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基于聚类分析的充电桩异常用电行为甄别研究

魏海斌 郭清华 黄宇楠 方晓临

电气技术2025,Vol.26Issue(6):64-67,74,5.
电气技术2025,Vol.26Issue(6):64-67,74,5.

基于聚类分析的充电桩异常用电行为甄别研究

Research on the identification of abnormal electricity consumption behavior of charging piles based on cluster analysis

魏海斌 1郭清华 1黄宇楠 1方晓临1

作者信息

  • 1. 国网福建省电力有限公司莆田供电公司,福建 莆田 351100
  • 折叠

摘要

Abstract

This study aims to effectively identify abnormal or non-compliant electricity consumption behaviors in electric vehicle charging stations,thereby enhancing the efficiency and accuracy of electricity management for these stations.Initially,the study analyzes the electricity consumption behavior characteristics of low-voltage charging stations,determining the differences in load characteristic curves between normal and abnormal electricity consumption states.Based on this,a clustering analysis algorithm is employed to extract load curve characteristics from operational charging stations and compare them with standard load curves to assess the presence of abnormal electricity consumption behaviors.Additionally,considering potential misjudgments arising from the"fast charging"and"slow charging"phases during the charging process,the concept of sliding difference linear fitting is introduced.This involves calculating the slope between each pair of 96-point load data points and using the number of slope changes to assist in the judgment of clustering analysis results.Through the aforementioned methods,users exhibiting abnormal electricity consumption behaviors have been successfully identified,providing technical support for the management of electricity consumption in charging stations.

关键词

充电桩/聚类分析/线性拟合/典型实例

Key words

charging pile/cluster analysis/linear fitting/typical examples

引用本文复制引用

魏海斌,郭清华,黄宇楠,方晓临..基于聚类分析的充电桩异常用电行为甄别研究[J].电气技术,2025,26(6):64-67,74,5.

电气技术

1673-3800

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