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easyGSA

easyGSA

View easyGSA on File Exchange License: MIT

Efficient global sensitivity analysis using mechanistic or machine learning models.

A MATLAB-based tool implementing the framework developed for performing efficient variance decomposition-based Sobol sensitivity analysis in the following paper.

Meta-modeling based efficient global sensitivity analysis for wastewater treatment plants – An application to the BSM2 model

If you benefit from this work and would like to cite easyGSA in publications, please use

@article{easyGSA,
  author  = {Resul Al and Chitta Ranjan Behera and Alexandr Zubov and Krist V. Gernaey and G\"urkan Sin},
  title   = {Meta-modeling based efficient global sensitivity analysis for wastewater treatment plants – An application to the BSM2 model},
  journal = {Computers \& Chemical Engineering},
  volume  = {127},
  pages   = {233--246},
  year    = {2019},
}

Installing easyGSA

Placing the single file (easyGSA.p) into your own working directory will suffice to make use of the full functionality of the tool.

Developers

License

The easyGSA tool is released under the MIT License.

Acknowledgements

This work has received funding from the European Union's Horizon 2020 research and innovation programme under the Marie Skłodowska-Curie grant agreement no.675251.

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View slides showing examples

easyGSA

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