基于不同机器学习技术的电力欺诈检测技术比较研究

Maninder Kaur, Samarth Chawla, Ruhi Dua
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引用次数: 1

摘要

几十年来,电力盗窃的脆弱性一直阻碍着电力行业的发展。它通过对家庭、商业和工业客户产生不同程度的影响来阻碍社会进步。偷窃者已经赶上了现代的计量系统,使电力供应商陷入了财务困境。这种比较分析是提出原则的第一步。窃电对电网的正常运行以及电力公司和商业电力服务商的经济效益造成了严重的影响。为了检测窃电行为,需要一种有效的反窃电算法来跟踪电力使用统计数据。在这篇文献综述中,我们将支持向量机(SVM)算法与其他技术区分开来,用于检测电力消耗时间序列数据中消费者(即电力欺诈者)的异常使用情况。结果表明,通过比较同一机器学习方法本身的两种平衡技术以及它们之间的组合,一些组合可以达到比其他组合明显更好的值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Research on the Techniques of Electricity Fraud Detection Using Different Machine Learning Techniques
The vulnerability of power theft has hampered the electricity industry for decades. It obstructs social progress by having varying degrees of impact on home, commercial, and industrial customers. Sneak thieves have caught up with contemporary metering systems, putting electricity suppliers in trouble financially. This comparative analysis is the first step in the presentation of principles. Theft of electricity has serious consequences for the power grid's proper operation as well as the economic benefits of power corporations and commercial power service providers. An effective anti-power-theft algorithm is required for tracking power usage statistics in order to detect electricity power theft. In this literature review, we differentiate the Support Vector Machine (SVM) algorithm with other techniques for detecting abnormal usage among consumers (i.e., electricity fraudsters) in time-series data on power consumption. The results show some combinations can reach significantly better values than others, comparing both the balancing techniques for a same machine learning method itself as well as comparing these combinations between themselves.
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