FMI.jl is a free-to-use software library for the Julia programming language which integrates the Functional Mock-Up Interface (fmi-standard.org): load or create, parameterize, differentiate, linearize, simulate and plot FMUs seamlessly inside the Julia programming language!
Documentation | |
Examples | |
Tests | |
FMI cross checks | |
Package evaluation | |
Code coverage | |
Collaboration | |
Formatting |
If you want to migrate your project from FMI.jl < v1.0.0 to >= v1.0.0, you will face some breaking changes - but they are worth it as you will see! We decided to do multiple smaller breaking changes starting with v0.14.0, instead of one big one. Some of them are already implemented (checked), some are still on the todo (unchecked) but will be implemented before releasing v1.0.0.
-
Many functions, that are not part of the FMI-standard, had the prefix
fmi2...
orfmi3...
. This was corrected. Now, only functions that are defined by the standard itself, like e.g.fmi2Instantiate
are allowed to keep the prefix. Other methods, likefmi2ValueReferenceToString
, that where added to make this library more comfortable, are now cleaned to be more the Julia way:valueReferenceToString
. If your code errors, the corresponding function might have lost it's prefix, so try this first. -
Wrapper functions where removed, because that is not the Julia way. In most cases, this will not affect your code.
-
FMICore.jl and FMIImport.jl were divided into FMICore.jl, FMIImport.jl and FMIBase.jl. FMICore.jl now holds the pure standard definition (C-types and -functions), while FMIBase.jl holds everything that is needed on top of that in FMIImport.jl as well as in FMIExport.jl.
-
Updated all library examples.
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Updated all library tests for a better code coverage.
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We tried to document every function, if you find undocumented user-level functions, please open an issue or PR.
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Allocations, type stability and code format where optimized and are monitored by CI now.
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Dependencies are reduced a little, to make the libraries more light-weight.
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RAM for allocated FMUs, their instances and states, is now auto-released. For maximum performance/safety you can use FMUs in blocks (like file reading/writing).
-
New low-level interfaces are introduced, that fit the SciML-ecosystem. For example, a FMU can still be simulated with
simulate(fmu)
, but one can also decide to create aprob = FMUProblem(fmu)
(like anODEProblem
) and usesolve(prob)
to obtain a solution. Keywords will be adapted to have a fully consistent interface with the remaining SciML-ecosystem. -
Optimization for new Julia LTS v1.10, removing code to keep downward compatibility with old LTS v1.6.
🎉 After all listed features are implemented, v1.0.0 will be released! 🎉
1. Open a Julia-REPL, switch to package mode using ]
, activate your preferred environment.
2. Install FMI.jl:
(@v1) pkg> add FMI
3. If you want to check that everything works correctly, you can run the tests bundled with FMI.jl:
(@v1) pkg> test FMI
4. Have a look inside the examples folder in the examples branch or the examples section of the documentation. All examples are available as Julia-Script (.jl), Jupyter-Notebook (.ipynb) and Markdown (.md).
using FMI, Plots
# load and instantiate a FMU
fmu = loadFMU(pathToFMU)
# simulate from t=0.0s until t=10.0s and record the FMU variable named "mass.s"
simData = simulate(fmu, (0.0, 10.0); recordValues=["mass.s"])
# plot it!
plot(simData)
# free memory
unloadFMU(myFMU)
- importing the full FMI 2.0.3 and FMI 3.0.0 command set, including optional specials like
fmi2GetFMUstate
,fmi2SetFMUstate
andfmi2GetDirectionalDerivatives
- parameterization, simulation & plotting of CS- and ME-FMUs
- event-handling for imported discontinuous ME-FMUs
FMI2.0.3 | FMI3.0 | SSP1.0 | ||||
---|---|---|---|---|---|---|
Import | Export | Import | Export | Import | Export | |
CS | ✔️✔️ | 🚧 | ✔️✔️ | 📅 | 📅 | 📅 |
ME (continuous) | ✔️✔️ | ✔️✔️ | ✔️✔️ | 📅 | 📅 | 📅 |
ME (discontinuous) | ✔️✔️ | ✔️✔️ | ✔️✔️ | 📅 | 📅 | 📅 |
SE | 🚫 | 🚫 | 🚧 | 📅 | 🚫 | 🚫 |
Explicit solvers | ✔️✔️ | ✔️✔️ | ✔️✔️ | 📅 | 📅 | 📅 |
Implicit solvers (autodiff=false) | ✔️✔️ | ✔️✔️ | ✔️✔️ | 📅 | 📅 | 📅 |
Implicit solvers (autodiff=true) | ✔️ | ✔️✔️ | ✔️ | 📅 | 📅 | 📅 |
get/setFMUstate | ✔️✔️ | 📅 | ✔️✔️ | 📅 | 🚫 | 🚫 |
getDirectionalDerivatives | ✔️✔️ | 📅 | ✔️✔️ | 📅 | 🚫 | 🚫 |
getAdjointDerivatives | 🚫 | 🚫 | ✔️✔️ | 📅 | 🚫 | 🚫 |
FMI Cross Checks | ✔️✔️ | 📅 | 📅 | 📅 | 🚫 | 🚫 |
64-bit binaries in FMUs | ✔️✔️ | ✔️✔️ | ✔️✔️ | 📅 | 🚫 | 🚫 |
32-bit binaries in FMUs | ✔️ | 📅 | 📅 | 📅 | 🚫 | 🚫 |
✔️✔️ supported & CI-tested
✔️ beta supported: implemented, but not CI-tested
🚧 work in progress
📅 planned
🚫 not supported by the corresponding FMI standard (not applicable)
❌ not planned
To keep dependencies nice and clean, the original package FMI.jl had been split into new packages:
- FMI.jl: High level loading, manipulating, saving or building entire FMUs from scratch
- FMIImport.jl: Importing FMUs into Julia
- FMIExport.jl: Exporting stand-alone FMUs from Julia Code
- FMIBase.jl: Common concepts for import and export of FMUs
- FMICore.jl: C-code wrapper for the FMI-standard
- FMISensitivity.jl: Static and dynamic sensitivities over FMUs
- FMIBuild.jl: Compiler/Compilation dependencies for FMIExport.jl
- FMIFlux.jl: Machine Learning with FMUs
- FMIZoo.jl: A collection of testing and example FMUs
FMI.jl is tested (and testing) under Julia Versions 1.6 LTS (64-bit) and latest (64-bit) on Windows latest (64-bit, 32-bit) and Ubuntu latest (64-bit). Mac (64-bit, 32-bit) and Ubuntu (32-bit) should work, but untested. For the best performance, we recommend using Julia >= 1.7, even if we support and test for the official LTS (1.6.7).
Tobias Thummerer, Lars Mikelsons and Josef Kircher. 2021. NeuralFMU: towards structural integration of FMUs into neural networks. Martin Sjölund, Lena Buffoni, Adrian Pop and Lennart Ochel (Ed.). Proceedings of 14th Modelica Conference 2021, Linköping, Sweden, September 20-24, 2021. Linköping University Electronic Press, Linköping (Linköping Electronic Conference Proceedings ; 181), 297-306. DOI: 10.3384/ecp21181297
Tobias Thummerer, Johannes Stoljar and Lars Mikelsons. 2022. NeuralFMU: presenting a workflow for integrating hybrid NeuralODEs into real-world applications. Electronics 11, 19, 3202. DOI: 10.3390/electronics11193202
Tobias Thummerer, Johannes Tintenherr, Lars Mikelsons. 2021 Hybrid modeling of the human cardiovascular system using NeuralFMUs Journal of Physics: Conference Series 2090, 1, 012155. DOI: 10.1088/1742-6596/2090/1/012155
Contributors are welcome. Before contributing, please read, understand and follow the Contributor's Guide on Collaborative Practices for Community Packages. During development of new implementations or optimizations on existing code, one will have to make design decisions that influence the library performance and usability. The following prioritization should be the basis for decision-making:
- #1 Compliance with standard: It is the highest priority to be compliant with the FMI standard (fmi-standard.org). Identifiers described in the standard must be used. Topologies should follow the specification as far as the possibilities of the Julia programming language allows.
- #2 Performance: Because FMI.jl is a simulation tool, performance is very important. This applies to the efficient use of CPU and GPU, but also the conscientious use of RAM and disc space.
- #3 Usability: The library should be as usable as possible and feel "the Julia way" (e.g. by using multiple dispatch instead of the "C coding style"), as long as being fully compliant with the FMI standard.