Multi-objective LSTM ensemble model for household short-term load forecasting

被引:0
作者
Chaodong Fan
Yunfan Li
Lingzhi Yi
Leyi Xiao
Xilong Qu
Zhaoyang Ai
机构
[1] Xiangtan University,College of Automation and Electronics Information
[2] Foshan Green Intelligent Manufacturing Research Institute of Xiangtan University,School of Information Technology and Management
[3] Hunan University of Finance and Economics,College of Foreign Languages, College of Foreign Languages, Inter
[4] Hunan University,Disciplinary Research Center of Language Intelligence and Cultural Heritages
[5] Quanzhou Normal University,Fujian Provincial Key Laboratory of Data Intensive Computing
[6] Hunan Software Vocational and Technical University,School of Software and Information Engineering
来源
Memetic Computing | 2022年 / 14卷
关键词
Short-term load forecasting; LSTM network; Ensemble learning; Multi-objective evolutionary algorithm; Household load forecasting;
D O I
暂无
中图分类号
学科分类号
摘要
With the development of smart grid, household load forecasting played an important role in power system operations. However, the household load forecasting is often inefficient due to its high volatility and uncertainty. Consequently, a multi-objective LSTM ensemble model based on the DBN combination strategy, is proposed in this paper. This method first builds a deep learning framework based on the LSTM network in order to generate several sub-models. With the diversity and accuracy of the sub-models as the objective functions, the improved MOEA/D algorithm is then used to optimize the parameters, in order to enhance the overall performance of the sub-models and ensure their differences. Finally, a DBN-based combination strategy is used to combine the single forecasts in order to form the ensemble forecast, and reduce the adverse effects of model uncertainty and data noise on the prediction accuracy. The experimental results show that the proposed method has several advantages in prediction accuracy and generalization capacity, compared with several current intelligent prediction methods.
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页码:115 / 132
页数:17
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