The software foxes
is a modular wind farm simulation and wake modelling toolbox which is based on engineering wake models. It has many applications, for example
- Wind farm optimization, e.g. layout optimization or wake steering,
- Wind farm post-construction analysis,
- Wake model studies, comparison and validation,
- Wind farm simulations invoking complex model chains.
The fast performance of foxes
is owed to vectorization and parallelization,
and it is intended to be used for large wind farms and large timeseries inflow data.
The parallelization on local or remote clusters is supported, based on
mpi4py or
dask.distributed.
The wind farm
optimization capabilities invoke the foxes-opt package which
as well supports vectorization and parallelization.
foxes
is build upon many years of experience with wake model code development at IWES, starting with the C++ based in-house code flapFOAM (2011-2019) and the Python based direct predecessor flappy (2019-2022).
Documentation: https://fraunhoferiwes.github.io/foxes.docs/index.html
Source code: https://github.com/FraunhoferIWES/foxes
PyPi reference: https://pypi.org/project/foxes/
Anaconda reference: https://anaconda.org/conda-forge/foxes
Please cite the JOSS paper "FOXES: Farm Optimization and eXtended yield Evaluation Software"
Bibtex:
@article{
Schmidt2023,
author = {Jonas Schmidt and Lukas Vollmer and Martin Dörenkämper and Bernhard Stoevesandt},
title = {FOXES: Farm Optimization and eXtended yield Evaluation Software},
doi = {10.21105/joss.05464},
url = {https://doi.org/10.21105/joss.05464},
year = {2023},
publisher = {The Open Journal},
volume = {8},
number = {86},
pages = {5464},
journal = {Journal of Open Source Software}
}
The supported Python versions are:
Python 3.8
Python 3.9
Python 3.10
Python 3.11
Python 3.12
Python 3.13
Either install via pip:
pip install foxes
Alternatively, install via conda:
conda install foxes -c conda-forge
For detailed examples of how to run foxes, check the examples
and notebooks
folders in this repository. A minimal running example is the following, based on provided static csv
data files:
import foxes
states = foxes.input.states.Timeseries("timeseries_3000.csv.gz", ["WS", "WD","TI","RHO"])
farm = foxes.WindFarm()
foxes.input.farm_layout.add_from_file(farm, "test_farm_67.csv", turbine_models=["NREL5MW"])
algo = foxes.algorithms.Downwind(farm, states, ["Jensen_linear_k007"])
farm_results = algo.calc_farm()
print(farm_results)
For testing, please clone the repository and install the required dependencies:
git clone https://github.com/FraunhoferIWES/foxes.git
cd foxes
pip install -e .[test]
The tests are then run by
pytest tests
- Fork foxes on github.
- Create a branch (
git checkout -b new_branch
) - Commit your changes (
git commit -am "your awesome message"
) - Push to the branch (
git push origin new_branch
) - Create a pull request here
The development of foxes and its predecessors flapFOAM and flappy (internal - non public) has been supported through multiple publicly funded research projects. We acknowledge in particular the funding by the Federal Ministry of Economic Affairs and Climate Action (BMWK) through the projects Smart Wind Farms (grant no. 0325851B), GW-Wakes (0325397B) and X-Wakes (03EE3008A), as well as the funding by the Federal Ministry of Education and Research (BMBF) in the framework of the project H2Digital (03SF0635). We furthermore acknowledge funding by the Horizon Europe project FLOW (Atmospheric Flow, Loads and pOwer for Wind energy - grant id 101084205).