Detection of Energy Theft and Metering Defects in Advanced Metering Infrastructure Using Analytics

Sook-Chin Yip, ChiaKwang Tan, Wooi-Nee Tan, Ming-Tao Gan, Koksheik Wong, R. Phan
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引用次数: 10

Abstract

Non-technical losses including electricity theft and anomalies in meter readings are estimated to cost the utility providers tremendous losses of approximately $96 billion per annum. The adoption of smart meter has encouraged utility providers to use analytics to identify theft. To curb nontechnical losses, they are increasingly leveraging on real-time smart metering and analytics to identify energy theft and irregularities in meter readings. We have previously put forward linear regression-based and linear programming-based anomaly detection frameworks to study consumers’ energy consumption behavior for detecting the localities of metering defects as well as energy thefts. In this work, we design and construct an advanced metering infrastructure test rig in the laboratory to perform comparison studies on our previously proposed anomaly detection frameworks in smart grid environment. Results from both test rig and simulations show that linear regression-based anomaly detection framework is able to identify the positions of energy thieves and faulty smart meters without requiring large volume of data samples. However, linear programming-based framework is more robust as compared to linear regression-based because the former is capable of detecting more sophisticated types of energy theft/meter irregularities accurately even in the presence of technical losses/calibration errors.
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利用分析技术检测先进计量基础设施中的能源盗窃和计量缺陷
非技术损失,包括电力盗窃和电表读数异常,估计每年给公用事业公司造成约960亿美元的巨大损失。智能电表的采用鼓励公用事业供应商使用分析来识别盗窃。为了减少非技术损失,他们越来越多地利用实时智能计量和分析来识别能源盗窃和电表读数的违规行为。我们之前提出了基于线性回归和基于线性规划的异常检测框架来研究消费者的能源消费行为,以检测计量缺陷和能源盗窃的位置。在这项工作中,我们在实验室设计并构建了一个先进的计量基础设施测试平台,对我们之前提出的智能电网环境下的异常检测框架进行了比较研究。测试和仿真结果表明,基于线性回归的异常检测框架能够在不需要大量数据样本的情况下识别能源窃贼和故障智能电表的位置。然而,与基于线性回归的框架相比,基于线性规划的框架更具鲁棒性,因为前者能够在存在技术损失/校准错误的情况下准确检测更复杂类型的能源盗窃/仪表异常。
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