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Closes #524
This is a proposal of a new correlation method, based on Multi Layer Perceptron using sklearn along with python-cmethods for Empirical Quantile Mapping from @btschwertfeger (Benjamin T. Schwertfeger. (2025). btschwertfeger/python-cmethods: v2.3.1 (v2.3.1). Zenodo. https://doi.org/10.5281/zenodo.15128642).
The MLP + EQM process is inspired by Vortex Remodelling method from @gcavero98.
Thanks to @phil-brad for his introduction to sklearn ML regressions.
Note that this code is just a proof-of-concept for the time being and was tested on 1 site only.
Formal validation MUST be done before using it for annual energy estimate.