LI Xiaoping, HE Lubing, SHANG Longkang. Multi-Factor Short-Term Power Load Forecasting Based on Adversarial Training[J]. 2025, 45(4): 143-150. DOI: 10.3969/j.issn.1008-0198.2025.04.020.
Multi-Factor Short-Term Power Load Forecasting Based on Adversarial Training
In order to improve the accuracy and stability of power load forecasting
a multi-factor power load forecasting model based on adversarial training is proposed for short-term power load forecasting. This method combines historical load data and the weather and other characteristics of the forecast day to predict the power load and enhances the robustness of the prediction model to adversarial samples through adversarial training. Experimental results on a public dataset show that this method outperforms similar methods that only consider historical load data in terms of prediction accuracy and shows better robustness to adversarial samples.
关键词
Keywords
references
PARK C,HEO W G.Review of the changing electricity industry value chain in the ICT convergence era[J]. Journal of Cleaner Production,2020,258(4):120743.
ALMESHAIEI E,SOLTAN H.A methodology for electric power load forecasting[J]. Alexandria Engineering Journal, 2011,50(2):137-144.
PRABADEVI B,PHAM Q V,LIYANAGE M,et al.Deep learning for intelligent demand response and smart grids:a comprehensive survey[J]. Computer Science Review,2024,51:100617.
MAHMUD M A.Isolated Area Load Forecasting using linear regression analysis:practical approach[J]. Energy and Power Engineering,2011,3(4):547-550.
AHMAD A S,HASSAN M Y,ABDULLAH M P,et al.A review on applications of ANN and SVM for building electrical energy consumption forecasting[J]. Renewable and Sustainable Energy Reviews,2014,33:102-109.
QIN J,LIU H Z,MENG H F,et al.Robust dynamic economic dispatch in smart grids using an intelligent learning technology[J]. IEEE Transactions on Network Science and Engineering,2024,11(4):3759-3770.
ZHANG W,LI M,WANG X M,et al.Study on the Mechanical Properties of Novel Composite Materials[J]. Journal of Materials Science,2023,58(12):4567-4579.
NGUYEN V B,DUONG M T,LE M H.Electricity demand forecasting for smart grid based on deep learning approach[C]//2020 5th International Conference on Green Technology and Sustainable Development(GTSD). Ho Chi Minh City,Vietnam. IEEE,2020:353-357.
SON N,YANG S,NA J.Deep neural network and long short-term memory for electric power load forecasting[J].Applied Sciences,2020,10(18):6489.
SHAO X R,KIM C S,SONTAKKE P,et al.Accurate deep model for electricity consumption forecasting using multi-channel and multi-scale feature fusion CNN-LSTM[J]. Energies,2020,13(8):1881.
HUANG S T,SHEN J,LV Q Q,et al.A novel NODE approach combined with LSTM for short-term electricity load forecasting[J]. Future Internet,2023,15(1):22.
YANG Y B,HAQ E U,JIA Y W.A novel deep learning approach for short and medium-term electrical load forecasting based on pooling LSTM-CNN model[C]//2020 IEEE/IAS Industrial and Commercial Power System Asia(I&CPS Asia). Weihai,China. IEEE,2020:26-34.