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Ultra-Short-Term Load Dynamic Forecasting Method Considering Abnormal Data Reconstruction Based on Model Incremental Training

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  • Guangyu Chen

    (School of Electric Power Engineering, Nanjing Institute of Technology, Nanjing 211167, China)

  • Yijie Wu

    (School of Electric Power Engineering, Nanjing Institute of Technology, Nanjing 211167, China)

  • Li Yang

    (State Grid Fujian Electric Power Company Limited, Fuzhou 350001, China)

  • Ke Xu

    (School of Electric Power Engineering, Nanjing Institute of Technology, Nanjing 211167, China)

  • Gang Lin

    (State Grid Fujian Electric Power Company Quanzhou Power Supply Company, Quanzhou 362000, China)

  • Yangfei Zhang

    (School of Electric Power Engineering, Nanjing Institute of Technology, Nanjing 211167, China)

  • Yuzhuo Zhang

    (School of Electric Power Engineering, Nanjing Institute of Technology, Nanjing 211167, China)

Abstract

In order to reduce the influence of abnormal data on load forecasting effects and further improve the training efficiency of forecasting models when adding new samples to historical data set, an ultra-short-term load dynamic forecasting method considering abnormal data reconstruction based on model incremental training is proposed in this paper. Firstly, aiming at the abnormal data in ultra-short-term load forecasting, a load abnormal data processing method based on isolation forests and conditional adversarial generative network (IF-CGAN) is proposed. The isolation forest algorithm is used to accurately eliminate the abnormal data points, and a conditional generative adversarial network (CGAN) is constructed to interpolate the abnormal points. The load-influencing factors are taken as the condition constraints of the CGAN, and the weighted loss function is introduced to improve the reconstruction accuracy of abnormal data. Secondly, aiming at the problem of low model training efficiency caused by the new samples in the historical data set, a model incremental training method based on a bidirectional long short-term memory network (Bi-LSTM) is proposed. The historical data are used to train the Bi-LSTM, and the transfer learning is introduced to process the incremental data set to realize the adaptive and rapid adjustment of the model weight and improve the model training efficiency. Finally, the real power grid load data of a region in eastern China are used for simulation analysis. The calculation results show that the proposed method can reconstruct the abnormal data more accurately and improve the accuracy and efficiency of ultra-short-term load forecasting.

Suggested Citation

  • Guangyu Chen & Yijie Wu & Li Yang & Ke Xu & Gang Lin & Yangfei Zhang & Yuzhuo Zhang, 2022. "Ultra-Short-Term Load Dynamic Forecasting Method Considering Abnormal Data Reconstruction Based on Model Incremental Training," Energies, MDPI, vol. 15(19), pages 1-21, October.
  • Handle: RePEc:gam:jeners:v:15:y:2022:i:19:p:7353-:d:935078
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    References listed on IDEAS

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    1. Nan Shao & Yu Chen, 2022. "Abnormal Data Detection and Identification Method of Distribution Internet of Things Monitoring Terminal Based on Spatiotemporal Correlation," Energies, MDPI, vol. 15(6), pages 1-19, March.
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