Research on Automatic Recognition System of Abnormal Behavior of Big Data Technology Distribution Network

Tao Huang, Q. Zhang, Ziqiang Wang, Yanwei Chen, Wei Wang
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Abstract

At present, the identification of abnormal power consumption behaviors in low- and medium-sized distribution networks has problems such as low efficiency and low accuracy. For this reason, we need to apply big data mining technology to a large amount of electricity consumption data to realize the location of abnormal behavior. Based on this research background, the article proposes an abnormal power consumption recognition model based on the improved K-means algorithm. The model classifies user load curves, extracts characteristic curves and analyzes typical characteristics of their electricity consumption behavior. In this way, the abnormal behavior of electricity consumption in the distribution network is identified. Through experimental analysis, it is found that the optimized K-means clustering algorithm can accurately realize the classification and recognition function of different user types. At the same time, the algorithm can more accurately and effectively analyze the abnormal behavior of users’ electricity consumption.
大数据技术配电网异常行为自动识别系统研究
目前,中小配电网异常用电行为的识别存在效率低、准确率低等问题。为此,我们需要将大数据挖掘技术应用到大量的用电量数据中,实现异常行为的定位。基于这一研究背景,本文提出了一种基于改进K-means算法的异常功耗识别模型。该模型对用户负荷曲线进行分类,提取特征曲线,分析用户用电行为的典型特征。通过这种方法,可以识别配电网用电的异常行为。通过实验分析,发现优化后的K-means聚类算法能够准确实现对不同用户类型的分类识别功能。同时,该算法可以更加准确有效地分析用户用电的异常行为。
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