Electric Power ›› 2024, Vol. 57 ›› Issue (4): 100-110.DOI: 10.11930/j.issn.1004-9649.202306080

• New Energy • Previous Articles     Next Articles

Day-Ahead Probabilistic Prediction Model for Photovoltaic Power Based on Combined Deep Learning

Yan GAO1(), Hanbin WU1(), Jixin ZHANG1(), Huaming ZHANG2(), Pei ZHANG3()   

  1. 1. Baoding Power Supply Branch, State Grid Hebei Electric Power Co., Ltd., Baoding 071000, China
    2. Beijing Qingsoft Innovation Technology Co., Ltd., Beijing 102208, China
    3. School of Electrical Engineering, Beijing Jiaotong University, Beijing 100089, China
  • Received:2023-06-23 Accepted:2023-09-21 Online:2024-04-23 Published:2024-04-28
  • Supported by:
    This work is supported by State Grid Hebei Electric Power Co., Ltd. (Load Forecasting Methods for Multiple Level Power Grid with High Penetration of Distributed Photovoltaic Generation, No.kj2022-051).

Abstract:

To accurately quantify the uncertainty in the predicted photovoltaic (PV) power in complex scenarios, a short-term probabilistic prediction method for PV power based on a combination of temporal convolutional networks-attention mechanism-long short-term memory networks is proposed in this paper. Firstly, mete-orological factors strongly correlated with PV power are selected based on multiple correlation analysis methods. Then, a combined deep learning prediction model is built based on the feature extraction capability of the temporal convolutional network and the temporal feature modeling capability of the long and short-term memory network, combined with the attention mechanism and quantile regression. Finally, a kernel density estimation method is used to generate a continuous probability density function. The cases of actual centralized and distributed PV plants are analyzed, and the results show that compared with long short-term memory networks, temporal convolutional networks, temporal convolutional networks-attention mechanism, and temporal convolutional networks-long short-term memory networks, the proposed method can improve the performance of probability density prediction while ensuring the optimal prediction interval.

Key words: probabilistic prediction, temporal convolutional network, long short-term memory network, attention mechanism