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Unsupervised Learning for Distribution Grid Line Outage and Electricity Theft Identification

机译:配电网线路停电和窃电识别的无监督学习

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The development of smart meters enables situational awareness in electric power distribution systems. The situational awareness provides significant advantages such as line outage and electricity theft detection. This paper aims at using smart meter data to detect these anomalies. To do so, an appropriate cluster-based method as an unsupervised machine learning approach is applied. A stochastic method based on conditional correlation is also proposed to localize the anomalies. It is shown that this can be done by detecting changes in bus connections using present and historical smart meter data. Therefore, network topology inspection can be avoided if the proposed method is applied. A complex mesh grid is used to demonstrate performance of the data-driven anomaly detection approach. The results show that determining the right value of hyper-parameter and adequate features extraction leads to acceptable accuracy.
机译:智能电表的开发使配电系统中的态势感知成为可能。态势感知具有显着的优势,例如线路中断和电盗窃检测。本文旨在使用智能电表数据检测这些异常。为此,应用了一种适当的基于群集的方法作为无监督的机器学习方法。还提出了一种基于条件相关的随机方法来定位异常。结果表明,这可以通过使用当前和历史智能电表数据检测总线连接的变化来完成。因此,如果应用所提出的方法,则可以避免网络拓扑检查。使用复杂的网格网格来演示数据驱动异常检测方法的性能。结果表明,确定正确的超参数值和适当的特征提取可导致可接受的精度。

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