Feeder Power Disaggregation: A Data-Efficient Matrix Completion Approach

2023 IEEE Power & Energy Society General Meeting (PESGM)(2023)

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摘要
This paper presents a data-driven algorithm for the feeder power disaggregation problem in distribution systems. Leveraging spatio-temporal power patterns in residential homes, residential power is discomposed into three components: sparse-switching loads, periodic loads, and photovoltaic (PV) generation, which are characterized through the design of two sparse matrices and a low-rank matrix. The matrix completion process is data-efficient because of the matrix sparsity and low rankness, along with the use of power system models. The proposed approach is tested using real-world residential data set on a 33-bus distribution system, demonstrating accurate power disaggregation with efficient matrix completion
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关键词
33-bus distribution system,data-driven algorithm,data-efficient matrix completion approach,distribution systems,feeder power disaggregation problem,low-rank matrix,matrix completion process,matrix sparsity,periodic loads,photovoltaic generation,power system models,real-world residential data,residential homes,residential power,sparse matrices,sparse-switching loads,spatiotemporal power patterns
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