Research on Smart Electric Meter Data Mining Technology Method for Line Loss Diagnosis of Low Voltage Station Area

Yan Fuli, Hou Xingzhe
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Abstract

Line loss can be divided into statistical line loss, technical line loss and management line loss according to structure. It not only refers to the energy loss in the form of heat energy, but also the management line loss caused by the electricity stealing behavior [1]. The calculation of power system line loss and the realization of system lean management are of great significance in guiding the reduction of energy conservation and the promotion of line loss management. To this end, in-depth analysis of the massive user data accumulated in the marketing automation process of the electricity information system in recent years, so as to establish a reasonable and efficient mathematical model of line loss analysis. By mining the useful information behind these data in smart electric meter, the abnormal power usage behavior detection of the user is realized, so as to achieve the purpose of preventing electric larceny and leakage and thereby reducing the line loss. This paper proposes a layer-based power line electric larceny detection method based on data mining technology .This method optimizes the traditional LOF algorithm and is a weighted LOF algorithm. By performing weighted outlier analysis on massive user data, the location of abnormal power users can be more efficiently completed. Keywords-Component Management Line Loss, Data Mining; Layer-Based Analysis; Weighted LOF Algorithm; Outlier Analysis; Abnormal User Location
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智能电表数据挖掘技术在低压站区线损诊断中的应用研究
线损按结构可分为统计线损、技术线损和管理线损。它不仅指以热能形式出现的能量损失,还包括因窃电行为造成的管理线路损失[1]。电力系统线损计算,实现系统精益管理,对于指导节能减排,推进线损管理具有重要意义。为此,深入分析近年来电力信息系统营销自动化过程中积累的海量用户数据,从而建立合理高效的线损分析数学模型。通过挖掘智能电表中这些数据背后的有用信息,实现对用户异常用电行为的检测,从而达到防止窃电漏电,减少线路损耗的目的。本文提出了一种基于数据挖掘技术的分层电力线窃电检测方法,该方法对传统LOF算法进行了优化,是一种加权LOF算法。通过对海量用户数据进行加权离群分析,可以更高效地完成异常电力用户的定位。关键词:元器件管理;线损;数据挖掘;层的分析;加权LOF算法;离群值分析;异常用户位置
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