Cooling, Heating and Electrical Load Forecasting Method for Integrated Energy System based on SVR Model

Yuting Yan, Zihao Zhang
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引用次数: 6

Abstract

In order to further reduce environmental pressure and promote the integration of renewable generation, integrated energy system (IES) has become a promising way of energy consumption. The economic dispatch and optimal operation of the IES rely on accurate load forecasting. In this paper, a Support Vector Regression (SVR) based multiple load forecasting method for cooling loads, heating loads and electrical loads of integrated energy system is established. First, through Pearson correlation analysis, the correlation between cooling loads, heating loads and electrical loads are investigated. Then, a load forecasting model based on SVR is designed, and Particle Swarm optimization (PSO) is adopted to optimize model parameter setting. Electrical loads, heating loads, cooling loads, day type, and weather data are used as inputs in the prediction model. A case study on a realistic IES of a park in Yunnan Province is implemented to verify the proposed method. Comparing results of the proposed method with that of traditional models show that, the proposed model can effectively consider the coupling of power load, cooling load and heating load, and has better prediction accuracy.
基于SVR模型的综合能源系统冷热负荷预测方法
为了进一步减轻环境压力和促进可再生能源发电的整合,集成能源系统(IES)已成为一种很有前景的能源消耗方式。电力系统的经济调度和优化运行依赖于准确的负荷预测。本文建立了一种基于支持向量回归(SVR)的综合能源系统冷负荷、热负荷和电负荷多负荷预测方法。首先,通过Pearson相关分析,研究了冷负荷、热负荷和电负荷之间的相关性。然后,设计了基于支持向量回归的负荷预测模型,并采用粒子群算法对模型参数设置进行优化。电力负荷、热负荷、冷负荷、日类型和天气数据被用作预测模型的输入。以云南某公园为例,对本文提出的方法进行了验证。与传统模型的对比结果表明,所提模型能有效地考虑电负荷、冷负荷和热负荷的耦合,具有更好的预测精度。
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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