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Distributed host-based collaborative detection for false data injection attacks in smart grid cyber-physical system

机译:基于主机的分布式协作检测,用于智能电网网络物理系统中的虚假数据注入攻击

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摘要

False data injection (FDI) attacks are crucial security threats to smart grid cyber-physical system (CPS), and could result in cataclysmic consequences to the entire power system. However, due to the high dependence on open information networking, countering FDI attacks is challenging in smart grid CPS. Most existing solutions are based on state estimation (SE) at the highly centralized control center; thus, computationally expensive. In addition, these solutions generally do not provide a high level of security assurance, as evidenced by recent work that smart FDI attackers with knowledge of system configurations can easily circumvent conventional SE-based false data detection mechanisms. In this paper, in order to address these challenges, a novel distributed host-based collaborative detection method is proposed. Specifically, in our approach, we use a conjunctive rule based majority voting algorithm to collaboratively detect false measurement data inserted by compromised phasor measurement units (PMUs). In addition, an innovative reputation system with an adaptive reputation updating algorithm is also designed to evaluate the overall running status of PMUs, by which FDI attacks can be distinctly observed. Extensive simulation experiments are conducted with real-time measurement data obtained from the PowerWorld simulator, and the numerical results fully demonstrate the effectiveness of our proposal.
机译:虚假数据注入(FDI)攻击是对智能电网网络物理系统(CPS)的关键安全威胁,并可能对整个电力系统造成灾难性后果。但是,由于高度依赖开放信息网络,因此在智能电网CPS中,应对FDI攻击具有挑战性。现有的大多数解决方案都是基于高度集中的控制中心的状态估计(SE)。因此,计算上很昂贵。另外,这些解决方案通常不提供高级别的安全保证,如最近的工作所证明的那样,具有系统配置知识的智能FDI攻击者可以轻松绕开常规的基于SE的错误数据检测机制。为了解决这些挑战,提出了一种基于主机的分布式分布式协同检测方法。具体而言,在我们的方法中,我们使用基于连接规则的多数表决算法来协同检测由受损相量测量单元(PMU)插入的错误测量数据。此外,还设计了具有自适应信誉更新算法的创新信誉系统,以评估PMU的总体运行状态,从而可以清楚地观察到FDI攻击。使用从PowerWorld模拟器获得的实时测量数据进行了广泛的仿真实验,数值结果充分证明了我们的建议的有效性。

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