基于ERP和dtw的变压器客户识别

Ziyang Yang, Xiao Ye, Xiao‐hai Yang, Nan Pan, Guangmin Li
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引用次数: 1

摘要

损耗管理工作关系到线路的运行效率、电力企业的经济效益和用电安全。然而,家用变压器之间的奇怪关系导致站区线损计算不准确,从而阻碍了线损管理工作。因此,针对传统人工巡检工作量大、成本高、识别结果及时性差等问题,采用线损波动数据对户用变压器关系异常用户进行筛选。将精确补偿编辑距离(ERP)与动态时间规整算法(DTW)相结合,计算异常台区用户电压曲线的相似度。采用SOM聚类算法对异常站区的户用变压器关系进行更新和识别。最后,结合相关性分析和卷积神经网络算法,利用站区与用户的停电相关性,对更新后的户用变压器关系进行分析验证,具有特定的应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ERP and DTW-based Transformer-customer Identification
The loss management work is closely related to the line’s operation efficiency, the power enterprise’s economic benefits, and electricity consumption safety. However, the strange relationship between the household transformer leads to the inaccurate calculation of the line loss in the station area, thus hindering the line loss management work. Therefore, given the problems of large workload, high cost, and short timeliness of identification results in traditional manual inspection, line loss fluctuation data is used to screen abnormal users of household transformer relationships. Accurate compensation editing distance (ERP) is combined with the dynamic time warping algorithm (DTW) to calculate the similarity of the user voltage curve in the abnormal station area. The SOM clustering algorithm is used to update and identify the household transformer relationship in the abnormal station area. Finally, the correlation analysis and convolutional neural network algorithm are combined to analyze and verify the updated household transformer relationship by using the power outage correlation between the station area and users, which has a specific application value.
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