Energies (Feb 2022)

Hourly Electricity Price Prediction for Electricity Market with High Proportion of Wind and Solar Power

  • Yangrui Zhang,
  • Peng Tao,
  • Xiangming Wu,
  • Chenguang Yang,
  • Guang Han,
  • Hui Zhou,
  • Yinlong Hu

DOI
https://doi.org/10.3390/en15041345
Journal volume & issue
Vol. 15, no. 4
p. 1345

Abstract

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In an open electricity market, increased accuracy and real-time availability of electricity price forecasts can help market parties participate effectively in market operations and management. As the penetration of clean energy increases, it brings new challenges to electricity price forecasting. An electricity price forecasting model is constructed in this paper for markets containing a high proportion of wind and solar power, where the scenario with a high coefficient of variation (COV) caused by the high frequency of low electricity prices is particularly concerned. The deep extreme learning machine optimized by the sparrow search algorithm (SSA-DELM) is proposed to make predictions on the model. The results show that wind–load ratio and solar–load ratio are the key input variables for forecasting in power markets with high proportions of wind and solar energy. The SSA-DELM possesses better electricity price forecasting performance in the scenario with a high COV and is more suitable for disordered time series models, which can be confirmed in comparison with LSTM.

Keywords