具有居民用户聚类的智能电网需求响应方案

Bijian Dai, Ran Wang, K. Zhu, Jie Hao, Ping Wang
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引用次数: 6

摘要

需求响应(DR)是智能电网的关键技术之一,它具有降低峰值负荷和平滑居民需求曲线的潜在效益。现有文献中的DR方案主要关注用户负荷分布的优化,而对家用电器能耗模式、电费、用户满意度、公平性、能源消费习惯等重要因素关注不够。本文在综合考虑上述因素的基础上,提出了一种具有住宅用户集群的智能电网灵活容灾方案。从历史数据中提取新的特征来描述客户的特征,并应用聚类方法来探索客户的用电习惯。然后,进一步利用这些信息以更灵活但有效的方式帮助安排所述家用电器。基于实际迹线的数值结果表明,该方案在降低系统开销和降低峰值平均比(PAR)方面具有较好的效果。我们的研究进一步分析了各种因素的影响,包括客户的偏好和能源消耗模式,为如何制定有效的DR策略提供了一些启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Demand Response Scheme in Smart Grid with Clustering of Residential Customers
Demand response (DR) is one of the crucial technologies in smart grid for its potential benefits to lower the peak load and smooth the residential demand profiles. The existing DR schemes in the literature mainly focus on optimizing customer’s load profiles but not enough attentions are paid to important factors such as energy consumption patterns of residential appliances, electricity cost, users’ satisfactory level, fairness and energy consumption habits. This paper proposes a flexible DR scheme in smart grid with clustering of residential customers and comprehensively considering the aforementioned factors. New features are extracted from historical data to depict customers’ characteristics and clustering methods are applied to explore their electricity consumption habits. Then such information is further utilized to help schedule the residential appliances in a more flexible but effective manner. Numerical results based on real-world traces demonstrate that the proposed DR scheme performs well in reducing the system expenditure and lowering peak to average ratio (PAR). Our research further analyzes the impacts of various factors, including customers’ preferences and energy consumption patterns, which sheds some illuminations on how to devise efficient DR strategies.
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