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Detection of Electricity Theft in Customer Consumption Using Outlier Detection Algorithms

机译:使用异常值检测算法检测客户消费中的盗窃电

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摘要

Advanced Metering Infrastructure (AMI) is a core part of Smart-grid, which is responsible for collecting, measuring and analyzing energy usage data of customers. The development of this network has been possible thanks to the emergence of new information and communication technologies. However, with the arrival of these technologies, new problems have arisen in the AMI. One of these challenges is the energy theft, which has been a major concern in traditional power systems worldwide. To face these challenges, datasets of electricity consumptions are analyzed to detect intruders. Traditional techniques to detect intruders include the use of machine learning and data mining approaches. In this paper, we analyze the feasibility of applying outliers detection algorithms for enhancing the security of AMI through of the detection of electricity theft. We explore the performances of various existing outlier detection algorithms on a real dataset (consumer energy usage). The results show the feasibility of use outliers algorithms in the security of AMI and also the effectiveness of the use of these methods in the electricity consumption datasets for theft detection.
机译:先进的计量基础设施(AMI)是智能电网的核心部分,它负责收集,测量和分析客户的能源使用数据。由于新的信息和通信技术的出现,该网络的发展成为可能。但是,随着这些技术的出现,AMI中出现了新的问题。这些挑战之一是能源盗窃,这一直是全球传统电力系统中的主要关注点。为了应对这些挑战,需要分析电力消耗数据集以检测入侵者。检测入侵者的传统技术包括使用机器学习和数据挖掘方法。在本文中,我们分析了应用异常值检测算法来通过窃电检测增强AMI安全性的可行性。我们在真实数据集(消费者能源使用)上探索了各种现有异常值检测算法的性能。结果表明,在AMI的安全性中使用异常值算法的可行性,以及在用于盗窃检测的电耗数据集中使用这些方法的有效性。

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