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Anomaly Detection in Electrical Substation Circuits via Unsupervised Machine Learning

机译:通过无监督机器学习检测变电站电路中的异常

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Cyber-physical systems (CPS), such as smart grids, include cyber assets for monitoring, control, and communication in order to maintain safe and efficient operation of a physical process. We propose that CPS intrusion detection systems (CPS IDS) should seek not just to detect attacks in the host audit logs and network traffic (cyber plane), but should consider how attacks are reflected in measurements from diverse devices at multiple locations (physical plane). In electric grids, voltage and current laws induce physical constraints that can be leveraged in distributed agreement algorithms to detect anomalous conditions. This can be done by explicitly coding the physical constraints into a hybrid CPS IDS, making the detector specific to a particular CPS. We present an alternative approach, along with preliminary results, using machine learning to characterize normal, fault, and attack states in a smart distribution substation CPS, using this as a component of a CPS IDS.
机译:网络 - 物理系统(CPS)(如智能电网)包括用于监控,控制和通信的网络资产,以便保持物理过程的安全和有效的操作。我们建议CPS入侵检测系统(CPS ID)应该不仅寻求检测主机审核日志和网络流量(网络平面)的攻击,而且还应考虑如何在多个位置(物理平面)的不同设备中的测量中反映攻击。 。在电网,电压和当前法律诱导可以利用分布式协议算法的物理限制以检测异常条件。这可以通过将物理约束显式编码成混合CPS ID来完成,使得特定于特定CPS特定的检测器。我们提出了一种替代方法,以及初步结果,使用机器学习在智能分配器CP中表征正常,故障和攻击状态,使用这是CPS ID的组件。

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