Adaptive Feature Selection for Probabilistic Multi-Energy load forecasting

Accurate probabilistic forecasting of the multi-energy loads can provide essential uncertainty information about future loads for the management of integrated energy systems. The selection of appropriate features lays a critical foundation to achieve accurate forecasting, but such an issue is not th...

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Veröffentlicht in:IEEE transactions on industry applications 2023, p.1-11
Hauptverfasser: Ge, Yi, Zhang, Wenjia, Liu, Guojing, Li, Zesen, Li, Hu
Format: Artikel
Sprache:eng
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Zusammenfassung:Accurate probabilistic forecasting of the multi-energy loads can provide essential uncertainty information about future loads for the management of integrated energy systems. The selection of appropriate features lays a critical foundation to achieve accurate forecasting, but such an issue is not thoroughly studied for probabilistic load forecasting, especially for multi-energy loads. In this paper, we propose an adaptive feature selection framework for probabilistic multi-energy load forecasting by considering different operation patterns to select pattern-specific features. Specifically, we develop a ProbLassoNet model by integrating the multi-quantile regression model with the residual-connecting-Lasso operation to capture both linearity and nonlinearity for effective feature selection. We conduct experiments on an open dataset and validate that the proposed method can significantly improve probabilistic multi-energy load forecasting by distinguishing important features from redundant features. We also provide a comprehensive analysis of important features and multi-energy relationships in different periods, which can serve as a reference for further research on multi-energy load forecasting.
ISSN:0093-9994
1939-9367
DOI:10.1109/TIA.2023.3344540