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A multi-factor collaborative electricity load forecasting method based on feature importance and multi-scale feature extraction
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作者 Qiao Yan Wenpeng Cao +3 位作者 Yi Yan Chengdong Li Chongyi Tian Wen Kong 《Energy and AI》 2025年第3期1128-1145,共18页
In power systems,environmental fluctuations and electricity price volatility introduce uncertainties in user energy consumption behaviors,posing significant challenges to reliable energy planning.Existing studies ofte... In power systems,environmental fluctuations and electricity price volatility introduce uncertainties in user energy consumption behaviors,posing significant challenges to reliable energy planning.Existing studies often overlook the coupled relationships between the importance and correlations of multiple complex variables,lack consideration of the weighting and distribution of multi-dimensional features across multi-scale spaces,and fall short in multi-scale extraction and fusion of complex spatiotemporal characteristics.To address these issues,this paper proposes a multi-factor collaborative load forecasting method based on feature importance and multi-scale feature extraction.First,a novel evaluation model integrating feature importance and correlation is developed,and a comprehensive feature importance assessment method is proposed.Then,a multi-dimensional weighting extraction framework is designed,from which a multi-dimensional weight matrix and its multi-layer input structure are constructed.Finally,a multi-scale fusion model driven by a multi-channel convolutional neural network is developed.The backbone network is a multi-channel convolutional structure,consisting of a multilevel feature extraction module in the front,a multi-scale sampling mechanism in the middle,and a multiscale feature fusion architecture in the rear.Based on the proposed comprehensive feature importance assessment method,a multi-factor collaborative load forecasting model is established,achieving accurate load prediction.Experimental results demonstrate that,compared with various state-of-the-art forecasting models,the proposed method reduces Mean Absolute Error(MAE),Root Mean Square Error(RMSE),and Mean Absolute Percentage Error(MAPE)by up to 28.30%,24.14%,and 30.35%,respectively. 展开更多
关键词 comprehensive feature importance Multi-dimensional weight matrix Multi-factor collaboration Multi-scale sampling
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