基于样本优化选取的支持向量机窃电辨识方法
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  • 英文篇名:Electricity Theft Identification Using Support Vector Machine Based on Sample Optimization Selection
  • 作者:卢峰 ; 丁学峰 ; 尹小明 ; 陈洪涛 ; 王颖
  • 英文作者:Lu Feng;Ding Xuefeng;Yi Xiaoming;Chen Hongtao;Wang Ying;State Grid Zhejiang Changxing Power Supply Company Limited;College of Mechanical and Electrical Engineering,China Jiliang University;
  • 关键词:窃电行为 ; 一类支持向量机 ; 电量波动 ; 反窃电
  • 英文关键词:energy theft;;one-class SVM;;fluctuation of electricity;;anti-electricity stealing
  • 中文刊名:JZCK
  • 英文刊名:Computer Measurement & Control
  • 机构:国网浙江长兴县供电有限公司;中国计量大学机电工程学院;
  • 出版日期:2018-06-25
  • 出版单位:计算机测量与控制
  • 年:2018
  • 期:v.26;No.237
  • 基金:浙江省自然科学基金青年科学基金项目(LQ17E070003)
  • 语种:中文;
  • 页:JZCK201806058
  • 页数:4
  • CN:06
  • ISSN:11-4762/TP
  • 分类号:231-234
摘要
目前窃电行为普遍存在,如何提高用户用电系统的窃电辨识能力是电力公司一直关注的热点问题;随着智能电表在各地区的普及,数据挖掘等大数据分析技术在用电数据处理上的应用越来越受到重视;针对电力公司亟待解决的反窃电问题,在研究支持向量机原理和分析用电数据特性的基础上,将One-class SVM算法引入到疑似窃电判断当中,提出了一种将电量波动特征和One-class SVM结合的窃电辨识模型;首先提出改进的电量数据波动系数来表征电量波动,然后设计了基于One-class SVM窃电辨识方案;提出一种以电量波动系数作为指标选取训练样本的方法,训练得到相应分类模型,通过该模型分析用电数据从而辨别出是否存在窃电行为;算法验证结果表明该方法能提高窃电辨识的准确率和效率,具备一定的实用性。
        Nowadays,Energy theft is widespread,how to improve the electricity theft identification of the user's power system has been concerned about the hot issues by the power company.With the popularity of smart meters in all regions,data mining and other large data analysis technology in the application of electricity data processing has been receiving increasing attention.Focused on the problem of antistealing electricity which power companies are concerned,and based on the study of the principle of support vector machine and the analysis of the characteristics of electricity data,the One-class SVM algorithm is introduced into the judgment of suspected energy theft,and an electricity theft identification model combining power fluctuation feature and One-class SVM is proposed.This paper first proposes an improved power data fluctuation coefficient to characterize the fluctuation of electricity,and then designs an electricity theft identification scheme based on One-class SVM.This method combines the fluctuation characteristics of electricity to select the load data samples,and constructs the detection model of energy theft based on the electricity data,then identifies whether there is electricity theft behavior.Experiments show that this method can improve the accuracy and efficiency of electricity theft identification and it has certain practicability.
引文
[1]李亚,刘丽平,李柏青,等.基于改进K-Means聚类和BP神经网络的台区线损率计算方法[J].中国电机工程学报,2016,36(17):4543-4551.
    [2]吴倩红,高军,侯广松,等.实现影响因素多源异构融合的短期负荷预测支持向量机算法[J].电力系统自动化,2016,40(15):67-72.
    [3]周文婷,顾楠,王涛,等.基于数据挖掘算法的用户窃电嫌疑分析[J].河南科学,2015,33(10):1767-1772.
    [4]谢晶晶.基于层次模型的电能表管理与数据分析方法研究[D].南京:南京邮电大学,2016.
    [5]简富俊,曹敏,王磊,等.基于SVM的AMI环境下用电异常检测研究[J].电测与仪表,2014,51(6):64-69.
    [6]张晓宇,付林,沈炯,等.基于在线支持向量机的锅炉动态建模方法研究[A].中国电机工程学会年会[C].2016.
    [7]朱雪芳.改进支持向量聚类算法的研究[J].计算机测量与控制,2006,14(12):1732-1735.
    [8]杨锡运,孙宝君,张新房,等.基于相似数据的支持向量机短期风速预测仿真研究[J].中国电机工程学报,2012,32(4):35-41.
    [9]Sch9Lkopf B,Smola A J,Williamson R C,et al.New Support Vector Algorithms[J].Neural Computation,2000,12(5):1207.
    [10]舒胜文,阮江军,黄道春,等.基于电场特征量和SVM的空气间隙击穿电压预测[J].中国电机工程学报,2015,35(3):742-750.
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