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Published July 2021 | public
Journal Article

Short-term load forecasting of industrial customers based on SVMD and XGBoost

Abstract

The electricity consumption by industrial customers in the society accounts for a significant proportion of the total electrical energy. Thus, it is of great significance for demand-side electrical energy management to develop an accurate method for short-term load forecasting for industrial customers. Unlike traditional load forecasting on system-level, the load forecasting of individual industrial customer is more challenging due to its significant volatility and uncertainty. We propose an adaptive decomposition method based on VMD and SampEn (SVMD) to decompose the raw load data into a trend series and a set of fluctuation sub-series, and then establish the corresponding prediction model (line regression model for the trend series and XGBoost regression model for each fluctuation sub-series). The hyper-parameters of XGBoost are optimized by bayesian optimization algorithm (BOA). Furthermore, relevant factors that affect the electricity consumption behavior of industrial customers are considered in order to further improve the accuracy of the hybrid method. The proposed method is tested in multiple scenarios with different industrial customers of China and Irish. The results show that the proposed model has significantly improved performance over the contrast models in state-of-the-art load forecasting.

Additional Information

© 2021 Elsevier Ltd. Received 3 September 2020, Revised 5 December 2020, Accepted 18 January 2021, Available online 26 February 2021. This work is supported by the National Natural Science Foundation of China (No. 51777014). Hunan Provincial Key Research and Development Program (No. 2018GK2057). Research projects funded by Department of Education of Hunan Province of China (18A124). Changsha Science and Technology Project (kq1901104). Hunan Graduate Research and Innovation Project (CX20190686). CRediT authorship contribution statement: Yuanyuan Wang: Conceptualization, Methodology, Writing - review & editing, Supervision. Shanfeng Sun: Writing - original draft. Xiaoqiao Chen: Software, Visualization, Investigation. Xiangjun Zeng: Supervision. Yang Kong: Data curation. Jun Chen: Writing - original draft. Yongsheng Guo: Writing - review & editing. Tingyuan Wang: Writing - review & editing. The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

Additional details

Created:
August 22, 2023
Modified:
October 23, 2023