Load Profiling and Its Application to Demand Response: A Review

被引:16
作者
Yi Wang [1 ]
Qixin Chen [1 ]
Chongqing Kang [1 ]
Mingming Zhang [2 ]
Ke Wang [2 ]
Yun Zhao [2 ]
机构
[1] Department of Electrical Engineering,Tsinghua University
[2] Electric Power Research Institute, China Southern Power Grid Co,Ltd
关键词
load profiling; demand response; data mining; customer segmentation; Advanced Metering Infrastructure(AMI);
D O I
暂无
中图分类号
TM76 [电力系统的自动化];
学科分类号
080802 ;
摘要
The smart grid has been revolutionizing electrical generation and consumption through a two-way flow of power and information. As an important information source from the demand side, Advanced Metering Infrastructure(AMI) has gained increasing popularity all over the world. By making full use of the data gathered by AMI, stakeholders of the electrical industry can have a better understanding of electrical consumption behavior. This is a significant strategy to improve operation efficiency and enhance power grid reliability. To implement this strategy,researchers have explored many data mining techniques for load profiling. This paper performs a state-of-the-art,comprehensive review of these data mining techniques from the perspectives of different technical approaches including direct clustering, indirect clustering, clustering evaluation criteria, and customer segmentation. On this basis, the prospects for implementing load profiling to demand response applications, price-based and incentivebased, are further summarized. Finally, challenges and opportunities of load profiling techniques in future power industry, especially in a demand response world, are discussed.
引用
收藏
页码:117 / 129
页数:13
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