考虑复合需求响应方案交叉效应的解耦客户基线负荷估计方法

Lishan Ma, Chaoxia Sun, Shengqiang Gao, Yingshan Wang, X. Ge, Fei Wang
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引用次数: 0

摘要

作为基于激励的需求响应(DR)结算的基础,准确估计客户基线负荷(CBL)至关重要。随着市场化进程的推进,出现了用户同时参与基于价格的DR和基于激励的DR的情况。两种类型的需求响应耦合在一起,使得现有的CBL估计方法难以准确提取负荷特性。如果不考虑复合DR引入的附加因素,使用传统方法估计CBL将导致显著偏差。因此,本文揭示了现有估计方法中误差产生的机理。基于消费者心理,提出了一种将用户历史负荷模式与电价对负荷影响解耦的CBL估计方法。为了对CBL进行初步估计,该方法首先构建了不考虑电价影响的负荷数据集。然后,基于消费者心理需求响应模型,计算基于价格dr引起的负荷变化,最后将两者结合,得到最终的CBL估计结果。仿真实验表明,该方法在复合DR条件下能够获得准确的估计结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decoupling Based Customer Baseline Load Estimation Method Considering Cross Effects of Composite Demand Response Programs
As the basis of incentive-based demand response (DR) settlement, accuracy customer baseline load (CBL) estimation is crucial. As the marketization process advances, there are cases where users participate in both price-based DR and incentive-based DR at the same time. Two types of demand response are coupled together, making it difficult for existing CBL estimation methods to accurately extract load characteristics. If the additional factors introduced by composite DR are not taken into account, using traditional methods for estimating CBL will result in significant deviations. Therefore, this paper reveals the mechanism of error generation in existing estimation methods. And based on consumer psychology, this paper proposes a CBL estimation method that decouples the user’s historical load pattern and the impact of electricity prices on the load. In order to make a preliminary estimation of the CBL, this method first constructs a load dataset without considering the impact of electricity prices. Then, based on consumer psychology demand response models, it calculates the load changes caused by price-based DR. Finally, it combines the two to obtain the final CBL estimation results. Simulation experiments show that the proposed method can obtain accurate estimation results under composite DR.
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