计算机与现代化 ›› 2023, Vol. 0 ›› Issue (03): 60-65.

• 人工智能 • 上一篇    下一篇

智能电网环境下窃电行为检测

  

  1. (国网陕西省电力公司西安供电公司,陕西 西安 712042)
  • 出版日期:2023-04-17 发布日期:2023-04-17
  • 作者简介:张芸(1983—),女,陕西西安人,高级工程师,硕士,研究方向:计算机技术,E-mail: 83509500@qq.com; 白开峰(1979—),男,山西运城人,高级工程师,硕士,研究方向:电子信息,E-mail: 13572097906@139.com; 王星(1978—),男,四川遂宁人,高级工程师,硕士,研究方向:信息系统工程,E-mail: 14147723@qq.com; 仓甜(1983—),女,陕西西安人,高级工程师,硕士,研究方向:网络安全,E-mail: 251205654@qq.com; 周通(1987—),男,陕西西安人,工程师,本科,研究方向:计算机科学,E-mail: 405713308@qq.com; 段锦文(1978—),女,陕西长安人,高级工程师,本科,研究方向:通信工程,E-mail: 645292243@qq.com; 苏晗(1990—),女,陕西宝鸡人,工程师,硕士,研究方向:软件工程,E-mail: 396909897@qq.com。
  • 基金资助:
    国家自然科学基金面上项目(61772246)

Review of Electricity Theft Detection in Smart Grid Environment

  1. (State Grid Xi’an Electric Power Supply Company, Xi’an 712042, China)
  • Online:2023-04-17 Published:2023-04-17

摘要: 用户恶意窃电造成的用电侧非技术性损失一直是全球各国电力公司期望解决的问题之一。随着人工智能算法的快速发展和智能电表的普及,通过对窃电行为建模和检测将有效减少这类情况的发生。本文首先介绍用电行为数据收集、处理、采样手段。其次,就面向用电异常行为挖掘的离群点检测、机器学习方法和深度学习方法,分析对比各类算法的特点,对已有工作进行总结。最后,通过讨论智能化手段在窃电检测研究中出现的问题和未来研究工作为该领域的研究人员提供一些借鉴。

关键词: 智能化电网, 窃电行为检测, 机器学习, 深度学习

Abstract: The non-technical loss (NTL) on the power consumption side caused by malicious power theft by users has always been one of the problems that power companies around the world expect to solve. With the rapid development of artificial intelligence algorithms and the popularization of smart meters, modeling and detection of electricity theft will effectively reduce the occurrence of such situations. Firstly, this article introduces the methods of collecting, processing, and sampling electricity consumption behavior data. Secondly, it analyzes and compares the characteristics of various algorithms and summarizes existing work on outlier detection, machine learning methods, and deep learning methods for mining abnormal electricity behavior. Finally, by discussing the problems of intelligent methods in the research of electricity theft detection and future research works, it provides some reference for researchers in this field.

Key words: smart grid, electricity theft detection, machine learning, deep learning