陈光宇, 徐嘉杰, 卢兆军, 袁飞, 张仰飞, 郝思鹏. 基于相关性度量算法的台区线损异常判断及精准定位[J]. 电力工程技术, 2022, 41(4): 67-74. DOI: 10.12158/j.2096-3203.2022.04.009
引用本文: 陈光宇, 徐嘉杰, 卢兆军, 袁飞, 张仰飞, 郝思鹏. 基于相关性度量算法的台区线损异常判断及精准定位[J]. 电力工程技术, 2022, 41(4): 67-74. DOI: 10.12158/j.2096-3203.2022.04.009
CHEN Guangyu, XU Jiajie, LU Zhaojun, YUAN Fei, ZHANG Yangfei, HAO Sipeng. Judgment and precise location of abnormal line loss in station area based on correlation measurement algorithm[J]. Electric Power Engineering Technology, 2022, 41(4): 67-74. DOI: 10.12158/j.2096-3203.2022.04.009
Citation: CHEN Guangyu, XU Jiajie, LU Zhaojun, YUAN Fei, ZHANG Yangfei, HAO Sipeng. Judgment and precise location of abnormal line loss in station area based on correlation measurement algorithm[J]. Electric Power Engineering Technology, 2022, 41(4): 67-74. DOI: 10.12158/j.2096-3203.2022.04.009

基于相关性度量算法的台区线损异常判断及精准定位

Judgment and precise location of abnormal line loss in station area based on correlation measurement algorithm

  • 摘要: 针对台区发生线损异常时关联用户辨识困难的实际问题,提出一种基于相关性度量算法的台区线损异常判断及精准定位方法。首先,通过间隙统计-轮廓系数融合算法确定数据集的最佳聚类数,并在此基础上采用二分K-means++构建台区线损标准库;其次,基于标准库完成台区线损异常辨识,确定异常时间段;再次,计算异常时间段内各用户电量和线损的斯皮尔曼相关性系数(SCC)和欧式-离散弗雷歇距离(E-DFD),并基于SCC和E-DFD构造综合评判指标分析用户关联性;最后,采用逼近理想解排序法(TOPSIS)对综合评判指标值进行排序,实现异常关联用户的精准定位。算例采用某台区真实现场数据进行分析,结果表明文中所提方法在聚类有效性、计算时间以及辨识准确度等方面具有较好的性能。

     

    Abstract: Aiming at the practical problem of the difficulty in identifying associated users when abnormal line loss occurs in the station area, a method for judging and accurately locating the line loss abnormality in the station area based on the correlation measurement algorithm is proposed. Firstly, the optimal clustering number of the data set is determined by the gap statistics-contour coefficient fusion algorithm, and on this basis, the dichotomous K-means++ is used to construct the station area line loss standard library. Secondly, the station area line loss anomaly identification is completed based on the standard library and then the abnormal time is determined. The Spearman correlation coefficient (SCC) and Euclidean-discrete Fréchet distance (E-DFD) of each user's power and line loss during the abnormal time is calculated. And based on SCC and E-DFD, a comprehensive evaluation index to analyze user relevance is estabilished. Finally, the technique for order preference by similarity to an ideal solution (TOPSIS) is used to sort the comprehensive evaluation index values to achieve precise positioning of abnormally associated users. The calculation example uses real field data in a certain area to analyze, and the results show that the method proposed in this paper has better performance in clustering effectiveness, calculation time, and identification accuracy.

     

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