基于t-sne约简和k均值聚类的低压配电网家用变压器关系识别方法

wenbin liu, Wenzheng Shao, Yang Xin
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引用次数: 0

摘要

针对目前低压配电网(LVDN)由于前期账更新不及时导致客户关系不清,影响配电网运行管理和故障研究判断等问题,提出了一种基于历史电压数据及其波动特征聚类的配电网拓扑结构自动识别方法。首先,通过配电智能终端采集研究对象站区内相邻变电站的三相电压数据和用户终端电压,定义并计算两端电压的多维波动特征参数,重点分析电压串联的全局波动特征和局部波动特征;然后,利用t⁃sne算法对目标数据进行降维;最后,根据降维后的电压波动特征,采用改进的K⁃means聚类算法对变电站变压器和用户进行聚类,得到变电站变压器和用户之间的正确关系。算例结果表明,通过对目标站区两端电压测量数据的详细分析,可以确定目标站区拓扑结构中用户与变压器的从属关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Method based on t-sne reduction and K-means clustering to identify the household-transformer relationship in low-voltage distribution network
Aiming at the current problems of low-voltage distribution network (LVDN) at present due to the untimely updating of the account in the early stage, which leads to the unclear relationship between customers and affects the operation, management and fault research and judgment of distribution network, this paper presents an automatic identification method of distribution network topology on the basis of clustering of historical voltage data and its fluctuation characteristics. Firstly, the three-phase voltage data and user terminal voltage of the adjacent substation in the research object station area are collected through the distribution intelligent terminal, and the multi-dimensional fluctuation characteristic parameters of the voltage at both ends are defined and calculated, and the global fluctuation characteristics and local fluctuation characteristics of the voltage series are mainly analyzed; Then, the dimension of the target data is then reduced using the t ⁃ sne algorithm; Finally, based on the characteristics of voltage fluctuation after dimensionality reduction, the correct relationship between substation transformers and users was obtained by using an improved K ⁃ means clustering algorithm for clustering substation transformers and users. The result of the example shows that the subordinate relationship between the user and the transformer in the topology of the target station area can be identified through the detailed analysis of the voltage measurement data at both ends of the target station area.
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