygwin]: https://www.cygwin.com/

Quickstart

Note that the quickest way to get started is to download an
already-compiled statically-linked binary executable. Note that getting
a binary is the quickest and easiest way to go but it is the less
flexible one. Mind the following instructions if a binary-only option is
not suitable for your workflow and/or you do need to compile the source
code from scratch.

On a GNU/Linux box (preferably Debian-based), follow these quick steps.
See sec. 13.4 for the actual detailed explanations.

To compile the Git repository, proceed as follows. This procedure does
need git and autoconf but new versions can be pulled and recompiled
easily. If something goes wrong and you get an error, do not hesitate to
ask in FeenoX’s discussion page.

1.  Install mandatory dependencies

        sudo apt-get update
        sudo apt-get install git build-essential make automake autoconf libgsl-dev

    If you cannot install libgsl-dev but still have git and the build
    toolchain, you can have the configure script to download and compile
    it for you. See point 4 below.

2.  Install optional dependencies (of course these are optional but
    recommended)

        sudo apt-get install libsundials-dev petsc-dev slepc-dev

3.  Clone Github repository

        git clone https://github.com/seamplex/feenox

4.  Bootstrap, configure, compile & make

        cd feenox
        ./autogen.sh
        ./configure
        make -j4

    If you cannot (or do not want to) use libgsl-dev from a package
    repository, call configure with --enable-download-gsl:

        ./configure --enable-download-gsl

    If you do not have Internet access, get the tarball manually, copy
    it to the same directory as configure and run again. See the
    detailed compilation instructions for an explanation.

5.  Run test suite (optional)

        make check

6.  Install the binary system wide (optional)

        sudo make install

To stay up to date, pull and then autogen, configure and make (and
optionally install):

    git pull
    ./autogen.sh; ./configure; make -j4
    sudo make install

  [download]: https://www.seamplex.com/feenox/#download
  [discussion page]: https://github.com/seamplex/feenox/discussions
  [detailed compilation instructions]: compilation.md

Detailed configuration and compilation

The main target and development environment is Debian GNU/Linux,
although it should be possible to compile FeenoX in any free GNU/Linux
variant (and even the in non-free MacOS and/or Windows platforms)
running in virtually any hardware platform. FeenoX can run be run either
in HPC cloud servers or a Raspberry Pi, and almost everything that sits
in the middle.

Following the Unix philosophy discussed in the SDS, FeenoX re-uses a lot
of already-existing high-quality free and open source libraries that
implement a wide variety of mathematical operations. This leads to a
number of dependencies that FeenoX needs in order to implement certain
features.

There is only one dependency that is mandatory, namely GNU GSL
(see sec. 13.4.1.1), which if it not found then FeenoX cannot be
compiled. All other dependencies are optional, meaning that FeenoX can
be compiled but its capabilities will be partially reduced.

As per the SRS, all dependencies have to be available on mainstream
GNU/Linux distributions and have to be free and open source software.
But they can also be compiled from source in case the package
repositories are not available or customized compilation flags are
needed (i.e. optimization or debugging settings).

In particular, PETSc (and SLEPc) also depend on other mathematical
libraries to perform particular operations such as low-level linear
algebra operations. These extra dependencies can be either free (such as
LAPACK) or non-free (such as Intel’s MKL), but there is always at least
one combination of a working setup that involves only free and open
source software which is compatible with FeenoX licensing terms
(GPLv3+). See the documentation of each package for licensing details.

  [Debian GNU/Linux]: https://www.debian.org/
  [45]: SDS.md
  [GNU GSL]: https://www.gnu.org/software/gsl/
  [SRS]: SRS.md
  [46]: https://petsc.org/release/
  [47]: https://slepc.upv.es/
  [LAPACK]: http://www.netlib.org/lapack/
  [Intel’s MKL]: https://www.intel.com/content/www/us/en/developer/tools/oneapi/onemkl.html

Mandatory dependencies

FeenoX has one mandatory dependency for run-time execution and the
standard build toolchain for compilation. It is written in C99 so only a
C compiler is needed, although make is also required. Free and open
source compilers are favored. The usual C compiler is gcc but clang or
Intel’s icc and the newer icx can also be used.

Note that there is no need to have a Fortran nor a C++ compiler to build
FeenoX. They might be needed to build other dependencies (such as PETSc
and its dependencies), but not to compile FeenoX if all the dependencies
are installed from the operating system’s package repositories. In case
the build toolchain is not already installed, do so with

    sudo apt-get install gcc make

If the source is to be fetched from the Git repository then not only is
git needed but also autoconf and automake since the configure script is
not stored in the Git repository but the autogen.sh script that
bootstraps the tree and creates it. So if instead of compiling a source
tarball one wants to clone from GitHub, these packages are also
mandatory:

    sudo apt-get install git automake autoconf

Again, chances are that any existing GNU/Linux box has all these tools
already installed.

  [Git repository]: https://github.com/seamplex/feenox/

The GNU Scientific Library

The only run-time dependency is GNU GSL (not to be confused with
Microsoft GSL). It can be installed with

    sudo apt-get install libgsl-dev

In case this package is not available or you do not have enough
permissions to install system-wide packages, there are two options.

1.  Pass the option --enable-download-gsl to the configure script below.
2.  Manually download, compile and install GNU GSL

If the configure script cannot find both the headers and the actual
library, it will refuse to proceed. Note that the FeenoX binaries
already contain a static version of the GSL so it is not needed to have
it installed in order to run the statically-linked binaries.

  [GNU GSL]: https://www.gnu.org/software/gsl/
  [Microsoft GSL]: https://github.com/microsoft/GSL

Optional dependencies

FeenoX has three optional run-time dependencies. It can be compiled
without any of these, but functionality will be reduced:

-   SUNDIALS provides support for solving systems of ordinary
    differential equations (ODEs) or differential-algebraic equations
    (DAEs). This dependency is needed when running inputs with the
    PHASE_SPACE keyword.

-   PETSc provides support for solving partial differential equations
    (PDEs). This dependency is needed when running inputs with the
    PROBLEM keyword.

-   SLEPc provides support for solving eigen-value problems in partial
    differential equations (PDEs). This dependency is needed for inputs
    with PROBLEM types with eigen-value formulations such as modal and
    neutron_sn.

In absence of all these, FeenoX can still be used to

-   solve general mathematical problems such as the ones to compute the
    Fibonacci sequence or the Logistic map,
-   operate on functions, either algebraically or point-wise
    interpolated such as Computing the derivative of a function as a
    Unix filter
-   read, operate over and write meshes,
-   etc.

These optional dependencies have to be installed separately. There is no
option to have configure to download them as with --enable-download-gsl.
When running the test suite (sec. 13.4.6), those tests that need an
optional dependency which was not found at compile time will be skipped.

  [SUNDIALS]: https://computing.llnl.gov/projects/sundials
  [PETSc]: https://petsc.org/
  [SLEPc47]: https://slepc.upv.es/
  [48]: https://www.seamplex.com/feenox/examples/#the-fibonacci-sequence
  [Logistic map]: https://www.seamplex.com/feenox/examples/#the-logistic-map
  [Computing the derivative of a function as a Unix filter]: https://www.seamplex.com/feenox/examples/#computing-the-derivative-of-a-function-as-a-unix-filter

SUNDIALS

SUNDIALS is a SUite of Nonlinear and DIfferential/ALgebraic equation
Solvers. It is used by FeenoX to solve dynamical systems casted as DAEs
with the keyword PHASE_SPACE, like the Lorenz system.

Install either by doing

    sudo apt-get install libsundials-dev

or by following the instructions in the documentation.

  [SUNDIALS]: https://computing.llnl.gov/projects/sundials
  [PHASE_SPACE]: https://www.seamplex.com/feenox/doc/feenox-manual.html#phase_space
  [the Lorenz system]: https://www.seamplex.com/feenox/examples/#lorenz-attractor-the-one-with-the-butterfly

PETSc

The Portable, Extensible Toolkit for Scientific Computation, pronounced
PET-see (/ˈpɛt-siː/), is a suite of data structures and routines for the
scalable (parallel) solution of scientific applications modeled by
partial differential equations. It is used by FeenoX to solve PDEs with
the keyword PROBLEM, like the NAFEMS LE10 benchmark problem.

Install either by doing

    sudo apt-get install petsc-dev

or by following the instructions in the documentation.

Note that

-   Configuring and compiling PETSc from scratch might be difficult the
    first time. It has a lot of dependencies and options. Read the
    official documentation for a detailed explanation.
-   There is a huge difference in efficiency between using PETSc
    compiled with debugging symbols and with optimization flags. Make
    sure to configure --with-debugging=0 for FeenoX production runs and
    leave the debugging symbols (which is the default) for development
    and debugging only.
-   FeenoX needs PETSc to be configured with real double-precision
    scalars. It will compile but will complain at run-time when using
    complex and/or single or quad-precision scalars.
-   FeenoX honors the PETSC_DIR and PETSC_ARCH environment variables
    when executing configure. If these two do not exist or are empty, it
    will try to use the default system-wide locations (i.e. the
    petsc-dev package).

  [Portable, Extensible Toolkit for Scientific Computation]: (https://petsc.org/)
  [PROBLEM]: https://www.seamplex.com/feenox/doc/feenox-manual.html#problem
  [NAFEMS LE10 benchmark problem]: https://www.seamplex.com/feenox/examples/#nafems-le10-thick-plate-pressure-benchmark
  [49]: https://petsc.org/release/install/

SLEPc

The Scalable Library for Eigenvalue Problem Computations, is a software
library for the solution of large scale sparse eigenvalue problems on
parallel computers. It is used by FeenoX to solve PDEs with the keyword
PROBLEM that need eigen-value computations, such as modal analysis of a
cantilevered beam.

Install either by doing

    sudo apt-get install slepc-dev

or by following the instructions in the documentation.

Note that

-   SLEPc is an extension of PETSc so the latter has to be already
    installed and configured.
-   FeenoX honors the SLEPC_DIR environment variable when executing
    configure. If it does not exist or is empty it will try to use the
    default system-wide locations (i.e. the slepc-dev package).
-   If PETSc was configured with --download-slepc then the SLEPC_DIR
    variable has to be set to the directory inside PETSC_DIR where SLEPc
    was cloned and compiled.

  [Scalable Library for Eigenvalue Problem Computations]: https://slepc.upv.es/
  [PROBLEM]: https://www.seamplex.com/feenox/doc/feenox-manual.html#problem
  [modal analysis of a cantilevered beam]: https://www.seamplex.com/feenox/examples/#five-natural-modes-of-a-cantilevered-wire

FeenoX source code

There are two ways of getting FeenoX’s source code:

1.  Cloning the GitHub repository at https://github.com/seamplex/feenox
2.  Downloading a source tarball from
    https://seamplex.com/feenox/dist/src/

Git repository

The main Git repository is hosted on GitHub at
https://github.com/seamplex/feenox. It is public so it can be cloned
either through HTTPS or SSH without needing any particular credentials.
It can also be forked freely. See the Programming Guide for details
about pull requests and/or write access to the main repository.

Ideally, the main branch should have a usable snapshot. All other
branches can contain code that might not compile or might not run or
might not be tested. If you find a commit in the main branch that does
not pass the tests, please report it in the issue tracker ASAP.

After cloning the repository

    git clone https://github.com/seamplex/feenox

the autogen.sh script has to be called to bootstrap the working tree,
since the configure script is not stored in the repository but created
from configure.ac (which is in the repository) by autogen.sh.

Similarly, after updating the working tree with

    git pull

it is recommended to re-run the autogen.sh script. It will do a
make clean and re-compute the version string.

  [50]: programming.md

Source tarballs

When downloading a source tarball, there is no need to run autogen.sh
since the configure script is already included in the tarball. This
method cannot update the working tree. For each new FeenoX release, the
whole source tarball has to be downloaded again.

Configuration

To create a proper Makefile for the particular architecture,
dependencies and compilation options, the script configure has to be
executed. This procedure follows the GNU Coding Standards.

    ./configure

Without any particular options, configure will check if the mandatory
GNU Scientific Library is available (both its headers and run-time
library). If it is not, then the option --enable-download-gsl can be
used. This option will try to use wget (which should be installed) to
download a source tarball, uncompress, configure and compile it. If
these steps are successful, this GSL will be statically linked into the
resulting FeenoX executable. If there is no internet connection, the
configure script will say that the download failed. In that case, get
the indicated tarball file manually, copy it into the current directory
and re-run ./configure.

The script will also check for the availability of optional
dependencies. At the end of the execution, a summary of what was found
(or not) is printed in the standard output:

    $ ./configure
    [...]
    ## ----------------------- ##
    ## Summary of dependencies ##
    ## ----------------------- ##
      GNU Scientific Library  from system
      SUNDIALS IDA            yes
      PETSc                   yes /usr/lib/petsc 
      SLEPc                   no
    [...]  

If for some reason one of the optional dependencies is available but
FeenoX should not use it, then pass --without-sundials, --without-petsc
and/or --without-slepc as arguments. For example

    $ ./configure --without-sundials --without-petsc
    [...]
    ## ----------------------- ##
    ## Summary of dependencies ##
    ## ----------------------- ##
      GNU Scientific Library  from system
      SUNDIALS                no
      PETSc                   no
      SLEPc                   no
    [...]  

If configure complains about contradicting values from the cached ones,
run autogen.sh again before configure and/or clone/uncompress the source
tarball in a fresh location.

To see all the available options run

    ./configure --help

  [GNU Coding Standards]: https://www.gnu.org/prep/standards/
  [GNU Scientific Library]: https://www.gnu.org/software/gsl/

Source code compilation

After the successful execution of configure, a Makefile is created. To
compile FeenoX, just execute

    make

Compilation should take a dozen of seconds. It can be even sped up by
using the -j option

    make -j8

The binary executable will be located in the src directory but a copy
will be made in the base directory as well. Test it by running without
any arguments

    $ ./feenox
    FeenoX v0.2.14-gbbf48c9
    a free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    usage: feenox [options] inputfile [replacement arguments] [petsc options]

      -h, --help         display options and detailed explanations of command-line usage
      -v, --version      display brief version information and exit
      -V, --versions     display detailed version information

    Run with --help for further explanations.
    $

The -v (or --version) option shows the version and a copyright notice:

    $ ./feenox -v
    FeenoX v0.2.14-gbbf48c9
    a free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    Copyright © 2009--2022 https://seamplex.com/feenox
    GNU General Public License v3+, https://www.gnu.org/licenses/gpl.html. 
    FeenoX is free software: you are free to change and redistribute it.
    There is NO WARRANTY, to the extent permitted by law.
    $

The -V (or --versions) option shows the dates of the last commits, the
compiler options and the versions of the linked libraries:

    $ ./feenox -V
    FeenoX v0.1.24-g6cfe063
    a free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    Last commit date   : Sun Aug 29 11:34:04 2021 -0300
    Build date         : Sun Aug 29 11:44:50 2021 -0300
    Build architecture : linux-gnu x86_64
    Compiler version   : gcc (Debian 10.2.1-6) 10.2.1 20210110
    Compiler expansion : gcc -Wl,-z,relro -I/usr/include/x86_64-linux-gnu/mpich -L/usr/lib/x86_64-linux-gnu -lmpich
    Compiler flags     : -O3
    Builder            : gtheler@chalmers
    GSL version        : 2.6
    SUNDIALS version   : 4.1.0
    PETSc version      : Petsc Release Version 3.14.5, Mar 03, 2021 
    PETSc arch         : 
    PETSc options      : --build=x86_64-linux-gnu --prefix=/usr --includedir=${prefix}/include --mandir=${prefix}/share/man --infodir=${prefix}/share/info --sysconfdir=/etc --localstatedir=/var --with-option-checking=0 --with-silent-rules=0 --libdir=${prefix}/lib/x86_64-linux-gnu --runstatedir=/run --with-maintainer-mode=0 --with-dependency-tracking=0 --with-debugging=0 --shared-library-extension=_real --with-shared-libraries --with-pic=1 --with-cc=mpicc --with-cxx=mpicxx --with-fc=mpif90 --with-cxx-dialect=C++11 --with-opencl=1 --with-blas-lib=-lblas --with-lapack-lib=-llapack --with-scalapack=1 --with-scalapack-lib=-lscalapack-openmpi --with-ptscotch=1 --with-ptscotch-include=/usr/include/scotch --with-ptscotch-lib="-lptesmumps -lptscotch -lptscotcherr" --with-fftw=1 --with-fftw-include="[]" --with-fftw-lib="-lfftw3 -lfftw3_mpi" --with-superlu_dist=1 --with-superlu_dist-include=/usr/include/superlu-dist --with-superlu_dist-lib=-lsuperlu_dist --with-hdf5-include=/usr/include/hdf5/openmpi --with-hdf5-lib="-L/usr/lib/x86_64-linux-gnu/hdf5/openmpi -L/usr/lib/x86_64-linux-gnu/openmpi/lib -lhdf5 -lmpi" --CXX_LINKER_FLAGS=-Wl,--no-as-needed --with-hypre=1 --with-hypre-include=/usr/include/hypre --with-hypre-lib=-lHYPRE_core --with-mumps=1 --with-mumps-include="[]" --with-mumps-lib="-ldmumps -lzmumps -lsmumps -lcmumps -lmumps_common -lpord" --with-suitesparse=1 --with-suitesparse-include=/usr/include/suitesparse --with-suitesparse-lib="-lumfpack -lamd -lcholmod -lklu" --with-superlu=1 --with-superlu-include=/usr/include/superlu --with-superlu-lib=-lsuperlu --prefix=/usr/lib/petscdir/petsc3.14/x86_64-linux-gnu-real --PETSC_ARCH=x86_64-linux-gnu-real CFLAGS="-g -O2 -ffile-prefix-map=/build/petsc-pVufYp/petsc-3.14.5+dfsg1=. -flto=auto -ffat-lto-objects -fstack-protector-strong -Wformat -Werror=format-security -fPIC" CXXFLAGS="-g -O2 -ffile-prefix-map=/build/petsc-pVufYp/petsc-3.14.5+dfsg1=. -flto=auto -ffat-lto-objects -fstack-protector-strong -Wformat -Werror=format-security -fPIC" FCFLAGS="-g -O2 -ffile-prefix-map=/build/petsc-pVufYp/petsc-3.14.5+dfsg1=. -flto=auto -ffat-lto-objects -fstack-protector-strong -fPIC -ffree-line-length-0" FFLAGS="-g -O2 -ffile-prefix-map=/build/petsc-pVufYp/petsc-3.14.5+dfsg1=. -flto=auto -ffat-lto-objects -fstack-protector-strong -fPIC -ffree-line-length-0" CPPFLAGS="-Wdate-time -D_FORTIFY_SOURCE=2" LDFLAGS="-Wl,-Bsymbolic-functions -flto=auto -Wl,-z,relro -fPIC" MAKEFLAGS=w
    SLEPc version      : SLEPc Release Version 3.14.2, Feb 01, 2021
    $

Test suite

The test directory contains a set of test cases whose output is known so
that unintended regressions can be detected quickly (see the programming
guide for more information). The test suite ought to be run after each
modification in FeenoX’s source code. It consists of a set of scripts
and input files needed to solve dozens of cases. The output of each
execution is compared to a reference solution. In case the output does
not match the reference, the test suite fails.

After compiling FeenoX as explained in sec. 13.4.5, the test suite can
be run with make check. Ideally everything should be green meaning the
tests passed:

    $ make check
    Making check in src
    make[1]: Entering directory '/home/gtheler/codigos/feenox/src'
    make[1]: Nothing to be done for 'check'.
    make[1]: Leaving directory '/home/gtheler/codigos/feenox/src'
    make[1]: Entering directory '/home/gtheler/codigos/feenox'
    cp -r src/feenox .
    make  check-TESTS
    make[2]: Entering directory '/home/gtheler/codigos/feenox'
    make[3]: Entering directory '/home/gtheler/codigos/feenox'
    XFAIL: tests/abort.sh
    PASS: tests/algebraic_expr.sh
    PASS: tests/beam-modal.sh
    PASS: tests/beam-ortho.sh
    PASS: tests/builtin.sh
    PASS: tests/cylinder-traction-force.sh
    PASS: tests/default_argument_value.sh
    PASS: tests/expressions_constants.sh
    PASS: tests/expressions_variables.sh
    PASS: tests/expressions_functions.sh
    PASS: tests/exp.sh
    PASS: tests/i-beam-euler-bernoulli.sh
    PASS: tests/iaea-pwr.sh
    PASS: tests/iterative.sh
    PASS: tests/fit.sh
    PASS: tests/function_algebraic.sh
    PASS: tests/function_data.sh
    PASS: tests/function_file.sh
    PASS: tests/function_vectors.sh
    PASS: tests/integral.sh
    PASS: tests/laplace2d.sh
    PASS: tests/materials.sh
    PASS: tests/mesh.sh
    PASS: tests/moment-of-inertia.sh
    PASS: tests/nafems-le1.sh
    PASS: tests/nafems-le10.sh
    PASS: tests/nafems-le11.sh
    PASS: tests/nafems-t1-4.sh
    PASS: tests/nafems-t2-3.sh
    PASS: tests/neutron_diffusion_src.sh
    PASS: tests/neutron_diffusion_keff.sh
    PASS: tests/parallelepiped.sh
    PASS: tests/point-kinetics.sh
    PASS: tests/print.sh
    PASS: tests/thermal-1d.sh
    PASS: tests/thermal-2d.sh
    PASS: tests/trig.sh
    PASS: tests/two-cubes-isotropic.sh
    PASS: tests/two-cubes-orthotropic.sh
    PASS: tests/vector.sh
    XFAIL: tests/xfail-few-properties-ortho-young.sh
    XFAIL: tests/xfail-few-properties-ortho-poisson.sh
    XFAIL: tests/xfail-few-properties-ortho-shear.sh
    ============================================================================
    Testsuite summary for feenox v0.2.6-g3237ce9
    ============================================================================
    # TOTAL: 43
    # PASS:  39
    # SKIP:  0
    # XFAIL: 4
    # FAIL:  0
    # XPASS: 0
    # ERROR: 0
    ============================================================================
    make[3]: Leaving directory '/home/gtheler/codigos/feenox'
    make[2]: Leaving directory '/home/gtheler/codigos/feenox'
    make[1]: Leaving directory '/home/gtheler/codigos/feenox'
    $

The XFAIL result means that those cases are expected to fail (they are
there to test if FeenoX can handle errors). Failure would mean they
passed. In case FeenoX was not compiled with any optional dependency,
the corresponding tests will be skipped. Skipped tests do not mean any
failure, but that the compiled FeenoX executable does not have the full
capabilities. For example, when configuring with
./configure --without-petsc (but with SUNDIALS), the test suite output
should be a mixture of green and blue:

    $ ./configure --without-petsc
    [...]
    configure: creating ./src/version.h
    ## ----------------------- ##
    ## Summary of dependencies ##
    ## ----------------------- ##
      GNU Scientific Library  from system
      SUNDIALS                yes
      PETSc                   no
      SLEPc                   no
      Compiler                gcc
    checking that generated files are newer than configure... done
    configure: creating ./config.status
    config.status: creating Makefile
    config.status: creating src/Makefile
    config.status: creating doc/Makefile
    config.status: executing depfiles commands
    $ make
    [...]
    $ make check
    Making check in src
    make[1]: Entering directory '/home/gtheler/codigos/feenox/src'
    make[1]: Nothing to be done for 'check'.
    make[1]: Leaving directory '/home/gtheler/codigos/feenox/src'
    make[1]: Entering directory '/home/gtheler/codigos/feenox'
    cp -r src/feenox .
    make  check-TESTS
    make[2]: Entering directory '/home/gtheler/codigos/feenox'
    make[3]: Entering directory '/home/gtheler/codigos/feenox'
    XFAIL: tests/abort.sh
    PASS: tests/algebraic_expr.sh
    SKIP: tests/beam-modal.sh
    SKIP: tests/beam-ortho.sh
    PASS: tests/builtin.sh
    SKIP: tests/cylinder-traction-force.sh
    PASS: tests/default_argument_value.sh
    PASS: tests/expressions_constants.sh
    PASS: tests/expressions_variables.sh
    PASS: tests/expressions_functions.sh
    PASS: tests/exp.sh
    SKIP: tests/i-beam-euler-bernoulli.sh
    SKIP: tests/iaea-pwr.sh
    PASS: tests/iterative.sh
    PASS: tests/fit.sh
    PASS: tests/function_algebraic.sh
    PASS: tests/function_data.sh
    PASS: tests/function_file.sh
    PASS: tests/function_vectors.sh
    PASS: tests/integral.sh
    SKIP: tests/laplace2d.sh
    PASS: tests/materials.sh
    PASS: tests/mesh.sh
    PASS: tests/moment-of-inertia.sh
    SKIP: tests/nafems-le1.sh
    SKIP: tests/nafems-le10.sh
    SKIP: tests/nafems-le11.sh
    SKIP: tests/nafems-t1-4.sh
    SKIP: tests/nafems-t2-3.sh
    SKIP: tests/neutron_diffusion_src.sh
    SKIP: tests/neutron_diffusion_keff.sh
    SKIP: tests/parallelepiped.sh
    PASS: tests/point-kinetics.sh
    PASS: tests/print.sh
    SKIP: tests/thermal-1d.sh
    SKIP: tests/thermal-2d.sh
    PASS: tests/trig.sh
    SKIP: tests/two-cubes-isotropic.sh
    SKIP: tests/two-cubes-orthotropic.sh
    PASS: tests/vector.sh
    SKIP: tests/xfail-few-properties-ortho-young.sh
    SKIP: tests/xfail-few-properties-ortho-poisson.sh
    SKIP: tests/xfail-few-properties-ortho-shear.sh
    ============================================================================
    Testsuite summary for feenox v0.2.6-g3237ce9
    ============================================================================
    # TOTAL: 43
    # PASS:  21
    # SKIP:  21
    # XFAIL: 1
    # FAIL:  0
    # XPASS: 0
    # ERROR: 0
    ============================================================================
    make[3]: Leaving directory '/home/gtheler/codigos/feenox'
    make[2]: Leaving directory '/home/gtheler/codigos/feenox'
    make[1]: Leaving directory '/home/gtheler/codigos/feenox'
    $

To illustrate how regressions can be detected, let us add a bug
deliberately and re-run the test suite.

Edit the source file that contains the shape functions of the
second-order tetrahedra src/mesh/tet10.c, find the function
feenox_mesh_tet10_h() and randomly change a sign, i.e. replace

          return t*(2*t-1);

with

          return t*(2*t+1);

Save, recompile, and re-run the test suite to obtain some red:

    $ git diff src/mesh/
    diff --git a/src/mesh/tet10.c b/src/mesh/tet10.c
    index 72bc838..293c290 100644
    --- a/src/mesh/tet10.c
    +++ b/src/mesh/tet10.c
    @@ -227,7 +227,7 @@ double feenox_mesh_tet10_h(int j, double *vec_r) {
           return s*(2*s-1);
           break;
         case 3:
    -      return t*(2*t-1);
    +      return t*(2*t+1);
           break;
           
         case 4:
    $ make
    [...]
    $ make check
    Making check in src
    make[1]: Entering directory '/home/gtheler/codigos/feenox/src'
    make[1]: Nothing to be done for 'check'.
    make[1]: Leaving directory '/home/gtheler/codigos/feenox/src'
    make[1]: Entering directory '/home/gtheler/codigos/feenox'
    cp -r src/feenox .
    make  check-TESTS
    make[2]: Entering directory '/home/gtheler/codigos/feenox'
    make[3]: Entering directory '/home/gtheler/codigos/feenox'
    XFAIL: tests/abort.sh
    PASS: tests/algebraic_expr.sh
    FAIL: tests/beam-modal.sh
    PASS: tests/beam-ortho.sh
    PASS: tests/builtin.sh
    PASS: tests/cylinder-traction-force.sh
    PASS: tests/default_argument_value.sh
    PASS: tests/expressions_constants.sh
    PASS: tests/expressions_variables.sh
    PASS: tests/expressions_functions.sh
    PASS: tests/exp.sh
    PASS: tests/i-beam-euler-bernoulli.sh
    PASS: tests/iaea-pwr.sh
    PASS: tests/iterative.sh
    PASS: tests/fit.sh
    PASS: tests/function_algebraic.sh
    PASS: tests/function_data.sh
    PASS: tests/function_file.sh
    PASS: tests/function_vectors.sh
    PASS: tests/integral.sh
    PASS: tests/laplace2d.sh
    PASS: tests/materials.sh
    PASS: tests/mesh.sh
    PASS: tests/moment-of-inertia.sh
    PASS: tests/nafems-le1.sh
    FAIL: tests/nafems-le10.sh
    FAIL: tests/nafems-le11.sh
    PASS: tests/nafems-t1-4.sh
    PASS: tests/nafems-t2-3.sh
    PASS: tests/neutron_diffusion_src.sh
    PASS: tests/neutron_diffusion_keff.sh
    FAIL: tests/parallelepiped.sh
    PASS: tests/point-kinetics.sh
    PASS: tests/print.sh
    PASS: tests/thermal-1d.sh
    PASS: tests/thermal-2d.sh
    PASS: tests/trig.sh
    PASS: tests/two-cubes-isotropic.sh
    PASS: tests/two-cubes-orthotropic.sh
    PASS: tests/vector.sh
    XFAIL: tests/xfail-few-properties-ortho-young.sh
    XFAIL: tests/xfail-few-properties-ortho-poisson.sh
    XFAIL: tests/xfail-few-properties-ortho-shear.sh
    ============================================================================
    Testsuite summary for feenox v0.2.6-g3237ce9
    ============================================================================
    # TOTAL: 43
    # PASS:  35
    # SKIP:  0
    # XFAIL: 4
    # FAIL:  4
    # XPASS: 0
    # ERROR: 0
    ============================================================================
    See ./test-suite.log
    Please report to jeremy@seamplex.com
    ============================================================================
    make[3]: *** [Makefile:1152: test-suite.log] Error 1
    make[3]: Leaving directory '/home/gtheler/codigos/feenox'
    make[2]: *** [Makefile:1260: check-TESTS] Error 2
    make[2]: Leaving directory '/home/gtheler/codigos/feenox'
    make[1]: *** [Makefile:1791: check-am] Error 2
    make[1]: Leaving directory '/home/gtheler/codigos/feenox'
    make: *** [Makefile:1037: check-recursive] Error 1
    $

  [test]: https://github.com/seamplex/feenox/tree/main/tests
  [programming guide50]: programming.md

Installation

To be able to execute FeenoX from any directory, the binary has to be
copied to a directory available in the PATH environment variable. If you
have root access, the easiest and cleanest way of doing this is by
calling make install with sudo or su:

    $ sudo make install
    Making install in src
    make[1]: Entering directory '/home/gtheler/codigos/feenox/src'
    gmake[2]: Entering directory '/home/gtheler/codigos/feenox/src'
     /usr/bin/mkdir -p '/usr/local/bin'
      /usr/bin/install -c feenox '/usr/local/bin'
    gmake[2]: Nothing to be done for 'install-data-am'.
    gmake[2]: Leaving directory '/home/gtheler/codigos/feenox/src'
    make[1]: Leaving directory '/home/gtheler/codigos/feenox/src'
    make[1]: Entering directory '/home/gtheler/codigos/feenox'
    cp -r src/feenox .
    make[2]: Entering directory '/home/gtheler/codigos/feenox'
    make[2]: Nothing to be done for 'install-exec-am'.
    make[2]: Nothing to be done for 'install-data-am'.
    make[2]: Leaving directory '/home/gtheler/codigos/feenox'
    make[1]: Leaving directory '/home/gtheler/codigos/feenox'
    $

If you do not have root access or do not want to populate
/usr/local/bin, you can either

-   Configure with a different prefix (not covered here), or

-   Copy (or symlink) the feenox executable to $HOME/bin:

        mkdir -p ${HOME}/bin
        cp feenox ${HOME}/bin

    If you plan to regularly update FeenoX (which you should), you might
    want to symlink instead of copy so you do not need to update the
    binary in $HOME/bin each time you recompile:

        mkdir -p ${HOME}/bin
        ln -sf feenox ${HOME}/bin

Check that FeenoX is now available from any directory (note the command
is feenox and not ./feenox):

    $ cd
    $ feenox -v
    FeenoX v0.2.14-gbbf48c9
    a free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    Copyright © 2009--2022 https://seamplex.com/feenox
    GNU General Public License v3+, https://www.gnu.org/licenses/gpl.html. 
    FeenoX is free software: you are free to change and redistribute it.
    There is NO WARRANTY, to the extent permitted by law.
    $

If it is not and you went through the $HOME/bin path, make sure it is in
the PATH (pun). Add

    export PATH=${PATH}:${HOME}/bin

to your .bashrc in your home directory and re-login.

Advanced settings

Compiling with debug symbols

By default the C flags are -O3, without debugging. To add the -g flag,
just use CFLAGS when configuring:

    ./configure CFLAGS="-g -O0"

Using a different compiler

FeenoX uses the CC environment variable to set the compiler. So
configure like

    export CC=clang; ./configure

Note that the CC variable has to be exported and not passed to
configure. That is to say, don’t configure like

    ./configure CC=clang

Mind also the following environment variables when using MPI-enabled
PETSc:

-   MPICH_CC
-   OMPI_CC
-   I_MPI_CC

Depending on how your system is configured, this last command might show
clang but not actually use it. The FeenoX executable will show the
configured compiler and flags when invoked with the --versions option:

    $ feenox --versions
    FeenoX v0.2.14-gbbf48c9
    a free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    Last commit date   : Sat Feb 12 15:35:05 2022 -0300
    Build date         : Sat Feb 12 15:35:44 2022 -0300
    Build architecture : linux-gnu x86_64
    Compiler version   : gcc (Debian 10.2.1-6) 10.2.1 20210110
    Compiler expansion : gcc -Wl,-z,relro -I/usr/include/x86_64-linux-gnu/mpich -L/usr/lib/x86_64-linux-gnu -lmpich
    Compiler flags     : -O3
    Builder            : gtheler@tom
    GSL version        : 2.6
    SUNDIALS version   : 5.7.0
    PETSc version      : Petsc Release Version 3.16.3, Jan 05, 2022 
    PETSc arch         : arch-linux-c-debug
    PETSc options      : --download-eigen --download-hdf5 --download-hypre --download-metis --download-mumps --download-parmetis --download-pragmatic --download-scalapack
    SLEPc version      : SLEPc Release Version 3.16.1, Nov 17, 2021
    $

You can check which compiler was actually used by analyzing the feenox
binary as

    $ objdump -s --section .comment ./feenox 

    ./feenox:     file format elf64-x86-64

    Contents of section .comment:
     0000 4743433a 20284465 6269616e 2031322e  GCC: (Debian 12.
     0010 322e302d 31342920 31322e32 2e300044  2.0-14) 12.2.0.D
     0020 65626961 6e20636c 616e6720 76657273  ebian clang vers
     0030 696f6e20 31342e30 2e3600             ion 14.0.6.     
    $ 

It should be noted that the MPI implementation used to compile FeenoX
has to match the one used to compile PETSc. Therefore, if you compiled
PETSc on your own, it is up to you to ensure MPI compatibility. If you
are using PETSc as provided by your distribution’s repositories, you
will have to find out which one was used (it is usually OpenMPI) and use
the same one when compiling FeenoX. FeenoX has been tested using PETSc
compiled with

-   MPICH
-   OpenMPI
-   Intel MPI

Compiling PETSc

Particular explanation for FeenoX is to be done. For now, follow the
general explanation from PETSc’s website.

    export PETSC_DIR=$PWD
    export PETSC_ARCH=arch-linux-c-opt
    ./configure --with-debugging=0 --download-mumps --download-scalapack --with-cxx=0 --COPTFLAGS=-O3 --FOPTFLAGS=-O3 

    export PETSC_DIR=$PWD
    ./configure --with-debugging=0 --with-openmp=0 --with-x=0 --with-cxx=0 --COPTFLAGS=-O3 --FOPTFLAGS=-O3 
    make PETSC_DIR=/home/ubuntu/reflex-deps/petsc-3.17.2 PETSC_ARCH=arch-linux-c-opt all

  [general explanation from PETSc’s website]: https://petsc.org/release/install/

Appendix: Inputs for solving LE10 with other FEA programs

This appendix illustrates the differences in the input file formats used
by FeenoX and the ones used by other open source finite-element solvers.
The problem being solved is the NAFEMS LE10 benchmark, first discussed
in sec. 1.2:

    # NAFEMS Benchmark LE-10: thick plate pressure
    PROBLEM mechanical DIMENSIONS 3
    READ_MESH nafems-le10.msh   # mesh in millimeters

    # LOADING: uniform normal pressure on the upper surface
    BC upper    p=1      # 1 Mpa

    # BOUNDARY CONDITIONS:
    BC DCD'C'   v=0      # Face DCD'C' zero y-displacement
    BC ABA'B'   u=0      # Face ABA'B' zero x-displacement
    BC BCB'C'   u=0 v=0  # Face BCB'C' x and y displ. fixed
    BC midplane w=0      #  z displacements fixed along mid-plane

    # MATERIAL PROPERTIES: isotropic single-material properties
    E = 210e3   # Young modulus in MPa
    nu = 0.3    # Poisson's ratio

    SOLVE_PROBLEM   # solve!

    # print the direct stress y at D (and nothing more)
    PRINT "σ_y @ D = " sigmay(2000,0,300) "MPa"

See the following URL and its links for further details about solving
this problem with the other codes:
https://cofea.readthedocs.io/en/latest/benchmarks/004-eliptic-membrane/tested-codes.html

  [NAFEMS LE10 benchmark]: https://www.seamplex.com/feenox/examples/#nafems-le10-thick-plate-pressure-benchmark

CalculiX

    ** Mesh ++++++++++++++++++++++++++++++++++++++++++++++++++++

    *INCLUDE, INPUT=Mesh/fine-lin-hex.inp		# Path to mesh for ccx solver

    ** Mesh ++++++++++++++++++++++++++++++++++++++++++++++++++++

    *MATERIAL, NAME=Steel				# Defining a material
    *DENSITY
     7800						# Defining a density
    *ELASTIC,
    2.1e11, 0.3					# Defining Young modulus and Poisson's ratio

    ** Sections ++++++++++++++++++++++++++++++++++++++++++++++++

    *SOLID SECTION, ELSET=ELIPSE, MATERIAL=Steel 	# Assigning material and plane stress elements
    0.1,						# to the elements sets in mesh and adding thickness

    ** Steps +++++++++++++++++++++++++++++++++++++++++++++++++++

    *STEP						# Begin of analysis
    *STATIC, SOLVER=SPOOLES				# Selection of elastic analysis

    ** Field outputs +++++++++++++++++++++++++++++++++++++++++++

    *EL FILE					# Commands responsible for saving results
    E, S
    *NODE FILE
    U

    ** Boundary conditions +++++++++++++++++++++++++++++++++++++

    *BOUNDARY,					# Applying translation = 0 on desired nodes
    AB,1,1,0
    *BOUNDARY
    CD,2,2,0

    ** Boundary conditions(adding pressure) ++++++++++++++++++++

    *DLOAD
    *INCLUDE, INPUT=Pressure/fine-lin-hex.dlo

    ** End step ++++++++++++++++++++++++++++++++++++++++++++++++

    *END STEP					# End on analysis

Code Aster

    mesh = LIRE_MAILLAGE(identifier='0:1',				# Reading a mesh
                         FORMAT='IDEAS',
                         UNITE=80)

    model = AFFE_MODELE(identifier='1:1',				# Assignig plane stress
                        AFFE=_F(MODELISATION=('C_PLAN', ),		# elements to mesh
                                PHENOMENE='MECANIQUE',
                                TOUT='OUI'),
                        MAILLAGE=mesh)

    mater = DEFI_MATERIAU(identifier='2:1',				# Defining elastic material
                          ELAS=_F(E=210000000000.0,
                                  NU=0.3))

    materfl = AFFE_MATERIAU(identifier='3:1',			# Assigning material to model
                            AFFE=_F(MATER=(mater, ),
                                    TOUT='OUI'),
                            MODELE=model)

    mecabc = AFFE_CHAR_MECA(identifier='4:1',			# Applying boundary conditions
                            DDL_IMPO=(_F(DX=0.0,			# displacement = 0
                                         GROUP_MA=('AB', )),	# to the selected group of elements
                                      _F(DY=0.0,
                                         GROUP_MA=('CD', ))),
                            MODELE=model)

    mecach = AFFE_CHAR_MECA(identifier='5:1',			# Applying pressure to the
                            MODELE=model,				# group of elements
                            PRES_REP=_F(GROUP_MA=('BC', ),
                                        PRES=-10000000.0))

    result = MECA_STATIQUE(identifier='6:1',			# Defining the results of
                           CHAM_MATER=materfl,			# simulation
                           EXCIT=(_F(CHARGE=mecabc),
                                  _F(CHARGE=mecach)),
                           MODELE=model)

    SYY = CALC_CHAMP(identifier='7:1',				# Calculating stresses in
                     CHAM_MATER=materfl,				# computed domain
                     CONTRAINTE=('SIGM_NOEU', ),
                     MODELE=model,
                     RESULTAT=result)

    IMPR_RESU(identifier='8:1',					# Saving the results
              FORMAT='MED',	  
              RESU=(_F(RESULTAT=result),
                    _F(RESULTAT=SYY)),
              UNITE=80)

    FIN()

Elmer

    Header
      CHECK KEYWORDS Warn
      Mesh DB "." "."				# Path to the mesh
      Include Path ""
      Results Directory ""				# Path to results directory
    End

    Simulation					# Settings and constants for simulation
      Max Output Level = 5
      Coordinate System = Cartesian
      Coordinate Mapping(3) = 1 2 3
      Simulation Type = Steady state
      Steady State Max Iterations = 1
      Output Intervals = 1
      Timestepping Method = BDF
      BDF Order = 1
      Solver Input File = case.sif
      Post File = case.vtu
    End

    Constants
      Gravity(4) = 0 -1 0 9.82
      Stefan Boltzmann = 5.67e-08
      Permittivity of Vacuum = 8.8542e-12
      Boltzmann Constant = 1.3807e-23
      Unit Charge = 1.602e-19
    End

    Body 1						# Assigning the material and equations to the mesh
      Target Bodies(1) = 10
      Name = "Body Property 1"
      Equation = 1
      Material = 1
    End

    Solver 2					# Solver settings
      Equation = Linear elasticity
      Procedure = "StressSolve" "StressSolver"
      Calculate Stresses = True
      Variable = -dofs 2 Displacement
      Exec Solver = Always
      Stabilize = True
      Bubbles = False
      Lumped Mass Matrix = False
      Optimize Bandwidth = True
      Steady State Convergence Tolerance = 1.0e-5
      Nonlinear System Convergence Tolerance = 1.0e-7
      Nonlinear System Max Iterations = 20
      Nonlinear System Newton After Iterations = 3
      Nonlinear System Newton After Tolerance = 1.0e-3
      Nonlinear System Relaxation Factor = 1
      Linear System Solver = Direct
      Linear System Direct Method = Umfpack
    End

    Solver 1					# Saving the results from node at point D
      Equation = SaveScalars
      Save Points = 26
      Procedure = "SaveData" "SaveScalars"
      Filename = file.dat
      Exec Solver = After Simulation
    End

    Equation 1					# Setting active solvers
      Name = "STRESS"
      Calculate Stresses = True
      Plane Stress = True				# Turning on plane stress simulation
      Active Solvers(1) = 2
    End

    Equation 2
      Name = "DATA"
      Active Solvers(1) = 1
    End

    Material 1					# Defining the material
      Name = "STEEL"
      Poisson ratio = 0.3
      Porosity Model = Always saturated
      Youngs modulus = 2.1e11
    End

    Boundary Condition 1				# Applying the boundary conditions
      Target Boundaries(1) = 12
      Name = "AB"
      Displacement 1 = 0
    End

    Boundary Condition 2
      Target Boundaries(1) = 13
      Name = "CD"
      Displacement 2 = 0
    End

    Boundary Condition 3
      Target Boundaries(1) = 14
      Name = "BC"
      Normal Force = 10e6
    End

Appendix: Downloading and compiling FeenoX

Binary executables

Browse to https://www.seamplex.com/feenox/dist/ and check what the
latest version for your architecture is. Then do

    feenox_version=1.0.8
    wget -c https://www.seamplex.com/feenox/dist/linux/feenox-v${feenox_version}-linux-amd64.tar.gz
    tar xzf feenox-v${feenox_version}-linux-amd64.tar.gz
    sudo cp feenox-v${feenox_version}-linux-amd64/bin/feenox /usr/local/bin

You’ll have the binary under bin and examples, documentation, manpage,
etc under share. Copy bin/feenox into somewhere in the PATH and that
will be it. If you are root, do

    sudo cp feenox-v${feenox_version}-linux-amd64/bin/feenox /usr/local/bin

If you are not root, the usual way is to create a directory $HOME/bin
and add it to your local path. If you have not done it already, do

    mkdir -p $HOME/bin
    echo 'expot PATH=$PATH:$HOME/bin' >> .bashrc

Then finally copy bin/feenox to $HOME/bin

    cp feenox-v${feenox_version}-linux-amd64/bin/feenox $HOME/bin

Check if it works by calling feenox from any directory (you might need
to open a new terminal so .bashrc is re-read):

    $ feenox
    FeenoX v1.0.8-g731ca5d 
    a cloud-first free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    usage: ./feenox [options] inputfile [replacement arguments] [petsc options]

      -h, --help         display options and detailed explanations of command-line usage
      -v, --version      display brief version information and exit
      -V, --versions     display detailed version information
      -c, --check        validates if the input file is sane or not
      --pdes             list the types of PROBLEMs that FeenoX can solve, one per line
      --elements_info    output a document with information about the supported element types
      --linear           force FeenoX to solve the PDE problem as linear
      --non-linear       force FeenoX to solve the PDE problem as non-linear

    Run with --help for further explanations.
    $ 

Source tarballs

To compile the source tarball, proceed as follows. This procedure does
not need git nor autoconf but a new tarball has to be downloaded each
time there is a new FeenoX version.

1.  Install mandatory dependencies

        sudo apt-get update
        sudo apt-get install gcc make libgsl-dev

    If you cannot install libgsl-dev, you can have the configure script
    to download and compile it for you. See point 4 below.

2.  Install optional dependencies (of course these are optional but
    recommended)

        sudo apt-get install libsundials-dev petsc-dev slepc-dev

3.  Download and un-compress FeenoX source tarball. Browse to
    https://www.seamplex.com/feenox/dist/src/ and pick the latest
    version:

        wget https://www.seamplex.com/feenox/dist/src/feenox-v0.1.66-g1c4b17b.tar.gz
        tar xvzf feenox-v0.1.66-g1c4b17b.tar.gz

4.  Configure, compile & make

        cd feenox-v0.1.66-g1c4b17b
        ./configure
        make -j4

    If you cannot (or do not want) to use libgsl-dev from a package
    repository, call configure with --enable-download-gsl:

        ./configure --enable-download-gsl

    If you do not have Internet access, get the tarball manually, copy
    it to the same directory as configure and run again.

5.  Run test suite (optional)

        make check

6.  Install the binary system wide (optional)

        sudo make install

Git repository

To compile the Git repository, proceed as follows. This procedure does
need git and autoconf but new versions can be pulled and recompiled
easily. If something goes wrong and you get an error, do not hesitate to
ask in FeenoX’s discussion page.

1.  Install mandatory dependencies

        sudo apt-get update
        sudo apt-get install git build-essential make automake autoconf libgsl-dev

    If you cannot install libgsl-dev but still have git and the build
    toolchain, you can have the configure script to download and compile
    it for you. See point 4 below.

2.  Install optional dependencies (of course these are optional but
    recommended)

        sudo apt-get install libsundials-dev petsc-dev slepc-dev

3.  Clone Github repository

        git clone https://github.com/seamplex/feenox

4.  Bootstrap, configure, compile & make

        cd feenox
        ./autogen.sh
        ./configure
        make -j4

    If you cannot (or do not want to) use libgsl-dev from a package
    repository, call configure with --enable-download-gsl:

        ./configure --enable-download-gsl

    If you do not have Internet access, get the tarball manually, copy
    it to the same directory as configure and run again. See the
    detailed compilation instructions for an explanation.

5.  Run test suite (optional)

        make check

6.  Install the binary system wide (optional)

        sudo make install

To stay up to date, pull and then autogen, configure and make (and
optionally install):

    git pull
    ./autogen.sh; ./configure; make -j4
    sudo make install

  [discussion page]: https://github.com/seamplex/feenox/discussions
  [detailed compilation instructions]: compilation.md

Appendix: Rules of Unix philosophy

In 1978, Doug McIlroy—the inventor of Unix pipes and one of the founders
of the Unix tradition—stated:

i.  Make each program do one thing well. To do a new job, build afresh
    rather than complicate old programs by adding new features.

ii. Expect the output of every program to become the input to another,
    as yet unknown, program. Don’t clutter output with extraneous
    information. Avoid stringently columnar or binary input formats.
    Don’t insist on interactive input.

iii. Design and build software, even operating systems, to be tried
     early, ideally within weeks. Don’t hesitate to throw away the
     clumsy parts and rebuild them.

iv. Use tools in preference to unskilled help to lighten a programming
    task, even if you have to detour to build the tools and expect to
    throw some of them out after you’ve finished using them.

He later summarized it this way:

  This is the Unix philosophy: Write programs that do one thing and do
  it well. Write programs to work together. Write programs to handle
  text streams, because that is a universal interface.

FeenoX explicitly followed the above ideas from scratch, especially the
for sentences in bullet ii. It is even, like Unix itself, a third-system
effect where clumsy parts of previous attempts were thrown away and
rebuilt from scratch. The following sections explain how each of the
seventeen rules was taken into account when designing and implementing
FeenoX.

Rule of Modularity

  Developers should build a program out of simple parts connected by
  well defined interfaces, so problems are local, and parts of the
  program can be replaced in future versions to support new features.
  This rule aims to save time on debugging code that is complex, long,
  and unreadable.

FeenoX is designed to be as lightweight as possible. On the one hand, it
relies on third-party high-quality libraries to do the heavy
mathematical weightlifting such as

-   GNU Scientific Library for general mathematics,
-   SUNDIALS IDA for ODEs and DAEs,
-   PETSc for linear, non-linear and transient PDEs, and
-   SLEPc for PDEs involving eigen problems

because these libraries were written by professional programmers using
algorithms designed by professional mathematicians. Yet-to-be-discovered
improved mathematical schemes and/or coding algorithms can be eventually
used by FeenoX by just updating those dependencies, which for sure will
keep their well-defined interfaces (because they are programmed by
professional programmers).

Moreover, the extensibility feature (sec. 11.17) of having each PDE in
separate directories which can be added or removed at compile time
without changing any line of the source code goes into this direction as
well. Relying of C function pointers allows (in principle) to replace
these “virtual” methods with other ones using the same interface.

  Note that our (human) languages in general and words in particular
  shape and limit the way we think. Fortran’s concept of “modules” is
  not the same as Unix’s concept of “modularity.” I wish two different
  words had been used.

  [GNU Scientific Library]: https://www.gnu.org/software/gsl/
  [SUNDIALS IDA]: https://computing.llnl.gov/projects/sundials/ida
  [PETSc]: https://petsc.org/
  [SLEPc]: http://slepc.upv.es/

Rule of Clarity

  Developers should write programs as if the most important
  communication is to the developer who will read and maintain the
  program, rather than the computer. This rule aims to make code as
  readable and comprehensible as possible for whoever works on the code
  in the future.

Of course there might be a confirmation bias in this section because
every programmer thinks their code is clear (and everybody else’s is
not). But the first design decision to fulfill this rule is the
programming language: there is little change to fulfill it with Fortran.
One might argue that C++ can be clearer than C in some points, but for
the vast majority of the source code they are equally clear. Besides, C
is far simpler than C++ (see rule of simplicity).

The second decision is not about the FeenoX source code but about FeenoX
inputs: clear human-readable input files without any extra unneeded
computer-level nonsense. The two illustrative cases are the NAFEMS LE10
& LE11 benchmarks, where there is a clear one-to-one correspondence
between the “engineering” formulation and the input file FeenoX
understands.

  [LE10]: https://www.seamplex.com/feenox/examples/mechanical.html#nafems-le10-thick-plate-pressure-benchmark
  [LE11]: https://www.seamplex.com/feenox/examples/mechanical.html#nafems-le11-solid-cylindertapersphere-temperature-benchmark

Rule of Composition

  Developers should write programs that can communicate easily with
  other programs. This rule aims to allow developers to break down
  projects into small, simple programs rather than overly complex
  monolithic programs.

Previous designs of FeenoX’ predecessors used to include instructions to
perform parametric sweeps( and even optimization loops), non-trivial
macro expansions using M4 and even execution of arbitrary shell
commands. These non-trivial operations were removed from FeenoX to focus
on the rule of composition, paying especially attention to easing the
inclusion of calling the feenox binary from shell scripts, enforcing the
composition with other Unix-like tools. Emphasis has been put on adding
flexibility to programmatic generation of input files (see also rule of
generation in sec. 11.14) and the handling and expansion of command-line
arguments to increase the composition with other programs.

Moreover, the output is 100% controlled by the user at run-time so it
can be tailored to suit any other programs’ input needs as well. An
illustrative example is creating professional-looking tables with
results using AWK & LaTeX.

  [creating professional-looking tables with results using AWK & LaTeX]:
    https://www.seamplex.com/feenox/doc/sds.html#sec:interoperability

Rule of Separation

  Developers should separate the mechanisms of the programs from the
  policies of the programs; one method is to divide a program into a
  front-end interface and a back-end engine with which that interface
  communicates. This rule aims to prevent bug introduction by allowing
  policies to be changed with minimum likelihood of destabilizing
  operational mechanisms.

FeenoX relies of the rule of separation (which also links to the next
two rules of simplicity and parsimony) from the very beginning of its
design phase. It was explicitly designed as a glue layer between a
mesher like Gmsh and a post-processor like Gnuplot, Gmsh or Paraview.
This way, not only flexibility and diversity (see #sec:unix-diversity)
can be boosted, but also technological changes can be embraced with
little or no effort. For example, CAEplex provides a web-based platform
for performing thermo-mechanical analysis on the cloud running from the
browser. Had FeenoX been designed as a traditional desktop-GUI program,
this would have been impossible. If in the future CAD/CAE interfaces
migrate into virtual and/or augmented reality with interactive 3D
holographic input/output devices, the development effort needed to use
FeenoX as the back end is negligible.

  [CAEplex]: https://www.caeplex.com

Rule of Simplicity

  Developers should design for simplicity by looking for ways to break
  up program systems into small, straightforward cooperating pieces.
  This rule aims to discourage developers’ affection for writing
  “intricate and beautiful complexities” that are in reality bug prone
  programs.

The main source of simplicity comes from the design of the syntax of the
input files, discussed in detail in the SDS:

-   English-like self-evident input files matching as close as possible
    the problem text.
-   Simple problems need simple input.
-   Similar problems need similar inputs.
-   If there is a single material there is no need to link volumes to
    properties.

  [SDS]: https://www.seamplex.com/feenox/doc/sds.html#sec:input

Rule of Parsimony

  Developers should avoid writing big programs. This rule aims to
  prevent overinvestment of development time in failed or suboptimal
  approaches caused by the owners of the program’s reluctance to throw
  away visibly large pieces of work. Smaller programs are not only
  easier to write, optimize, and maintain; they are easier to delete
  when deprecated.

We already said that FeenoX is a glue layer between a mesher and a
post-processing tool. Even more, at another level, it acts as two glue
layers between the mesher and PETSc, and PETSc and the post-processor.

On the other hand, we also already stated that FeenoX was written from
scratch after throwing away clumsy code from two previous attempts. For
instance, these previous versions used to implement parametric and
optimization schemes. Instead, in FeenoX, these type of runs have to be
driven from an outer script (Bash, Python, etc.)

Rule of Transparency

  Developers should design for visibility and discoverability by writing
  in a way that their thought process can lucidly be seen by future
  developers working on the project and using input and output formats
  that make it easy to identify valid input and correct output. This
  rule aims to reduce debugging time and extend the lifespan of
  programs.

As with the rule of clarity (sec. 11.2), there is a risk of falling into
the confirmation bias because every programmer thinks its code is
transparent. Anyway, FeenoX is written in C99 which is way easier to
debug than both Fortran and C++. Yet, very much like PETSc, FeenoX makes
use of structures and function pointers to give the same functionality
as C++’s virtual methods without needing to introduce other complexities
that make the code base harder to maintain and to debug.

Regarding identification of valid inputs and correct outputs,

1.  The build system includes a make check target that runs hundreds of
    regressions tests.
2.  The code supports verification using the Method of Manufactured
    Solutions

  [regressions tests]: https://github.com/seamplex/feenox/tree/main/tests
  [Method of Manufactured Solutions]: https://github.com/seamplex/feenox/tree/main/tests/mms

Rule of Robustness

  Developers should design robust programs by designing for transparency
  and discoverability, because code that is easy to understand is easier
  to stress test for unexpected conditions that may not be foreseeable
  in complex programs. This rule aims to help developers build robust,
  reliable products.

Robustness is the child of transparency and simplicity.

Rule of Representation

  Developers should choose to make data more complicated rather than the
  procedural logic of the program when faced with the choice, because it
  is easier for humans to understand complex data compared with complex
  logic. This rule aims to make programs more readable for any developer
  working on the project, which allows the program to be maintained.

There is a trade off between clarity and efficiency. However, avoiding
Fortran should already fulfill this rule. FeenoX uses C structures with
function pointers, which make it far simple to understand than similar
Fortran-based FEM tools. Just compare the source directories of FeenoX
and CalculiX. Take for instance the file stress.c from
src/pdes/mechanical (which if deleted, will remove support for
mechanical problems but it will not prevent the compilation of feenox)
from the former and calcstress.f (buried inside 2,400 files in src) from
the latter. There might be more illustrative examples showing how
FeenoX’ design is more representative than of CalculiX, but it is way
too hard to understand the source code of the latter (even though the
license is supposed to be GPL).

  [stress.c]: https://github.com/seamplex/feenox/blob/main/src/pdes/mechanical/stress.c
  [calcstress.f]: https://github.com/calculix/ccx_prool/blob/master/CalculiX/ccx_2.21/src/calcstress.f
  [src]: https://github.com/calculix/ccx_prool/tree/master/CalculiX/ccx_2.21/src

Rule of Least Surprise

  Developers should design programs that build on top of the potential
  users’ expected knowledge; for example, ‘+’ in a calculator program
  should always mean ‘addition’. This rule aims to encourage developers
  to build intuitive products that are easy to use.

The rules of input syntax have been designed with this rule in mind.
Just note a couple of them:

-   The command-line arguments after the input file are available to be
    expanded verbatim in the input file as $1, $2, etc. (or ${1}, ${2},
    etc. if they appear in the middle of strings). This syntax matches
    Bash’ syntax for expanding command-line arguments, so any person
    reading an input file with this syntax already knows what it does. ´

-   If one needs a problem where the conductivity depends on x as
    k(x) = 1 + x then the input is

        k(x) = 1+x

-   If a problem needs a temperature distribution given by an algebraic
    expression $T(x,y,z)=\sqrt{x^2+y^2}+z$ then do

        T(x,y,z) = sqrt(x^2+y^2) + z

-   This syntax for (basic) algebraic expressions matches the common
    syntax found in Gmsh, Maxima and many other scientific tools. More
    complex expressions (e.g. involving hyperbolic tangents) might
    differ slightly.

Rule of Silence

  Developers should design programs so that they do not print
  unnecessary output. This rule aims to allow other programs and
  developers to pick out the information they need from a program’s
  output without having to parse verbosity.

TL;DR: no PRINT (or WRITE_RESULTS), no output.

Rule of Repair

  Developers should design programs that fail in a manner that is easy
  to localize and diagnose or in other words “fail noisily”. This rule
  aims to prevent incorrect output from a program from becoming an input
  and corrupting the output of other code undetected.

Input errors are detected before the computation is started:

    $ feenox thermal-error.fee 
    error: undefined thermal conductivity 'k'
    $ 

Run-time errors (even inside the numerical libraries) are caught with
custom handlers.

Rule of Economy

  Developers should value developer time over machine time, because
  machine cycles today are relatively inexpensive compared to prices in
  the 1970s. This rule aims to reduce development costs of projects.

As explained in the SDS, output is 100% user-defined so only the desired
results are directly obtained instead of needing further digging into
tons of undesired data. The approach of “compute and write everything
you can in one single run” made sense in 1970 where CPU time was more
expensive than human time, but not anymore. Once again, the iconic
examples are the NAFEMS LE10 & LE11 benchmarks, where just the required
scalar stress at the required location is written into the standard
output.

  [SDS39]: https://www.seamplex.com/feenox/doc/sds.html#sec:output
  [LE10]: https://www.seamplex.com/feenox/examples/mechanical.html#nafems-le10-thick-plate-pressure-benchmark
  [LE11]: https://www.seamplex.com/feenox/examples/mechanical.html#nafems-le11-solid-cylindertapersphere-temperature-benchmark

Rule of Generation

  Developers should avoid writing code by hand and instead write
  abstract high-level programs that generate code. This rule aims to
  reduce human errors and save time.

Some key points:

-   Input files are M4-like-macro friendly.
-   Parametric runs can be done from scripts through expansion of
    command line arguments.
-   Documentation is created out of simple Markdown sources and
    assembled as needed.

More saliently, the automatic detection of the available PDEs in
src/pdes is an example of this rule. The autogen.sh would loop over each
subdirectory and create a source file src/pdes/parser.c with a function
feenox_pde_parse_problem_type() which then will be part of the actual
FeenoX source base as the entry point for parsing the PROBLEM keyword.

Rule of Optimization

  Developers should prototype software before polishing it. This rule
  aims to prevent developers from spending too much time for marginal
  gains.

FeenoX is still “premature” for heavy optimization. Yet, it is
(relatively) faster than other alternatives. It does use link-time
optimization to allow for inlining of small routines. There is even a
FeenoX benchmarking repository that uses Google’s Benchmark library to
prototype code optimization:
https://github.com/seamplex/feenox-benchmark.

Rule of Diversity

  Developers should design their programs to be flexible and open. This
  rule aims to make programs flexible, allowing them to be used in ways
  other than those their developers intended.

FeenoX can read Gmsh files, but they need not necessarily be created by
Gmsh. Other meshing formats (VTK with group names?) are planned to be
implemented. Also, either Gmsh or Paraview can be used to post-process
results. But also other formats are planned. See sec. 11.17. Diversity
is embraced from the bottom up!

Rule of Extensibility

  Developers should design for the future by making their protocols
  extensible, allowing for easy plugins without modification to the
  program’s architecture by other developers, noting the version of the
  program, and more. This rule aims to extend the lifespan and enhance
  the utility of the code the developer writes.

The main extensibility feature is that each PDE has a separate source
directory. Any of them can be used as as template to add new PDEs, which
are detected at compile time by the Autotools bootstrapping script.

A final note is that FeenoX is GPLv3+. First, this means that extensions
and contributions are welcome. Each author retains the copyright on the
contributed code (as long as it is free software). Second, the + is
there for the future.

Appendix: FeenoX history

Very much like Unix in the late 1960s and C in the early 1970s, FeenoX
is a third-system effect: I wrote a first hack that seemed to work
better than I had expected. Then I tried to add a lot of features and
complexities which I felt the code needed. After ten years of actual
usage, I then realized

1.  what was worth keeping,
2.  what needed to be rewritten and
3.  what had to be discarded.

The first version was called wasora, the second was “The wasora suite”
(i.e. a generic framework plus a bunch of “plugins”, including a
thermo-mechanical one named Fino) and then finally FeenoX. The story
that follows explains why I wrote the first hack to begin with.

------------------------------------------------------------------------

It was at the movies when I first heard about dynamical systems,
non-linear equations and chaos theory. The year was 1993, I was ten
years old and the movie was Jurassic Park. Dr. Ian Malcolm (the
character portrayed by Jeff Goldblum) explained sensitivity to initial
conditions in a memorable scene, which is worth watching again and
again. Since then, the fact that tiny variations may lead to unexpected
results has always fascinated me. During high school I attended a very
interesting course on fractals and chaos that made me think further
about complexity and its mathematical description. Nevertheless, it was
not not until college that I was able to really model and solve the
differential equations that give rise to chaotic behavior.

[Dr. Ian Malcolm (Jeff Goldblum) explains sensitivity to initial
conditions.]

In fact, initial-value ordinary differential equations arise in a great
variety of subjects in science and engineering. Classical mechanics,
chemical kinetics, structural dynamics, heat transfer analysis and
dynamical systems, among other disciplines, heavily rely on equations of
the form

$$
\dot{\mathbf{x}} = F(\mathbf{x},t)
$$

During my years of undergraduate student (circa 2004–2007), whenever I
had to solve these kind of equations I had to choose one of the
following three options:

1.  to program an ad-hoc numerical method such as Euler or Runge-Kutta,
    matching the requirements of the system of equations to solve, or
2.  to use a standard numerical library such as the GNU Scientific
    Library and code the equations to solve into a C program (or maybe
    in Python), or
3.  to use a high-level system such as Octave, Maxima, or some non-free
    (and worse, see below) programs.

Of course, each option had its pros and its cons. But none provided the
combination of advantages I was looking for, namely flexibility (option
one), efficiency (option two) and reduced input work (partially given by
option three). Back in those days I ended up wandering between options
one and two, depending on the type of problem I had to solve. However,
even though one can, with some effort, make the code read some
parameters from a text file, any other drastic change usually requires a
modification in the source code—some times involving a substantial
amount of work—and a further recompilation of the code. This was what I
most disliked about this way of working, but I could nevertheless live
with it.

Regardless of this situation, during my last year of Nuclear
Engineering, the tipping point came along. Here’s a
slightly-fictionalized of a dialog between myself and the teacher at the
computer lab (Dr E.), as it might have happened (or not):

  — (Prof.) Open MATLAB.™
  — (Me) It’s not installed here. I type mathlab and it does not work.
  — (Prof.) It’s spelled matlab.
  — (Me) Ok, working. (A screen with blocks and lines connecting them
  appears)
  — (Me) What’s this?
  — (Prof.) The point reactor equations.
  — (Me) It’s not. These are the point reactor equations:

  $$
  \begin{cases}
  \dot{\phi}(t) = \displaystyle \frac{\rho(t) - \beta}{\Lambda} \cdot \phi(t) + \sum_{i=1}^{N} \lambda_i \cdot c_i \\
  \dot{c}_i(t)  = \displaystyle \frac{\beta_i}{\Lambda} \cdot \phi(t) - \lambda_i \cdot c_i
  \end{cases}
  $$

  — (Me) And in any case, I’d write them like this in a computer:

      phi_dot = (rho-Beta)/Lambda * phi + sum(lambda[i], c[i], i, 1, N)
      c_dot[i] = beta[i]/Lambda * phi - lambda[i]*c[i]

This conversation forced me to re-think the ODE-solving issue. I could
not (and still cannot) understand why somebody would prefer to solve a
very simple set of differential equations by drawing blocks and
connecting them with a mouse with no mathematical sense whatsoever. Fast
forward fifteen years, and what I wrote above is essentially how one
would solve the point kinetics equations with FeenoX.

  [FeenoX40]: https://www.seamplex.com/feenox
  [Dr. Ian Malcolm]: https://en.wikipedia.org/wiki/Ian_Malcolm_(character)
  [Jeff Goldblum]: https://en.wikipedia.org/wiki/Jeff_Goldblum
  [memorable scene]: https://www.youtube.com/watch?v=n-mpifTiPV4
  [Dr. Ian Malcolm (Jeff Goldblum) explains sensitivity to initial conditions.]:
    jurassicpark.jpg
  [Euler]: https://en.wikipedia.org/wiki/Euler_method
  [Runge-Kutta]: https://en.wikipedia.org/wiki/Runge%E2%80%93Kutta_methods
  [GNU Scientific Library]: https://www.gnu.org/software/gsl/
  [Octave]: https://www.gnu.org/software/octave/index
  [Maxima]: https://maxima.sourceforge.io/

Appendix: Downloading & compiling

  Please note that FeenoX is a cloud-first back end aimed at advanced
  users. It does not include a graphical interface and it is not
  expected to run in Windows. See this 5-min explanation about why:

  For an easy-to-use web-based front end with FeenoX running in the
  cloud directly from your browser see CAEplex at
  https://www.caeplex.com.

  Any contribution to make desktop GUIs such as PrePoMax or FreeCAD to
  work with FeenoX are welcome.

  [back end]: https://en.wikipedia.org/wiki/Front_and_back_ends
  [CAEplex]: https://www.caeplex.com
  [PrePoMax]: https://prepomax.fs.um.si/
  [FreeCAD]: http://https://www.freecadweb.org

Downloads

FeenoX is distributed under the terms of the GNU General Public License
version 3 or (at your option) any later version.

  ----------------------------- -----------------------------------------------------
  Debian packages               https://packages.debian.org/unstable/science/feenox

  GNU/Linux binaries            https://www.seamplex.com/feenox/dist/linux

  Source tarballs               https://www.seamplex.com/feenox/dist/src

  Github repository             https://github.com/seamplex/feenox/
  ----------------------------- -----------------------------------------------------

-   FeenoX is cloud-first. It was designed to run on servers.

-   Be aware that FeenoX does not have a GUI. Read the documentation,
    especially the description and the FAQs. Ask for help on the GitHub
    discussions page if you do now understand what this bullet means.

-   Debian/Ubuntu packages are unofficial, i.e. they are not available
    in apt repositories. They contain dynamically-linked binaries and
    their dependencies are hard-coded for each Debian/Ubuntu release.
    Make sure you get the right .deb for your release
    (i.e. bookworm/bullseye for Debian, kinetic/focal for Ubuntu).

-   Generic GNU/Linux binaries are provided as statically-linked
    executables for convenience. They do not support MUMPS nor MPI and
    have only basic optimization flags. Please compile from source for
    high-end applications. See detailed compilation instructions.

-   Try to avoid Windows as much as you can. The binaries are provided
    as transitional packages for people that for some reason still use
    such an outdated, anachronous, awful and invasive operating system.
    They are compiled with Cygwin and have no support whatsoever.
    Really, really, get rid of Windows ASAP.

      “It is really worth any amount of time and effort to get away from
      Windows if you are doing computational science.”

      https://lists.mcs.anl.gov/pipermail/petsc-users/2015-July/026388.html

  [GNU General Public License version 3]: https://www.gnu.org/licenses/gpl-3.0.en.html
  [cloud-first]: https://seamplex.com/feenox/doc/sds.html#cloud-first
  [documentation]: https://seamplex.com/feenox/doc/
  [description]: https://www.seamplex.com/feenox/doc/feenox-desc.html
  [FAQs]: https://seamplex.com/feenox/doc/FAQ.html
  [GitHub discussions page]: https://github.com/seamplex/feenox/discussions
  [detailed compilation instructions41]: https://seamplex.com/feenox/doc/compilation.html
  [Cygwin42]: http://cygwin.com/

Debian/Ubuntu packages

Debian/Ubuntu packages are available at
https://www.seamplex.com/feenox/dist/. Find the directory for your
Debian or Ubuntu release, i.e.

-   bookworm is Debian 12
-   bullseye is Debian 11
-   buster is Debian 10
-   kinetic is Ubuntu 22.10
-   jammy is Ubuntu 22.04
-   focal is Ubuntu 20.04

If you know how to install .deb packages, feel free to use your method
(i.e. gdebi or with the “Software Center” thing).

You can can always use dpkg (as root):

    $ sudo dpkg -i feenox-0.3_1_amd64.deb

Most likely, this step will fail due to failed dependencies. Just call
apt to fix them for you:

    $ sudo apt-get --fix-broken install

Now the command feenox should be globally available:

    $ feenox
    FeenoX v0.3
    a cloud-first free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    usage: ./feenox [options] inputfile [replacement arguments] [petsc options]

      -h, --help         display options and detailed explanations of command-line usage
      -v, --version      display brief version information and exit
      -V, --versions     display detailed version information
      -c, --check        validates if the input file is sane or not
      --pdes             list the types of PROBLEMs that FeenoX can solve, one per line
      --elements_info    output a document with information about the supported element types
      --linear           force FeenoX to solve the PDE problem as linear
      --non-linear       force FeenoX to solve the PDE problem as non-linear

    Run with --help for further explanations.
    $

If the execution fails, most likely the version of the .deb does not
match your GNU/Linux release. Please try the statically-linked binaries
below or ask in the FeenoX discussions page.

The FeenoX Unix man page should be available in section one:

    $ man -k feenox
    feenox (1)           - a cloud-first free no-X uniX-like finite-element(ish) computational engineering tool
    $ man feenox
    $

  [bookworm]: https://www.seamplex.com/feenox/dist/deb/bookworm
  [bullseye]: https://www.seamplex.com/feenox/dist/deb/bullseye
  [buster]: https://www.seamplex.com/feenox/dist/deb/buster
  [kinetic]: https://www.seamplex.com/feenox/dist/deb/kinetic
  [jammy]: https://www.seamplex.com/feenox/dist/deb/jammy
  [focal]: https://www.seamplex.com/feenox/dist/deb/focal
  [FeenoX discussions]: https://github.com/seamplex/feenox/discussions

Statically-linked binaries

Browse to https://www.seamplex.com/feenox/dist/ and check what the
latest version for your architecture is. Then do

    feenox_version=1.0.8
    wget -c https://www.seamplex.com/feenox/dist/linux/feenox-v${feenox_version}-linux-amd64.tar.gz
    tar xzf feenox-v${feenox_version}-linux-amd64.tar.gz
    sudo cp feenox-v${feenox_version}-linux-amd64/bin/feenox /usr/local/bin

You’ll have the binary under bin and examples, documentation, manpage,
etc under share. Copy bin/feenox into somewhere in the PATH and that
will be it. If you are root, do

    sudo cp feenox-v${feenox_version}-linux-amd64/bin/feenox /usr/local/bin

If you are not root, the usual way is to create a directory $HOME/bin
and add it to your local path. If you have not done it already, do

    mkdir -p $HOME/bin
    echo 'expot PATH=$PATH:$HOME/bin' >> .bashrc

Then finally copy bin/feenox to $HOME/bin

    cp feenox-v${feenox_version}-linux-amd64/bin/feenox $HOME/bin

Check if it works by calling feenox from any directory (you might need
to open a new terminal so .bashrc is re-read):

    $ feenox
    FeenoX v1.0.8-g731ca5d 
    a cloud-first free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    usage: ./feenox [options] inputfile [replacement arguments] [petsc options]

      -h, --help         display options and detailed explanations of command-line usage
      -v, --version      display brief version information and exit
      -V, --versions     display detailed version information
      -c, --check        validates if the input file is sane or not
      --pdes             list the types of PROBLEMs that FeenoX can solve, one per line
      --elements_info    output a document with information about the supported element types
      --linear           force FeenoX to solve the PDE problem as linear
      --non-linear       force FeenoX to solve the PDE problem as non-linear

    Run with --help for further explanations.
    $ 

Compile from source

To compile the source tarball, proceed as follows. This procedure does
not need git nor autoconf but a new tarball has to be downloaded each
time there is a new FeenoX version.

1.  Install mandatory dependencies

        sudo apt-get update
        sudo apt-get install gcc make libgsl-dev

    If you cannot install libgsl-dev, you can have the configure script
    to download and compile it for you. See point 4 below.

2.  Install optional dependencies (of course these are optional but
    recommended)

        sudo apt-get install libsundials-dev petsc-dev slepc-dev

3.  Download and un-compress FeenoX source tarball. Browse to
    https://www.seamplex.com/feenox/dist/src/ and pick the latest
    version:

        wget https://www.seamplex.com/feenox/dist/src/feenox-v0.1.66-g1c4b17b.tar.gz
        tar xvzf feenox-v0.1.66-g1c4b17b.tar.gz

4.  Configure, compile & make

        cd feenox-v0.1.66-g1c4b17b
        ./configure
        make -j4

    If you cannot (or do not want) to use libgsl-dev from a package
    repository, call configure with --enable-download-gsl:

        ./configure --enable-download-gsl

    If you do not have Internet access, get the tarball manually, copy
    it to the same directory as configure and run again.

5.  Run test suite (optional)

        make check

6.  Install the binary system wide (optional)

        sudo make install

Github repository

To compile the Git repository, proceed as follows. This procedure does
need git and autoconf but new versions can be pulled and recompiled
easily. If something goes wrong and you get an error, do not hesitate to
ask in FeenoX’s discussion page.

1.  Install mandatory dependencies

        sudo apt-get update
        sudo apt-get install git build-essential make automake autoconf libgsl-dev

    If you cannot install libgsl-dev but still have git and the build
    toolchain, you can have the configure script to download and compile
    it for you. See point 4 below.

2.  Install optional dependencies (of course these are optional but
    recommended)

        sudo apt-get install libsundials-dev petsc-dev slepc-dev

3.  Clone Github repository

        git clone https://github.com/seamplex/feenox

4.  Bootstrap, configure, compile & make

        cd feenox
        ./autogen.sh
        ./configure
        make -j4

    If you cannot (or do not want to) use libgsl-dev from a package
    repository, call configure with --enable-download-gsl:

        ./configure --enable-download-gsl

    If you do not have Internet access, get the tarball manually, copy
    it to the same directory as configure and run again. See the
    detailed compilation instructions for an explanation.

5.  Run test suite (optional)

        make check

6.  Install the binary system wide (optional)

        sudo make install

To stay up to date, pull and then autogen, configure and make (and
optionally install):

    git pull
    ./autogen.sh; ./configure; make -j4
    sudo make install

See the Compilation Guide for details. Ask in the GitHub Discussions
page for help.

  [discussion page]: https://github.com/seamplex/feenox/discussions
  [detailed compilation instructions]: compilation.md
  [Compilation Guide43]: doc/compile.md

Licensing

FeenoX is distributed under the terms of the GNU General Public License
version 3 or (at your option) any later version. The following text was
borrowed from the Gmsh documentation. Replacing “Gmsh” with “FeenoX”
gives:

  FeenoX is “free software”; this means that everyone is free to use it
  and to redistribute it on a free basis. FeenoX is not in the public
  domain; it is copyrighted and there are restrictions on its
  distribution, but these restrictions are designed to permit everything
  that a good cooperating citizen would want to do. What is not allowed
  is to try to prevent others from further sharing any version of FeenoX
  that they might get from you.

  Specifically, we want to make sure that you have the right to give
  away copies of FeenoX, that you receive source code or else can get it
  if you want it, that you can change FeenoX or use pieces of FeenoX in
  new free programs, and that you know you can do these things.

  To make sure that everyone has such rights, we have to forbid you to
  deprive anyone else of these rights. For example, if you distribute
  copies of FeenoX, you must give the recipients all the rights that you
  have. You must make sure that they, too, receive or can get the source
  code. And you must tell them their rights.

  Also, for our own protection, we must make certain that everyone finds
  out that there is no warranty for FeenoX. If FeenoX is modified by
  someone else and passed on, we want their recipients to know that what
  they have is not what we distributed, so that any problems introduced
  by others will not reflect on our reputation.

  The precise conditions of the license for FeenoX are found in the
  General Public License that accompanies the source code. Further
  information about this license is available from the GNU Project
  webpage http://www.gnu.org/copyleft/gpl-faq.html.

FeenoX is licensed under the terms of the GNU General Public License
version 3 or, at the user convenience, any later version. This means
that users get the four essential freedoms:[9]

0.  The freedom to run the program as they wish, for any purpose.
1.  The freedom to study how the program works, and change it so it does
    their computing as they wish.
2.  The freedom to redistribute copies so they can help others.
3.  The freedom to distribute copies of their modified versions to
    others.

So a free program has to be open source, but it also has to explicitly
provide the four freedoms above both through the written license and
through appropriate mechanisms to get, modify, compile, run and document
these modifications using well-established and/or reasonable
straightforward procedures. That is why licensing FeenoX as GPLv3+ also
implies that the source code and all the scripts and makefiles needed to
compile and run it are available for anyone that requires it (i.e. it is
compiled with ./configure && make). Anyone wanting to modify the program
either to fix bugs, improve it or add new features is free to do so. And
if they do not know how to program, the have the freedom to hire a
programmer to do it without needing to ask permission to the original
authors. Even more, the documentation is released under the terms of the
Creative Commons Attribution-ShareAlike 4.0 International License so
these new (or modified) features can be properly documented as well.

Nevertheless, since these original authors are the copyright holders,
they still can use it to either enforce or prevent further actions from
the users that receive FeenoX under the GPLv3+. In particular, the
license allows re-distribution of modified versions only if

a.  they are clearly marked as different from the original, and
b.  they are distributed under the same terms of the GPLv3+.

There are also some other subtle technicalities that need not be
discussed here such as

-   what constitutes a modified version (which cannot be redistributed
    under a different license)
-   what is an aggregate (in which each part be distributed under
    different licenses)
-   usage over a network and the possibility of using AGPL instead of
    GPL to further enforce freedom

These issues are already taken into account in the FeenoX licensing
scheme.

It should be noted that not only is FeenoX free and open source, but
also all of the libraries it depends on (and their dependencies) also
are. It can also be compiled using free and open source build tool
chains running over free and open source operating systems.

These detailed compilation instructions are aimed at amd64 Debian-based
GNU/Linux distributions. The compilation procedure follows the POSIX
standard, so it should work in other operating systems and architectures
as well. Distributions not using apt for packages (i.e. yum) should
change the package installation commands (and possibly the package
names). The instructions should also work for in MacOS, although the
apt-get commands should be replaced by brew or similar. Same for Windows
under Cygwin, the packages should be installed through the Cygwin
installer. WSL was not tested, but should work as well.

[9]  There are some examples of pieces of computational software which
are described as “open source” in which even the first of the four
freedoms is denied. The most iconic case is that of Android, whose
sources are readily available online but there is no straightforward way
of updating one’s mobile phone firmware with a customized version, not
to mention vendor and hardware lock ins and the possibility of bricking
devices if something unexpected happens. In the nuclear industry, it is
the case of a Monte Carlo particle-transport program that requests users
to sign an agreement about the objective of its usage before allowing
its execution. The software itself might be open source because the
source code is provided after signing the agreement, but it is not free
(as in freedom) at all.

  [GNU General Public License44]: http://www.gnu.org/copyleft/gpl.html
  [Gmsh documentation]: http://gmsh.info/doc/texinfo/gmsh.html#Copying-conditions
  [General Public License]: https://github.com/seamplex/feenox/blob/master/COPYING
  [GNU General Public License]: https://www.gnu.org/licenses/gpl-3.0
  [the documentation]: https://seamplex.com/feenox/doc/
  [Creative Commons Attribution-ShareAlike 4.0 International License]: https://creativecommons.org/licenses/by-sa/4.0/
  [AGPL]: https://en.wikipedia.org/wiki/GNU_Affero_General_Public_License
  [POSIX standard]: https://en.wikipedia.org/wiki/POSIX
  [Cygwin]: https://www.cygwin.com/

Quickstart

Note that the quickest way to get started is to download an
already-compiled statically-linked binary executable. Note that getting
a binary is the quickest and easiest way to go but it is the less
flexible one. Mind the following instructions if a binary-only option is
not suitable for your workflow and/or you do need to compile the source
code from scratch.

On a GNU/Linux box (preferably Debian-based), follow these quick steps.
See sec. 13.4 for the actual detailed explanations.

To compile the Git repository, proceed as follows. This procedure does
need git and autoconf but new versions can be pulled and recompiled
easily. If something goes wrong and you get an error, do not hesitate to
ask in FeenoX’s discussion page.

1.  Install mandatory dependencies

        sudo apt-get update
        sudo apt-get install git build-essential make automake autoconf libgsl-dev

    If you cannot install libgsl-dev but still have git and the build
    toolchain, you can have the configure script to download and compile
    it for you. See point 4 below.

2.  Install optional dependencies (of course these are optional but
    recommended)

        sudo apt-get install libsundials-dev petsc-dev slepc-dev

3.  Clone Github repository

        git clone https://github.com/seamplex/feenox

4.  Bootstrap, configure, compile & make

        cd feenox
        ./autogen.sh
        ./configure
        make -j4

    If you cannot (or do not want to) use libgsl-dev from a package
    repository, call configure with --enable-download-gsl:

        ./configure --enable-download-gsl

    If you do not have Internet access, get the tarball manually, copy
    it to the same directory as configure and run again. See the
    detailed compilation instructions for an explanation.

5.  Run test suite (optional)

        make check

6.  Install the binary system wide (optional)

        sudo make install

To stay up to date, pull and then autogen, configure and make (and
optionally install):

    git pull
    ./autogen.sh; ./configure; make -j4
    sudo make install

  [download]: https://www.seamplex.com/feenox/#download
  [discussion page]: https://github.com/seamplex/feenox/discussions
  [detailed compilation instructions]: compilation.md

Detailed configuration and compilation

The main target and development environment is Debian GNU/Linux,
although it should be possible to compile FeenoX in any free GNU/Linux
variant (and even the in non-free MacOS and/or Windows platforms)
running in virtually any hardware platform. FeenoX can run be run either
in HPC cloud servers or a Raspberry Pi, and almost everything that sits
in the middle.

Following the Unix philosophy discussed in the SDS, FeenoX re-uses a lot
of already-existing high-quality free and open source libraries that
implement a wide variety of mathematical operations. This leads to a
number of dependencies that FeenoX needs in order to implement certain
features.

There is only one dependency that is mandatory, namely GNU GSL
(see sec. 13.4.1.1), which if it not found then FeenoX cannot be
compiled. All other dependencies are optional, meaning that FeenoX can
be compiled but its capabilities will be partially reduced.

As per the SRS, all dependencies have to be available on mainstream
GNU/Linux distributions and have to be free and open source software.
But they can also be compiled from source in case the package
repositories are not available or customized compilation flags are
needed (i.e. optimization or debugging settings).

In particular, PETSc (and SLEPc) also depend on other mathematical
libraries to perform particular operations such as low-level linear
algebra operations. These extra dependencies can be either free (such as
LAPACK) or non-free (such as Intel’s MKL), but there is always at least
one combination of a working setup that involves only free and open
source software which is compatible with FeenoX licensing terms
(GPLv3+). See the documentation of each package for licensing details.

  [Debian GNU/Linux]: https://www.debian.org/
  [SDS45]: SDS.md
  [GNU GSL]: https://www.gnu.org/software/gsl/
  [SRS]: SRS.md
  [PETSc46]: https://petsc.org/release/
  [SLEPc47]: https://slepc.upv.es/
  [LAPACK]: http://www.netlib.org/lapack/
  [Intel’s MKL]: https://www.intel.com/content/www/us/en/developer/tools/oneapi/onemkl.html

Mandatory dependencies

FeenoX has one mandatory dependency for run-time execution and the
standard build toolchain for compilation. It is written in C99 so only a
C compiler is needed, although make is also required. Free and open
source compilers are favored. The usual C compiler is gcc but clang or
Intel’s icc and the newer icx can also be used.

Note that there is no need to have a Fortran nor a C++ compiler to build
FeenoX. They might be needed to build other dependencies (such as PETSc
and its dependencies), but not to compile FeenoX if all the dependencies
are installed from the operating system’s package repositories. In case
the build toolchain is not already installed, do so with

    sudo apt-get install gcc make

If the source is to be fetched from the Git repository then not only is
git needed but also autoconf and automake since the configure script is
not stored in the Git repository but the autogen.sh script that
bootstraps the tree and creates it. So if instead of compiling a source
tarball one wants to clone from GitHub, these packages are also
mandatory:

    sudo apt-get install git automake autoconf

Again, chances are that any existing GNU/Linux box has all these tools
already installed.

  [Git repository]: https://github.com/seamplex/feenox/

The GNU Scientific Library

The only run-time dependency is GNU GSL (not to be confused with
Microsoft GSL). It can be installed with

    sudo apt-get install libgsl-dev

In case this package is not available or you do not have enough
permissions to install system-wide packages, there are two options.

1.  Pass the option --enable-download-gsl to the configure script below.
2.  Manually download, compile and install GNU GSL

If the configure script cannot find both the headers and the actual
library, it will refuse to proceed. Note that the FeenoX binaries
already contain a static version of the GSL so it is not needed to have
it installed in order to run the statically-linked binaries.

  [GNU GSL]: https://www.gnu.org/software/gsl/
  [Microsoft GSL]: https://github.com/microsoft/GSL

Optional dependencies

FeenoX has three optional run-time dependencies. It can be compiled
without any of these, but functionality will be reduced:

-   SUNDIALS provides support for solving systems of ordinary
    differential equations (ODEs) or differential-algebraic equations
    (DAEs). This dependency is needed when running inputs with the
    PHASE_SPACE keyword.

-   PETSc provides support for solving partial differential equations
    (PDEs). This dependency is needed when running inputs with the
    PROBLEM keyword.

-   SLEPc provides support for solving eigen-value problems in partial
    differential equations (PDEs). This dependency is needed for inputs
    with PROBLEM types with eigen-value formulations such as modal and
    neutron_sn.

In absence of all these, FeenoX can still be used to

-   solve general mathematical problems such as the ones to compute the
    Fibonacci sequence or the Logistic map,
-   operate on functions, either algebraically or point-wise
    interpolated such as Computing the derivative of a function as a
    Unix filter
-   read, operate over and write meshes,
-   etc.

These optional dependencies have to be installed separately. There is no
option to have configure to download them as with --enable-download-gsl.
When running the test suite (sec. 13.4.6), those tests that need an
optional dependency which was not found at compile time will be skipped.

  [SUNDIALS]: https://computing.llnl.gov/projects/sundials
  [PETSc]: https://petsc.org/
  [SLEPc47]: https://slepc.upv.es/
  [Fibonacci sequence48]: https://www.seamplex.com/feenox/examples/#the-fibonacci-sequence
  [Logistic map]: https://www.seamplex.com/feenox/examples/#the-logistic-map
  [Computing the derivative of a function as a Unix filter]: https://www.seamplex.com/feenox/examples/#computing-the-derivative-of-a-function-as-a-unix-filter

SUNDIALS

SUNDIALS is a SUite of Nonlinear and DIfferential/ALgebraic equation
Solvers. It is used by FeenoX to solve dynamical systems casted as DAEs
with the keyword PHASE_SPACE, like the Lorenz system.

Install either by doing

    sudo apt-get install libsundials-dev

or by following the instructions in the documentation.

  [SUNDIALS]: https://computing.llnl.gov/projects/sundials
  [PHASE_SPACE]: https://www.seamplex.com/feenox/doc/feenox-manual.html#phase_space
  [the Lorenz system]: https://www.seamplex.com/feenox/examples/#lorenz-attractor-the-one-with-the-butterfly

PETSc

The Portable, Extensible Toolkit for Scientific Computation, pronounced
PET-see (/ˈpɛt-siː/), is a suite of data structures and routines for the
scalable (parallel) solution of scientific applications modeled by
partial differential equations. It is used by FeenoX to solve PDEs with
the keyword PROBLEM, like the NAFEMS LE10 benchmark problem.

Install either by doing

    sudo apt-get install petsc-dev

or by following the instructions in the documentation.

Note that

-   Configuring and compiling PETSc from scratch might be difficult the
    first time. It has a lot of dependencies and options. Read the
    official documentation for a detailed explanation.
-   There is a huge difference in efficiency between using PETSc
    compiled with debugging symbols and with optimization flags. Make
    sure to configure --with-debugging=0 for FeenoX production runs and
    leave the debugging symbols (which is the default) for development
    and debugging only.
-   FeenoX needs PETSc to be configured with real double-precision
    scalars. It will compile but will complain at run-time when using
    complex and/or single or quad-precision scalars.
-   FeenoX honors the PETSC_DIR and PETSC_ARCH environment variables
    when executing configure. If these two do not exist or are empty, it
    will try to use the default system-wide locations (i.e. the
    petsc-dev package).

  [Portable, Extensible Toolkit for Scientific Computation]: (https://petsc.org/)
  [PROBLEM]: https://www.seamplex.com/feenox/doc/feenox-manual.html#problem
  [NAFEMS LE10 benchmark problem]: https://www.seamplex.com/feenox/examples/#nafems-le10-thick-plate-pressure-benchmark
  [documentation49]: https://petsc.org/release/install/

SLEPc

The Scalable Library for Eigenvalue Problem Computations, is a software
library for the solution of large scale sparse eigenvalue problems on
parallel computers. It is used by FeenoX to solve PDEs with the keyword
PROBLEM that need eigen-value computations, such as modal analysis of a
cantilevered beam.

Install either by doing

    sudo apt-get install slepc-dev

or by following the instructions in the documentation.

Note that

-   SLEPc is an extension of PETSc so the latter has to be already
    installed and configured.
-   FeenoX honors the SLEPC_DIR environment variable when executing
    configure. If it does not exist or is empty it will try to use the
    default system-wide locations (i.e. the slepc-dev package).
-   If PETSc was configured with --download-slepc then the SLEPC_DIR
    variable has to be set to the directory inside PETSC_DIR where SLEPc
    was cloned and compiled.

  [Scalable Library for Eigenvalue Problem Computations]: https://slepc.upv.es/
  [PROBLEM]: https://www.seamplex.com/feenox/doc/feenox-manual.html#problem
  [modal analysis of a cantilevered beam]: https://www.seamplex.com/feenox/examples/#five-natural-modes-of-a-cantilevered-wire

FeenoX source code

There are two ways of getting FeenoX’s source code:

1.  Cloning the GitHub repository at https://github.com/seamplex/feenox
2.  Downloading a source tarball from
    https://seamplex.com/feenox/dist/src/

Git repository

The main Git repository is hosted on GitHub at
https://github.com/seamplex/feenox. It is public so it can be cloned
either through HTTPS or SSH without needing any particular credentials.
It can also be forked freely. See the Programming Guide for details
about pull requests and/or write access to the main repository.

Ideally, the main branch should have a usable snapshot. All other
branches can contain code that might not compile or might not run or
might not be tested. If you find a commit in the main branch that does
not pass the tests, please report it in the issue tracker ASAP.

After cloning the repository

    git clone https://github.com/seamplex/feenox

the autogen.sh script has to be called to bootstrap the working tree,
since the configure script is not stored in the repository but created
from configure.ac (which is in the repository) by autogen.sh.

Similarly, after updating the working tree with

    git pull

it is recommended to re-run the autogen.sh script. It will do a
make clean and re-compute the version string.

  [Programming Guide50]: programming.md

Source tarballs

When downloading a source tarball, there is no need to run autogen.sh
since the configure script is already included in the tarball. This
method cannot update the working tree. For each new FeenoX release, the
whole source tarball has to be downloaded again.

Configuration

To create a proper Makefile for the particular architecture,
dependencies and compilation options, the script configure has to be
executed. This procedure follows the GNU Coding Standards.

    ./configure

Without any particular options, configure will check if the mandatory
GNU Scientific Library is available (both its headers and run-time
library). If it is not, then the option --enable-download-gsl can be
used. This option will try to use wget (which should be installed) to
download a source tarball, uncompress, configure and compile it. If
these steps are successful, this GSL will be statically linked into the
resulting FeenoX executable. If there is no internet connection, the
configure script will say that the download failed. In that case, get
the indicated tarball file manually, copy it into the current directory
and re-run ./configure.

The script will also check for the availability of optional
dependencies. At the end of the execution, a summary of what was found
(or not) is printed in the standard output:

    $ ./configure
    [...]
    ## ----------------------- ##
    ## Summary of dependencies ##
    ## ----------------------- ##
      GNU Scientific Library  from system
      SUNDIALS IDA            yes
      PETSc                   yes /usr/lib/petsc 
      SLEPc                   no
    [...]  

If for some reason one of the optional dependencies is available but
FeenoX should not use it, then pass --without-sundials, --without-petsc
and/or --without-slepc as arguments. For example

    $ ./configure --without-sundials --without-petsc
    [...]
    ## ----------------------- ##
    ## Summary of dependencies ##
    ## ----------------------- ##
      GNU Scientific Library  from system
      SUNDIALS                no
      PETSc                   no
      SLEPc                   no
    [...]  

If configure complains about contradicting values from the cached ones,
run autogen.sh again before configure and/or clone/uncompress the source
tarball in a fresh location.

To see all the available options run

    ./configure --help

  [GNU Coding Standards]: https://www.gnu.org/prep/standards/
  [GNU Scientific Library]: https://www.gnu.org/software/gsl/

Source code compilation

After the successful execution of configure, a Makefile is created. To
compile FeenoX, just execute

    make

Compilation should take a dozen of seconds. It can be even sped up by
using the -j option

    make -j8

The binary executable will be located in the src directory but a copy
will be made in the base directory as well. Test it by running without
any arguments

    $ ./feenox
    FeenoX v0.2.14-gbbf48c9
    a free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    usage: feenox [options] inputfile [replacement arguments] [petsc options]

      -h, --help         display options and detailed explanations of command-line usage
      -v, --version      display brief version information and exit
      -V, --versions     display detailed version information

    Run with --help for further explanations.
    $

The -v (or --version) option shows the version and a copyright notice:

    $ ./feenox -v
    FeenoX v0.2.14-gbbf48c9
    a free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    Copyright © 2009--2022 https://seamplex.com/feenox
    GNU General Public License v3+, https://www.gnu.org/licenses/gpl.html. 
    FeenoX is free software: you are free to change and redistribute it.
    There is NO WARRANTY, to the extent permitted by law.
    $

The -V (or --versions) option shows the dates of the last commits, the
compiler options and the versions of the linked libraries:

    $ ./feenox -V
    FeenoX v0.1.24-g6cfe063
    a free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    Last commit date   : Sun Aug 29 11:34:04 2021 -0300
    Build date         : Sun Aug 29 11:44:50 2021 -0300
    Build architecture : linux-gnu x86_64
    Compiler version   : gcc (Debian 10.2.1-6) 10.2.1 20210110
    Compiler expansion : gcc -Wl,-z,relro -I/usr/include/x86_64-linux-gnu/mpich -L/usr/lib/x86_64-linux-gnu -lmpich
    Compiler flags     : -O3
    Builder            : gtheler@chalmers
    GSL version        : 2.6
    SUNDIALS version   : 4.1.0
    PETSc version      : Petsc Release Version 3.14.5, Mar 03, 2021 
    PETSc arch         : 
    PETSc options      : --build=x86_64-linux-gnu --prefix=/usr --includedir=${prefix}/include --mandir=${prefix}/share/man --infodir=${prefix}/share/info --sysconfdir=/etc --localstatedir=/var --with-option-checking=0 --with-silent-rules=0 --libdir=${prefix}/lib/x86_64-linux-gnu --runstatedir=/run --with-maintainer-mode=0 --with-dependency-tracking=0 --with-debugging=0 --shared-library-extension=_real --with-shared-libraries --with-pic=1 --with-cc=mpicc --with-cxx=mpicxx --with-fc=mpif90 --with-cxx-dialect=C++11 --with-opencl=1 --with-blas-lib=-lblas --with-lapack-lib=-llapack --with-scalapack=1 --with-scalapack-lib=-lscalapack-openmpi --with-ptscotch=1 --with-ptscotch-include=/usr/include/scotch --with-ptscotch-lib="-lptesmumps -lptscotch -lptscotcherr" --with-fftw=1 --with-fftw-include="[]" --with-fftw-lib="-lfftw3 -lfftw3_mpi" --with-superlu_dist=1 --with-superlu_dist-include=/usr/include/superlu-dist --with-superlu_dist-lib=-lsuperlu_dist --with-hdf5-include=/usr/include/hdf5/openmpi --with-hdf5-lib="-L/usr/lib/x86_64-linux-gnu/hdf5/openmpi -L/usr/lib/x86_64-linux-gnu/openmpi/lib -lhdf5 -lmpi" --CXX_LINKER_FLAGS=-Wl,--no-as-needed --with-hypre=1 --with-hypre-include=/usr/include/hypre --with-hypre-lib=-lHYPRE_core --with-mumps=1 --with-mumps-include="[]" --with-mumps-lib="-ldmumps -lzmumps -lsmumps -lcmumps -lmumps_common -lpord" --with-suitesparse=1 --with-suitesparse-include=/usr/include/suitesparse --with-suitesparse-lib="-lumfpack -lamd -lcholmod -lklu" --with-superlu=1 --with-superlu-include=/usr/include/superlu --with-superlu-lib=-lsuperlu --prefix=/usr/lib/petscdir/petsc3.14/x86_64-linux-gnu-real --PETSC_ARCH=x86_64-linux-gnu-real CFLAGS="-g -O2 -ffile-prefix-map=/build/petsc-pVufYp/petsc-3.14.5+dfsg1=. -flto=auto -ffat-lto-objects -fstack-protector-strong -Wformat -Werror=format-security -fPIC" CXXFLAGS="-g -O2 -ffile-prefix-map=/build/petsc-pVufYp/petsc-3.14.5+dfsg1=. -flto=auto -ffat-lto-objects -fstack-protector-strong -Wformat -Werror=format-security -fPIC" FCFLAGS="-g -O2 -ffile-prefix-map=/build/petsc-pVufYp/petsc-3.14.5+dfsg1=. -flto=auto -ffat-lto-objects -fstack-protector-strong -fPIC -ffree-line-length-0" FFLAGS="-g -O2 -ffile-prefix-map=/build/petsc-pVufYp/petsc-3.14.5+dfsg1=. -flto=auto -ffat-lto-objects -fstack-protector-strong -fPIC -ffree-line-length-0" CPPFLAGS="-Wdate-time -D_FORTIFY_SOURCE=2" LDFLAGS="-Wl,-Bsymbolic-functions -flto=auto -Wl,-z,relro -fPIC" MAKEFLAGS=w
    SLEPc version      : SLEPc Release Version 3.14.2, Feb 01, 2021
    $

Test suite

The test directory contains a set of test cases whose output is known so
that unintended regressions can be detected quickly (see the programming
guide for more information). The test suite ought to be run after each
modification in FeenoX’s source code. It consists of a set of scripts
and input files needed to solve dozens of cases. The output of each
execution is compared to a reference solution. In case the output does
not match the reference, the test suite fails.

After compiling FeenoX as explained in sec. 13.4.5, the test suite can
be run with make check. Ideally everything should be green meaning the
tests passed:

    $ make check
    Making check in src
    make[1]: Entering directory '/home/gtheler/codigos/feenox/src'
    make[1]: Nothing to be done for 'check'.
    make[1]: Leaving directory '/home/gtheler/codigos/feenox/src'
    make[1]: Entering directory '/home/gtheler/codigos/feenox'
    cp -r src/feenox .
    make  check-TESTS
    make[2]: Entering directory '/home/gtheler/codigos/feenox'
    make[3]: Entering directory '/home/gtheler/codigos/feenox'
    XFAIL: tests/abort.sh
    PASS: tests/algebraic_expr.sh
    PASS: tests/beam-modal.sh
    PASS: tests/beam-ortho.sh
    PASS: tests/builtin.sh
    PASS: tests/cylinder-traction-force.sh
    PASS: tests/default_argument_value.sh
    PASS: tests/expressions_constants.sh
    PASS: tests/expressions_variables.sh
    PASS: tests/expressions_functions.sh
    PASS: tests/exp.sh
    PASS: tests/i-beam-euler-bernoulli.sh
    PASS: tests/iaea-pwr.sh
    PASS: tests/iterative.sh
    PASS: tests/fit.sh
    PASS: tests/function_algebraic.sh
    PASS: tests/function_data.sh
    PASS: tests/function_file.sh
    PASS: tests/function_vectors.sh
    PASS: tests/integral.sh
    PASS: tests/laplace2d.sh
    PASS: tests/materials.sh
    PASS: tests/mesh.sh
    PASS: tests/moment-of-inertia.sh
    PASS: tests/nafems-le1.sh
    PASS: tests/nafems-le10.sh
    PASS: tests/nafems-le11.sh
    PASS: tests/nafems-t1-4.sh
    PASS: tests/nafems-t2-3.sh
    PASS: tests/neutron_diffusion_src.sh
    PASS: tests/neutron_diffusion_keff.sh
    PASS: tests/parallelepiped.sh
    PASS: tests/point-kinetics.sh
    PASS: tests/print.sh
    PASS: tests/thermal-1d.sh
    PASS: tests/thermal-2d.sh
    PASS: tests/trig.sh
    PASS: tests/two-cubes-isotropic.sh
    PASS: tests/two-cubes-orthotropic.sh
    PASS: tests/vector.sh
    XFAIL: tests/xfail-few-properties-ortho-young.sh
    XFAIL: tests/xfail-few-properties-ortho-poisson.sh
    XFAIL: tests/xfail-few-properties-ortho-shear.sh
    ============================================================================
    Testsuite summary for feenox v0.2.6-g3237ce9
    ============================================================================
    # TOTAL: 43
    # PASS:  39
    # SKIP:  0
    # XFAIL: 4
    # FAIL:  0
    # XPASS: 0
    # ERROR: 0
    ============================================================================
    make[3]: Leaving directory '/home/gtheler/codigos/feenox'
    make[2]: Leaving directory '/home/gtheler/codigos/feenox'
    make[1]: Leaving directory '/home/gtheler/codigos/feenox'
    $

The XFAIL result means that those cases are expected to fail (they are
there to test if FeenoX can handle errors). Failure would mean they
passed. In case FeenoX was not compiled with any optional dependency,
the corresponding tests will be skipped. Skipped tests do not mean any
failure, but that the compiled FeenoX executable does not have the full
capabilities. For example, when configuring with
./configure --without-petsc (but with SUNDIALS), the test suite output
should be a mixture of green and blue:

    $ ./configure --without-petsc
    [...]
    configure: creating ./src/version.h
    ## ----------------------- ##
    ## Summary of dependencies ##
    ## ----------------------- ##
      GNU Scientific Library  from system
      SUNDIALS                yes
      PETSc                   no
      SLEPc                   no
      Compiler                gcc
    checking that generated files are newer than configure... done
    configure: creating ./config.status
    config.status: creating Makefile
    config.status: creating src/Makefile
    config.status: creating doc/Makefile
    config.status: executing depfiles commands
    $ make
    [...]
    $ make check
    Making check in src
    make[1]: Entering directory '/home/gtheler/codigos/feenox/src'
    make[1]: Nothing to be done for 'check'.
    make[1]: Leaving directory '/home/gtheler/codigos/feenox/src'
    make[1]: Entering directory '/home/gtheler/codigos/feenox'
    cp -r src/feenox .
    make  check-TESTS
    make[2]: Entering directory '/home/gtheler/codigos/feenox'
    make[3]: Entering directory '/home/gtheler/codigos/feenox'
    XFAIL: tests/abort.sh
    PASS: tests/algebraic_expr.sh
    SKIP: tests/beam-modal.sh
    SKIP: tests/beam-ortho.sh
    PASS: tests/builtin.sh
    SKIP: tests/cylinder-traction-force.sh
    PASS: tests/default_argument_value.sh
    PASS: tests/expressions_constants.sh
    PASS: tests/expressions_variables.sh
    PASS: tests/expressions_functions.sh
    PASS: tests/exp.sh
    SKIP: tests/i-beam-euler-bernoulli.sh
    SKIP: tests/iaea-pwr.sh
    PASS: tests/iterative.sh
    PASS: tests/fit.sh
    PASS: tests/function_algebraic.sh
    PASS: tests/function_data.sh
    PASS: tests/function_file.sh
    PASS: tests/function_vectors.sh
    PASS: tests/integral.sh
    SKIP: tests/laplace2d.sh
    PASS: tests/materials.sh
    PASS: tests/mesh.sh
    PASS: tests/moment-of-inertia.sh
    SKIP: tests/nafems-le1.sh
    SKIP: tests/nafems-le10.sh
    SKIP: tests/nafems-le11.sh
    SKIP: tests/nafems-t1-4.sh
    SKIP: tests/nafems-t2-3.sh
    SKIP: tests/neutron_diffusion_src.sh
    SKIP: tests/neutron_diffusion_keff.sh
    SKIP: tests/parallelepiped.sh
    PASS: tests/point-kinetics.sh
    PASS: tests/print.sh
    SKIP: tests/thermal-1d.sh
    SKIP: tests/thermal-2d.sh
    PASS: tests/trig.sh
    SKIP: tests/two-cubes-isotropic.sh
    SKIP: tests/two-cubes-orthotropic.sh
    PASS: tests/vector.sh
    SKIP: tests/xfail-few-properties-ortho-young.sh
    SKIP: tests/xfail-few-properties-ortho-poisson.sh
    SKIP: tests/xfail-few-properties-ortho-shear.sh
    ============================================================================
    Testsuite summary for feenox v0.2.6-g3237ce9
    ============================================================================
    # TOTAL: 43
    # PASS:  21
    # SKIP:  21
    # XFAIL: 1
    # FAIL:  0
    # XPASS: 0
    # ERROR: 0
    ============================================================================
    make[3]: Leaving directory '/home/gtheler/codigos/feenox'
    make[2]: Leaving directory '/home/gtheler/codigos/feenox'
    make[1]: Leaving directory '/home/gtheler/codigos/feenox'
    $

To illustrate how regressions can be detected, let us add a bug
deliberately and re-run the test suite.

Edit the source file that contains the shape functions of the
second-order tetrahedra src/mesh/tet10.c, find the function
feenox_mesh_tet10_h() and randomly change a sign, i.e. replace

          return t*(2*t-1);

with

          return t*(2*t+1);

Save, recompile, and re-run the test suite to obtain some red:

    $ git diff src/mesh/
    diff --git a/src/mesh/tet10.c b/src/mesh/tet10.c
    index 72bc838..293c290 100644
    --- a/src/mesh/tet10.c
    +++ b/src/mesh/tet10.c
    @@ -227,7 +227,7 @@ double feenox_mesh_tet10_h(int j, double *vec_r) {
           return s*(2*s-1);
           break;
         case 3:
    -      return t*(2*t-1);
    +      return t*(2*t+1);
           break;
           
         case 4:
    $ make
    [...]
    $ make check
    Making check in src
    make[1]: Entering directory '/home/gtheler/codigos/feenox/src'
    make[1]: Nothing to be done for 'check'.
    make[1]: Leaving directory '/home/gtheler/codigos/feenox/src'
    make[1]: Entering directory '/home/gtheler/codigos/feenox'
    cp -r src/feenox .
    make  check-TESTS
    make[2]: Entering directory '/home/gtheler/codigos/feenox'
    make[3]: Entering directory '/home/gtheler/codigos/feenox'
    XFAIL: tests/abort.sh
    PASS: tests/algebraic_expr.sh
    FAIL: tests/beam-modal.sh
    PASS: tests/beam-ortho.sh
    PASS: tests/builtin.sh
    PASS: tests/cylinder-traction-force.sh
    PASS: tests/default_argument_value.sh
    PASS: tests/expressions_constants.sh
    PASS: tests/expressions_variables.sh
    PASS: tests/expressions_functions.sh
    PASS: tests/exp.sh
    PASS: tests/i-beam-euler-bernoulli.sh
    PASS: tests/iaea-pwr.sh
    PASS: tests/iterative.sh
    PASS: tests/fit.sh
    PASS: tests/function_algebraic.sh
    PASS: tests/function_data.sh
    PASS: tests/function_file.sh
    PASS: tests/function_vectors.sh
    PASS: tests/integral.sh
    PASS: tests/laplace2d.sh
    PASS: tests/materials.sh
    PASS: tests/mesh.sh
    PASS: tests/moment-of-inertia.sh
    PASS: tests/nafems-le1.sh
    FAIL: tests/nafems-le10.sh
    FAIL: tests/nafems-le11.sh
    PASS: tests/nafems-t1-4.sh
    PASS: tests/nafems-t2-3.sh
    PASS: tests/neutron_diffusion_src.sh
    PASS: tests/neutron_diffusion_keff.sh
    FAIL: tests/parallelepiped.sh
    PASS: tests/point-kinetics.sh
    PASS: tests/print.sh
    PASS: tests/thermal-1d.sh
    PASS: tests/thermal-2d.sh
    PASS: tests/trig.sh
    PASS: tests/two-cubes-isotropic.sh
    PASS: tests/two-cubes-orthotropic.sh
    PASS: tests/vector.sh
    XFAIL: tests/xfail-few-properties-ortho-young.sh
    XFAIL: tests/xfail-few-properties-ortho-poisson.sh
    XFAIL: tests/xfail-few-properties-ortho-shear.sh
    ============================================================================
    Testsuite summary for feenox v0.2.6-g3237ce9
    ============================================================================
    # TOTAL: 43
    # PASS:  35
    # SKIP:  0
    # XFAIL: 4
    # FAIL:  4
    # XPASS: 0
    # ERROR: 0
    ============================================================================
    See ./test-suite.log
    Please report to jeremy@seamplex.com
    ============================================================================
    make[3]: *** [Makefile:1152: test-suite.log] Error 1
    make[3]: Leaving directory '/home/gtheler/codigos/feenox'
    make[2]: *** [Makefile:1260: check-TESTS] Error 2
    make[2]: Leaving directory '/home/gtheler/codigos/feenox'
    make[1]: *** [Makefile:1791: check-am] Error 2
    make[1]: Leaving directory '/home/gtheler/codigos/feenox'
    make: *** [Makefile:1037: check-recursive] Error 1
    $

  [test]: https://github.com/seamplex/feenox/tree/main/tests
  [programming guide50]: programming.md

Installation

To be able to execute FeenoX from any directory, the binary has to be
copied to a directory available in the PATH environment variable. If you
have root access, the easiest and cleanest way of doing this is by
calling make install with sudo or su:

    $ sudo make install
    Making install in src
    make[1]: Entering directory '/home/gtheler/codigos/feenox/src'
    gmake[2]: Entering directory '/home/gtheler/codigos/feenox/src'
     /usr/bin/mkdir -p '/usr/local/bin'
      /usr/bin/install -c feenox '/usr/local/bin'
    gmake[2]: Nothing to be done for 'install-data-am'.
    gmake[2]: Leaving directory '/home/gtheler/codigos/feenox/src'
    make[1]: Leaving directory '/home/gtheler/codigos/feenox/src'
    make[1]: Entering directory '/home/gtheler/codigos/feenox'
    cp -r src/feenox .
    make[2]: Entering directory '/home/gtheler/codigos/feenox'
    make[2]: Nothing to be done for 'install-exec-am'.
    make[2]: Nothing to be done for 'install-data-am'.
    make[2]: Leaving directory '/home/gtheler/codigos/feenox'
    make[1]: Leaving directory '/home/gtheler/codigos/feenox'
    $

If you do not have root access or do not want to populate
/usr/local/bin, you can either

-   Configure with a different prefix (not covered here), or

-   Copy (or symlink) the feenox executable to $HOME/bin:

        mkdir -p ${HOME}/bin
        cp feenox ${HOME}/bin

    If you plan to regularly update FeenoX (which you should), you might
    want to symlink instead of copy so you do not need to update the
    binary in $HOME/bin each time you recompile:

        mkdir -p ${HOME}/bin
        ln -sf feenox ${HOME}/bin

Check that FeenoX is now available from any directory (note the command
is feenox and not ./feenox):

    $ cd
    $ feenox -v
    FeenoX v0.2.14-gbbf48c9
    a free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    Copyright © 2009--2022 https://seamplex.com/feenox
    GNU General Public License v3+, https://www.gnu.org/licenses/gpl.html. 
    FeenoX is free software: you are free to change and redistribute it.
    There is NO WARRANTY, to the extent permitted by law.
    $

If it is not and you went through the $HOME/bin path, make sure it is in
the PATH (pun). Add

    export PATH=${PATH}:${HOME}/bin

to your .bashrc in your home directory and re-login.

Advanced settings

Compiling with debug symbols

By default the C flags are -O3, without debugging. To add the -g flag,
just use CFLAGS when configuring:

    ./configure CFLAGS="-g -O0"

Using a different compiler

FeenoX uses the CC environment variable to set the compiler. So
configure like

    export CC=clang; ./configure

Note that the CC variable has to be exported and not passed to
configure. That is to say, don’t configure like

    ./configure CC=clang

Mind also the following environment variables when using MPI-enabled
PETSc:

-   MPICH_CC
-   OMPI_CC
-   I_MPI_CC

Depending on how your system is configured, this last command might show
clang but not actually use it. The FeenoX executable will show the
configured compiler and flags when invoked with the --versions option:

    $ feenox --versions
    FeenoX v0.2.14-gbbf48c9
    a free no-fee no-X uniX-like finite-element(ish) computational engineering tool

    Last commit date   : Sat Feb 12 15:35:05 2022 -0300
    Build date         : Sat Feb 12 15:35:44 2022 -0300
    Build architecture : linux-gnu x86_64
    Compiler version   : gcc (Debian 10.2.1-6) 10.2.1 20210110
    Compiler expansion : gcc -Wl,-z,relro -I/usr/include/x86_64-linux-gnu/mpich -L/usr/lib/x86_64-linux-gnu -lmpich
    Compiler flags     : -O3
    Builder            : gtheler@tom
    GSL version        : 2.6
    SUNDIALS version   : 5.7.0
    PETSc version      : Petsc Release Version 3.16.3, Jan 05, 2022 
    PETSc arch         : arch-linux-c-debug
    PETSc options      : --download-eigen --download-hdf5 --download-hypre --download-metis --download-mumps --download-parmetis --download-pragmatic --download-scalapack
    SLEPc version      : SLEPc Release Version 3.16.1, Nov 17, 2021
    $

You can check which compiler was actually used by analyzing the feenox
binary as

    $ objdump -s --section .comment ./feenox 

    ./feenox:     file format elf64-x86-64

    Contents of section .comment:
     0000 4743433a 20284465 6269616e 2031322e  GCC: (Debian 12.
     0010 322e302d 31342920 31322e32 2e300044  2.0-14) 12.2.0.D
     0020 65626961 6e20636c 616e6720 76657273  ebian clang vers
     0030 696f6e20 31342e30 2e3600             ion 14.0.6.     
    $ 

It should be noted that the MPI implementation used to compile FeenoX
has to match the one used to compile PETSc. Therefore, if you compiled
PETSc on your own, it is up to you to ensure MPI compatibility. If you
are using PETSc as provided by your distribution’s repositories, you
will have to find out which one was used (it is usually OpenMPI) and use
the same one when compiling FeenoX. FeenoX has been tested using PETSc
compiled with

-   MPICH
-   OpenMPI
-   Intel MPI

Compiling PETSc

Particular explanation for FeenoX is to be done. For now, follow the
general explanation from PETSc’s website.

    export PETSC_DIR=$PWD
    export PETSC_ARCH=arch-linux-c-opt
    ./configure --with-debugging=0 --download-mumps --download-scalapack --with-cxx=0 --COPTFLAGS=-O3 --FOPTFLAGS=-O3 

    export PETSC_DIR=$PWD
    ./configure --with-debugging=0 --with-openmp=0 --with-x=0 --with-cxx=0 --COPTFLAGS=-O3 --FOPTFLAGS=-O3 
    make PETSC_DIR=/home/ubuntu/reflex-deps/petsc-3.17.2 PETSC_ARCH=arch-linux-c-opt all

  [general explanation from PETSc’s website]: https://petsc.org/release/install/

Appendix: Inputs for solving LE10 with other FEA programs

This appendix illustrates the differences in the input file formats used
by FeenoX and the ones used by other open source finite-element solvers.
The problem being solved is the NAFEMS LE10 benchmark, first discussed
in sec. 1.2:

    # NAFEMS Benchmark LE-10: thick plate pressure
    PROBLEM mechanical DIMENSIONS 3
    READ_MESH nafems-le10.msh   # mesh in millimeters

    # LOADING: uniform normal pressure on the upper surface
    BC upper    p=1      # 1 Mpa

    # BOUNDARY CONDITIONS:
    BC DCD'C'   v=0      # Face DCD'C' zero y-displacement
    BC ABA'B'   u=0      # Face ABA'B' zero x-displacement
    BC BCB'C'   u=0 v=0  # Face BCB'C' x and y displ. fixed
    BC midplane w=0      #  z displacements fixed along mid-plane

    # MATERIAL PROPERTIES: isotropic single-material properties
    E = 210e3   # Young modulus in MPa
    nu = 0.3    # Poisson's ratio

    SOLVE_PROBLEM   # solve!

    # print the direct stress y at D (and nothing more)
    PRINT "σ_y @ D = " sigmay(2000,0,300) "MPa"

See the following URL and its links for further details about solving
this problem with the other codes:
https://cofea.readthedocs.io/en/latest/benchmarks/004-eliptic-membrane/tested-codes.html

  [NAFEMS LE10 benchmark]: https://www.seamplex.com/feenox/examples/#nafems-le10-thick-plate-pressure-benchmark

CalculiX

    ** Mesh ++++++++++++++++++++++++++++++++++++++++++++++++++++

    *INCLUDE, INPUT=Mesh/fine-lin-hex.inp		# Path to mesh for ccx solver

    ** Mesh ++++++++++++++++++++++++++++++++++++++++++++++++++++

    *MATERIAL, NAME=Steel				# Defining a material
    *DENSITY
     7800						# Defining a density
    *ELASTIC,
    2.1e11, 0.3					# Defining Young modulus and Poisson's ratio

    ** Sections ++++++++++++++++++++++++++++++++++++++++++++++++

    *SOLID SECTION, ELSET=ELIPSE, MATERIAL=Steel 	# Assigning material and plane stress elements
    0.1,						# to the elements sets in mesh and adding thickness

    ** Steps +++++++++++++++++++++++++++++++++++++++++++++++++++

    *STEP						# Begin of analysis
    *STATIC, SOLVER=SPOOLES				# Selection of elastic analysis

    ** Field outputs +++++++++++++++++++++++++++++++++++++++++++

    *EL FILE					# Commands responsible for saving results
    E, S
    *NODE FILE
    U

    ** Boundary conditions +++++++++++++++++++++++++++++++++++++

    *BOUNDARY,					# Applying translation = 0 on desired nodes
    AB,1,1,0
    *BOUNDARY
    CD,2,2,0

    ** Boundary conditions(adding pressure) ++++++++++++++++++++

    *DLOAD
    *INCLUDE, INPUT=Pressure/fine-lin-hex.dlo

    ** End step ++++++++++++++++++++++++++++++++++++++++++++++++

    *END STEP					# End on analysis

Code Aster

    mesh = LIRE_MAILLAGE(identifier='0:1',				# Reading a mesh
                         FORMAT='IDEAS',
                         UNITE=80)

    model = AFFE_MODELE(identifier='1:1',				# Assignig plane stress
                        AFFE=_F(MODELISATION=('C_PLAN', ),		# elements to mesh
                                PHENOMENE='MECANIQUE',
                                TOUT='OUI'),
                        MAILLAGE=mesh)

    mater = DEFI_MATERIAU(identifier='2:1',				# Defining elastic material
                          ELAS=_F(E=210000000000.0,
                                  NU=0.3))

    materfl = AFFE_MATERIAU(identifier='3:1',			# Assigning material to model
                            AFFE=_F(MATER=(mater, ),
                                    TOUT='OUI'),
                            MODELE=model)

    mecabc = AFFE_CHAR_MECA(identifier='4:1',			# Applying boundary conditions
                            DDL_IMPO=(_F(DX=0.0,			# displacement = 0
                                         GROUP_MA=('AB', )),	# to the selected group of elements
                                      _F(DY=0.0,
                                         GROUP_MA=('CD', ))),
                            MODELE=model)

    mecach = AFFE_CHAR_MECA(identifier='5:1',			# Applying pressure to the
                            MODELE=model,				# group of elements
                            PRES_REP=_F(GROUP_MA=('BC', ),
                                        PRES=-10000000.0))

    result = MECA_STATIQUE(identifier='6:1',			# Defining the results of
                           CHAM_MATER=materfl,			# simulation
                           EXCIT=(_F(CHARGE=mecabc),
                                  _F(CHARGE=mecach)),
                           MODELE=model)

    SYY = CALC_CHAMP(identifier='7:1',				# Calculating stresses in
                     CHAM_MATER=materfl,				# computed domain
                     CONTRAINTE=('SIGM_NOEU', ),
                     MODELE=model,
                     RESULTAT=result)

    IMPR_RESU(identifier='8:1',					# Saving the results
              FORMAT='MED',	  
              RESU=(_F(RESULTAT=result),
                    _F(RESULTAT=SYY)),
              UNITE=80)

    FIN()

Elmer

    Header
      CHECK KEYWORDS Warn
      Mesh DB "." "."				# Path to the mesh
      Include Path ""
      Results Directory ""				# Path to results directory
    End

    Simulation					# Settings and constants for simulation
      Max Output Level = 5
      Coordinate System = Cartesian
      Coordinate Mapping(3) = 1 2 3
      Simulation Type = Steady state
      Steady State Max Iterations = 1
      Output Intervals = 1
      Timestepping Method = BDF
      BDF Order = 1
      Solver Input File = case.sif
      Post File = case.vtu
    End

    Constants
      Gravity(4) = 0 -1 0 9.82
      Stefan Boltzmann = 5.67e-08
      Permittivity of Vacuum = 8.8542e-12
      Boltzmann Constant = 1.3807e-23
      Unit Charge = 1.602e-19
    End

    Body 1						# Assigning the material and equations to the mesh
      Target Bodies(1) = 10
      Name = "Body Property 1"
      Equation = 1
      Material = 1
    End

    Solver 2					# Solver settings
      Equation = Linear elasticity
      Procedure = "StressSolve" "StressSolver"
      Calculate Stresses = True
      Variable = -dofs 2 Displacement
      Exec Solver = Always
      Stabilize = True
      Bubbles = False
      Lumped Mass Matrix = False
      Optimize Bandwidth = True
      Steady State Convergence Tolerance = 1.0e-5
      Nonlinear System Convergence Tolerance = 1.0e-7
      Nonlinear System Max Iterations = 20
      Nonlinear System Newton After Iterations = 3
      Nonlinear System Newton After Tolerance = 1.0e-3
      Nonlinear System Relaxation Factor = 1
      Linear System Solver = Direct
      Linear System Direct Method = Umfpack
    End

    Solver 1					# Saving the results from node at point D
      Equation = SaveScalars
      Save Points = 26
      Procedure = "SaveData" "SaveScalars"
      Filename = file.dat
      Exec Solver = After Simulation
    End

    Equation 1					# Setting active solvers
      Name = "STRESS"
      Calculate Stresses = True
      Plane Stress = True				# Turning on plane stress simulation
      Active Solvers(1) = 2
    End

    Equation 2
      Name = "DATA"
      Active Solvers(1) = 1
    End

    Material 1					# Defining the material
      Name = "STEEL"
      Poisson ratio = 0.3
      Porosity Model = Always saturated
      Youngs modulus = 2.1e11
    End

    Boundary Condition 1				# Applying the boundary conditions
      Target Boundaries(1) = 12
      Name = "AB"
      Displacement 1 = 0
    End

    Boundary Condition 2
      Target Boundaries(1) = 13
      Name = "CD"
      Displacement 2 = 0
    End

    Boundary Condition 3
      Target Boundaries(1) = 14
      Name = "BC"
      Normal Force = 10e6
    End
