可编程控制器频段测量电量的电网监督故障检测

N. A. Letizia, A. Tonello
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引用次数: 6

摘要

电力线调制解调器(plm)作为电力线网络(PLN)内部的通信设备。然而,它们也可以作为有源传感器来监测电力配电网的状态。事实上,电力线通信(PLC)信号携带有关网络拓扑结构、内部电现象、周围环境和电网中可能出现的异常的信息。通过直接感知测量准确有效地识别异常类型,可以使电网运营商既能防止故障发生,又能在故障发生时有效地进行干预。在本文中,我们介绍了如何使用监督机器学习(ML)技术从PLC信号频带中的高频电量测量中提取异常信息,即线路阻抗,反射系数和通道传递函数。仿真结果证实了神经网络方法的潜力,在没有任何超参数调整的情况下优于现有的基于模型的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised Fault Detection in Energy Grids Measuring Electrical Quantities in the PLC Band
Power line modems (PLMs) act as communication devices inside a power line network (PLN). However, they can be exploited also as active sensors to monitor the status of the electric power distribution grid. Indeed, power line communication (PLC) signals carry information about the topological structure of the network, internal electrical phenomena, the surrounding environment and possible anomalies in the grid. An accurate and efficient identification of the types of anomaly through direct sensing measurements can enable grid operators to both prevent malfunctions and effectively intervene when faults occur. In this paper, we present how to use supervised machine learning (ML) techniques to extract anomalies information from high frequency measurement of electrical quantities, namely the line impedance, the reflection coefficient and the channel transfer function, in the PLC signal band. Simulation results confirm the potentiality of the neural network method, outperforming existing model-based approaches in the field without any hyperparameter tuning.
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