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Quickest Detection of False Data Injection Attack in Wide-Area Smart Grids

机译:在广域智能电网中最快地检测错误数据注入攻击

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摘要

We consider the sequential (i.e., online) detection of false data injection attacks in smart grid, which aims to manipulate the state estimation procedure by injecting malicious data to the monitoring meters. The unknown parameters in the system, namely the state vector, injected malicious data and the set of attacked meters pose a significant challenge for designing a robust, computationally efficient, and high-performance detector. We propose a sequential detector based on the generalized likelihood ratio to address this challenge. Specifically, the proposed detector is designed to be robust to a variety of attacking strategies, and load situations in the power system, and its computational complexity linearly scales with the number of meters. Moreover, it considerably outperforms the existing first-order cumulative sum detector in terms of the average detection delay and robustness to various attacking strategies. For wide-area monitoring in smart grid, we further develop a distributed sequential detector using an adaptive sampling technique called level-triggered sampling. The resulting distributed detector features single bit per sample in terms of the communication overhead, while preserving the high performance of the proposed centralized detector.
机译:我们考虑对智能电网中的错误数据注入攻击进行顺序(即在线)检测,其目的是通过向监视仪表注入恶意数据来操纵状态估计过程。系统中的未知参数(即状态向量,注入的恶意数据和受攻击的仪表集)对设计健壮,计算高效且高性能的检测器提出了重大挑战。我们提出了一种基于广义似然比的顺序检测器来应对这一挑战。特别地,提出的检测器被设计为对多种攻击策略和电力系统中的负载情况具有鲁棒性,并且其计算复杂度与电表的数量成线性比例。此外,就平均检测延迟和对各种攻击策略的鲁棒性而言,它大大优于现有的一阶累积和检测器。对于智能电网中的广域监视,我们进一步开发了一种分布式自适应检测器,该检测器采用了一种称为水平触发采样的自适应采样技术。所得的分布式检测器在通信开销方面每个样本只有一位,同时保留了建议的集中式检测器的高性能。

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