Steady State Load Decomposition Method Combining Template Matching with K-Nearest Neighbor Algorithms

Xiaoyu Zhang, Z. Luan, Zhiliang Zhang
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引用次数: 4

Abstract

Non-intrusive load monitoring and decomposition technology is one of the most important components of smart grid. It is the basis for in-depth analysis of user electricity information, which is of great importance to improve user quality of life and improve grid services. In this paper, a new load decomposition method combining template matching with k-nearest neighbor algorithm is proposed based on the study of steady-state load decomposition model. It solves the existing problems of unknown load, dependence on training data, and difficult identification of low-power devices. It uses the collected data of the actual operation of the electrical appliances and through adding unknown load of different power, the simulation was carried out by MATLAB to verify that the method in this paper is feasible in practical applications.
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结合模板匹配和k -最近邻算法的稳态负荷分解方法
非侵入式负荷监测与分解技术是智能电网的重要组成部分之一。它是深入分析用户用电信息的基础,对提高用户生活质量、改善电网服务具有重要意义。本文在研究稳态负荷分解模型的基础上,提出了一种模板匹配与k近邻算法相结合的负荷分解新方法。它解决了现有的负载未知、依赖训练数据、小功率器件识别困难等问题。利用采集到的电器实际运行数据,通过加入不同功率的未知负载,通过MATLAB进行仿真,验证本文方法在实际应用中的可行性。
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