Short-Term Multivariate Load Forecasting for Integrated Energy Systems Based on BIGRU-AM and Multi-Task Learning

Qianxiang Sun, Hongyuan Ma, Guangdi Li, Ziwen Li, Yining Wang
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Abstract

Complex strong coupling relationships may exist among multiple loads in an integrated energy system, and accurate multivariate load forecasting plays an important role in energy scheduling and operation planning of integrated energy systems. Therefore, this paper proposes a short-term multivariate load forecasting model for integrated energy systems based on bidirectional gated cycle unit (BIGRU), multi-task learning (MTL) and attention mechanism (AM). Firstly, considering the coupling characteristics between the electric, heating and cooling loads of the integrated energy system, the PCC method is used to screen the input variables of the prediction model and reduce the dimensionality of the input features of the prediction model; then the attention mechanism is introduced into the BIGRU model based on multi-task learning, which further mines the coupling features between loads through multi-task learning, compensates for the insufficient mining and utilization of coupling features between loads, and achieves the differentiated extraction of important features in the shared layer by each sub-task through the attention mechanism, which improves the prediction accuracy of the model; finally, using the historical data of electric, cooling and heating loads of Arizona State University Tempe campus as the actual arithmetic example, the reasonableness and validity of the model were verified by simulation comparison.
基于BIGRU-AM和多任务学习的综合能源系统短期多元负荷预测
综合能源系统中多个负荷之间可能存在复杂的强耦合关系,准确的多元负荷预测对综合能源系统的能源调度和运行规划具有重要作用。为此,本文提出了一种基于双向门控循环单元(BIGRU)、多任务学习(MTL)和注意机制(AM)的综合能源系统短期多元负荷预测模型。首先,考虑综合能源系统的电、热、冷负荷之间的耦合特性,采用PCC方法对预测模型的输入变量进行筛选,降低预测模型输入特征的维数;然后在基于多任务学习的BIGRU模型中引入注意机制,通过多任务学习进一步挖掘负载之间的耦合特征,弥补负载之间耦合特征挖掘和利用的不足,并通过注意机制实现各子任务对共享层重要特征的差异化提取,提高了模型的预测精度;最后,以美国亚利桑那州立大学坦佩校区电、冷、热负荷历史数据为实际算例,通过仿真对比验证了模型的合理性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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