A generalized dynamical model for wind speed forecasting

The Weibull distribution is commonly used to model wind speed data, mainly due to its good fit to asymmetric positive variables. Several proposals have extended this approach to accommodate realistic features of wind data such as nonstationary behavior due to changes in atmospheric regimes. The pres...

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Veröffentlicht in:Renewable & sustainable energy reviews 2021-02, Vol.136, p.110421, Article 110421
Hauptverfasser: Duca, Victor E.L.A., Fonseca, Thaís C.O., Cyrino Oliveira, Fernando L.
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Sprache:eng
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Zusammenfassung:The Weibull distribution is commonly used to model wind speed data, mainly due to its good fit to asymmetric positive variables. Several proposals have extended this approach to accommodate realistic features of wind data such as nonstationary behavior due to changes in atmospheric regimes. The present work considers wind speed modeling over time through the dynamic Weibull and Gamma state space models. Properties of both models are presented and filtering, smoothing and prediction equations are analytically obtained. Efficient simulation of scenarios is obtained through the beta prime distribution, which allows fast online forecasts of wind speed. The models are compared regarding fit and predictive performance for the analysis of two wind speed datasets in different regions of Brazil. Results indicate that the dynamic Gamma model is competitive with the Weibull model for wind prediction. •Wind scenarios are obtained through the Beta Prime distribution.•Dynamical Gamma model is competitive compared with the Weibull one for wind prediction.•Scenarios simulation are able to capture the stochastic features of wind speed.
ISSN:1364-0321
1879-0690
DOI:10.1016/j.rser.2020.110421