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An EMD-SVM model with error compensation for short-term wind speed forecasting

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  • Yuanyuan Xu
  • Tianhe Yao
  • Genke Yang

Abstract

In this paper, we propose an empirical mode decomposition-support vector machine (EMD-SVM) model with error compensation in order to reduce the cumulative error and improve the prediction accuracy of short-term wind speed forecasting. The essential idea behind the proposed approach is that the error of the current prediction is highly correlated with the previous prediction errors, and the forecasted speed should be compensated in terms of the errors incurred from previous predictions. Specifically, we first predict the historical data by the EMD-SVM model so as to obtain the corresponding prediction errors. Then, we establish the error compensation mechanism. Finally, we combine the EMD-SVM model with error compensation to obtain the final prediction results. The error compensation strategy is validated by a series of actual 10 min wind speed data collected from New Zealand. Experimental results demonstrate that the proposed EMD-SVM model with error compensation can be successfully applied to short-term wind speed forecasting, and it has higher accuracy and stronger robustness compared with the method without error compensation.

Suggested Citation

  • Yuanyuan Xu & Tianhe Yao & Genke Yang, 2019. "An EMD-SVM model with error compensation for short-term wind speed forecasting," International Journal of Information Technology and Management, Inderscience Enterprises Ltd, vol. 18(2/3), pages 171-181.
  • Handle: RePEc:ids:ijitma:v:18:y:2019:i:2/3:p:171-181
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    Cited by:

    1. Xu, Yuanyuan & Yang, Genke & Luo, Jiliang & He, Jianan & Sun, Haixin, 2022. "A multi-location short-term wind speed prediction model based on spatiotemporal joint learning," Renewable Energy, Elsevier, vol. 183(C), pages 148-159.

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