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CONSUMER: A Novel Hybrid Intrusion Detection System for Distribution Networks in Smart Grid

机译:消费者:一种用于智能电网中配电网的新型混合入侵检测系统

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摘要

Smart meters have been deployed worldwide in recent years that enable real-time communications and networking capabilities in power distribution systems. Problematically, recent reports have revealed incidents of energy theft in which dishonest customers would lower their electricity bills (aka stealing electricity) by tampering with their meters. The physical attack can be extended to a network attack by means of false data injection (FDI). This paper is thus motivated to investigate the currently-studied FDI attack by introducing the combination sum of energy profiles (CONSUMER) attack in a coordinated manner on a number of customers' smart meters, which results in a lower energy consumption reading for the attacker and a higher reading for the others in a neighborhood. We propose a CONSUMER attack model that is formulated into one type of coin change problems, which minimizes the number of compromised meters subject to the equality of an aggregated load to evade detection. A hybrid detection framework is developed to detect anomalous and malicious activities by incorporating our proposed grid sensor placement algorithm with observability analysis to increase the detection rate. Our simulations have shown that the network observability and detection accuracy can be improved by means of grid-placed sensor deployment.
机译:近年来,智能电表已在全球范围内部署,可在配电系统中实现实时通信和联网功能。有问题的是,最近的报告显示了偷窃能源的事件,其中不诚实的客户会通过篡改电表来降低电费(又名偷电)。可以通过错误数据注入(FDI)将物理攻击扩展为网络攻击。因此,本文旨在通过以协调的方式在许多客户的智能电表上引入能量分布组合(CONSUMER)攻击来研究当前研究的FDI攻击,从而降低了攻击者和用户的能耗读数。为附近的其他人提供更高的读数。我们提出了一种消费者攻击模型,该模型被构造为一种硬币找零问题,该模型可以最大程度地减少受损害的电表的数量,从而避免了总负荷的逃避。通过将我们提出的网格传感器放置算法与可观察性分析相结合,可以开发出一种混合检测框架来检测异常和恶意活动,以提高检测率。我们的仿真表明,可以通过网格放置的传感器部署来提高网络的可观察性和检测精度。

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