Papers
arxiv:2102.10570

Symbolic regression for scientific discovery: an application to wind speed forecasting

Published on Oct 26, 2021
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Abstract

Symbolic regression techniques, specifically the equation learner (EQL), can derive analytical equations for wind speed forecasting with reasonable accuracy using minimal features.

AI-generated summary

Symbolic regression corresponds to an ensemble of techniques that allow to uncover an analytical equation from data. Through a closed form formula, these techniques provide great advantages such as potential scientific discovery of new laws, as well as explainability, feature engineering as well as fast inference. Similarly, deep learning based techniques has shown an extraordinary ability of modeling complex patterns. The present paper aims at applying a recent end-to-end symbolic regression technique, i.e. the equation learner (EQL), to get an analytical equation for wind speed forecasting. We show that it is possible to derive an analytical equation that can achieve reasonable accuracy for short term horizons predictions only using few number of features.

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