Title :
Evolutionary feature weighting for wind power prediction with nearest neighbor regression
Author :
Treiber, Nils Andre ; Kramer, Oliver
Author_Institution :
University of Oldenburg, Uhlhornsweg 84, 26111 Oldenburg
Abstract :
Optimizing the weighting of features significantly improves the predictions in regression tasks. In this paper, we employ evolution strategies to evolve distance measures in a spatio-temporal regression approach for short-term wind prediction. The well-understood nearest neighbor regression method is the basis of our study. We compare a classic feature selection approach based on binary representations to the evolvement of continuous feature weights with the CMA-ES. The latter scales the original feature space and turns out to be the most successful approach in an experimental analysis on five benchmark turbines. We compare to standard nearest neighbor regression and concentrate on the interplay of training, validation, and test sets with a focus on overfitting the prediction model.
Keywords :
Accuracy; Optimization; Predictive models; Training; Wind forecasting; Wind turbines;
Conference_Titel :
Evolutionary Computation (CEC), 2015 IEEE Congress on
Conference_Location :
Sendai, Japan
DOI :
10.1109/CEC.2015.7256910