Feature Selection by Binary Differential Evolution for Predicting the Energy Production of a Wind Plant
Sameer Al-Dahidi,
Piero Baraldi,
Miriam Fresc
et al.
Abstract:We propose a method for selecting the optimal set of weather features for wind energy prediction. This problem is tackled by developing a wrapper approach that employs binary differential evolution to search for the best feature subset, and an ensemble of artificial neural networks to predict the energy production from a wind plant. The main novelties of the approach are the use of features provided by different weather forecast providers and the use of an ensemble composed of a reduced number of models for th… Show more
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