IEEE Access (Jan 2021)

A Novel Efficient DLUBE Model Constructed by Error Interval Coefficients for Clustered Wind Power Prediction

  • Xiaosheng Peng,
  • Qiyou Xu,
  • Hongyu Wang,
  • Jianxun Lang,
  • Wenze Li,
  • Tao Cai,
  • Shanxu Duan,
  • Yuying Xie,
  • Chaoshun Li

DOI
https://doi.org/10.1109/ACCESS.2021.3073995
Journal volume & issue
Vol. 9
pp. 61739 – 61751

Abstract

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Interval prediction is essential to improve the scheduling and planning of wind power systems. In this study, a novel lower upper bound estimation model based on the gated recurrent unit was proposed for the clustered wind power forecasting. Different from existing research, the proposed model directly realizes interval prediction based on the point prediction results and the corresponding error interval coefficients, and an unsupervised learning strategy is introduced to construct the error interval coefficients. In addition, loss functions related to the characteristics of the prediction interval are designed, and an effective gradient descent algorithm is adopted to optimize the entire model. In the comparative experiments, two clustered data were collected as experimental data, and seven representative models were selected as benchmark models, which fully proved the superiority of the proposed model.

Keywords