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Publicaciones

Multiclass Prediction of Wind Power Ramp Events Combining Reservoir Computing and Support Vector Machines

Authors

Dorado-Moreno, Manuel , DURAN ROSAL, ANTONIO MANUEL, Guijo-Rubio, David , Antonio Gutierrez, Pedro , Prieto, Luis , Salcedo-Sanz, Sancho , Hervas-Martinez, Cesar

External publication

Si

Means

Lect. Notes Comput. Sci.

Scope

Proceedings Paper

Nature

Científica

JCR Quartile

SJR Quartile

SJR Impact

0.339

Publication date

01/01/2016

ISI

000387750600028

Abstract

This paper proposes a reservoir computing architecture for predicting wind power ramp events (WPREs), which are strong increases or decreases of wind speed in a short period of time. This is a problem of high interest, because WPREs increases the maintenance costs of wind farms and hinders the energy production. The standard echo state network architecture is modified by replacing the linear regression used to compute the reservoir outputs by a nonlinear support vector machine, and past ramp function values are combined with reanalysis data to perform the prediction. Another novelty of the study is that we will predict three type of events (negative ramps, non-ramps and positive ramps), instead of binary classification of ramps, given that the type of ramp can be crucial for the correct maintenance of the farm. The model proposed obtains satisfying results, being able to correctly predict around 70% of WPREs and outperforming other models.

Keywords

Wind ramp events; Reservoir computing; Echo state networks; Support vector machines