基于稳健指数和冬至平滑方法的电力消费欺诈检测

Dalila Azzouguer, A. Sebaa, D. Hadjout, F. Martínez-Álvarez
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引用次数: 0

摘要

非技术损失(NTL),特别是欺诈检测对配电企业来说是非常重要的。欺诈检测可以使这些企业的有效经济回报最大化。本文提出了一种基于稳健指数和Holt-Winters平滑方法的电力欺诈检测方法。所提出的方法是一个旨在发现电力消费者欺诈行为的程序,它通过三个关键步骤:(1)月度用电量预测,(2)检测电表异常用电量,(3)检测经济客户欺诈案件。对提出的模型进行了训练和评估。它的实验验证是通过使用来自阿尔及利亚经济部门的真实用户的大型数据集来实现的,这些用户拥有近2000个客户和14年的每月用电量。与文献和本文实现的模型(用于预测的SARIMA和用于异常检测的two sigma)相比,所提出的解决方案显示出良好的性能。结果表明,该方法具有较强的鲁棒性,可以提高企业的利润。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fraud Detection of Electricity Consumption Using Robust Exponential and Holt-Winters Smoothing Method
Non-technical losses (NTL), especially fraud detection is very important for electricity distribution enterprises. Fraud detection allows for maximizing the effective economic return for such enterprises. This paper provides an electricity fraud detection approach based on robust exponential and Holt-Winters Smoothing methods. The proposed approach is a procedure that aims to discover the fraudulent behavior of electricity consumers and goes through three crucial steps: (1) the prediction of monthly consumption, (2) the detection of abnormal consumption of electrical meters, and (3) the detection of fraud cases of economic customers. The proposed model was trained and evaluated. Its experimental validation is achieved by using a large dataset of real users from the Algerian economic sector with almost 2000 clients and 14 years of monthly electricity consumption. The proposed solution revealed good performance compared to the literature and the comparison with the models implemented in this article: SARIMA for prediction and two sigma for anomaly detection. The results show highly efficient and realistic countermeasures to fraud detection, which leads us to say that this method is robust and can enhance company profit.
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