计算机应用研究2026,Vol.43Issue(4):1046-1053,8.DOI:10.19734/j.issn.1001-3695.2025.08.0295
基于EWT-TOPSIS融合和波动性感知注意力的短期电力负荷预测
Short-term electricity load forecasting using EWT-TOPSIS fusion and volatility-aware attention
摘要
Abstract
Accurate power load forecasting serves as a critical technology for ensuring the safe and stable operation of power grids and optimizing energy dispatch.Addressing the nonlinearity,non-stationarity,and complex temporal variation characteri-stics of power load sequences,this study proposed a prediction model integrating empirical wavelet transform(EWT),tech-nique for order preference by similarity to ideal solution(TOPSIS)decision-making,and volatility-aware attention mecha-nism.The model firstly employed EWT to dynamically decompose load sequences and generate five intrinsic mode functions.It then designed a multi-scale volatility analyzer to extract time-domain statistical features.Subsequently,it constructed a volatility-aware attention mechanism to dynamically modulate sequence weights.Finally,it introduced a two-stage TOPSIS feature fusion layer to achieve optimal integration of multi-source heterogeneous information.Experimental results demonstrate that on the Panama dataset,the model achieves a mean absolute error(MAE)of 39.87 MW,root mean squared error(RMSE)of 57.25 MW,and mean absolute percentage error(MAPE)of 3.21%.Compared to baseline models such as Crossformer and PatchTST,MAE reduces by 10.73%~67.09%and RMSE reduces by 5.81%~61.25%.On the Australian dataset,the model obtains MAE of 191.11 MW,RMSE of 244.96 MW,and MAPE of 2.06%,with MAE reduction of 2.31%~54.57%.Ablation experiments validate the effectiveness of the frequency-time-statistical feature collaborative modeling and volatility-aware adaptive mechanism.关键词
短期负荷预测/经验小波变换/TOPSIS特征融合/波动性感知注意力/深度学习/时间序列预测Key words
short-term load forecasting/empirical wavelet transform/TOPSIS feature fusion/volatility-aware attention/deep learning/time series forecasting分类
信息技术与安全科学引用本文复制引用
陈思溢,胡双麟,袁博..基于EWT-TOPSIS融合和波动性感知注意力的短期电力负荷预测[J].计算机应用研究,2026,43(4):1046-1053,8.基金项目
湖南省优秀青年科学家基金资助项目(22B0156) (22B0156)