配电系统SCADA通信中断时失电线路的态势感知

M. Leak, G. Venayagamoorthy
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引用次数: 0

摘要

随着配电网复杂性的不断提高和网络攻击带来的新威胁,系统操作员的态势感知迅速变得不可或缺。在SCADA通信故障期间,识别配电系统上的断电线路是运营商需要迅速采取行动应对紧急服务中断的一个主要例子。蜂窝塔的丢失,信号强度差,甚至网络攻击都会影响配电系统上线路设备的SCADA可见性。神经网络(nn)提供了一种独特的方法来学习正常系统行为的特征,识别异常情况,并为系统操作员标记这些情况。本研究在给定天气预报和星期几的情况下,对配电线路设备进行24小时负荷预测,然后根据通信线路设备的SCADA模拟量的变化确定配电设备的当前状态。将一种基于神经网络的算法应用于阿拉巴马州电力公司配电系统的历史事件中,以识别大量SCADA信息被隐藏的线路断电路段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Situational Awareness of De-energized Lines During Loss of SCADA Communication in Electric Power Distribution Systems
With the electric power distribution grid facing ever increasing complexity and new threats from cyber-attacks, situational awareness for system operators is quickly becoming indispensable. Identifying de-energized lines on the distribution system during a SCADA communication failure is a prime example where operators need to act quickly to deal with an emergent loss of service. Loss of cellular towers, poor signal strength, and even cyber-attacks can impact SCADA visibility of line devices on the distribution system. Neural Networks (NNs) provide a unique approach to learn the characteristics of normal system behavior, identify when abnormal conditions occur, and flag these conditions for system operators. This study applies a 24-hour load forecast for distribution line devices given the weather forecast and day of the week, then determines the current state of distribution devices based on changes in SCADA analogs from communicating line devices. A neural network-based algorithm is applied to historical events on Alabama Power's distribution system to identify de-energized sections of line when a significant amount of SCADA information is hidden.
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