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Quickest detection of false data injection attack in remote state estimation

机译:远程状态估计中的假数据注入攻击的最快检测

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In this paper, quickest detection of false data injection attack on remote state estimation is considered. A set of $N$ sensors make noisy linear observations of a discrete-time linear process with Gaussian noise, and report the observations to a remote estimator. The challenge is the presence of a few potentially malicious sensors which can start strategically manipulating their observations at a random time in order to skew the estimates. The quickest attack detection problem for a known linear attack scheme is posed as a constrained Markov decision process in order to minimize the expected detection delay subject to a false alarm constraint, with the state involving the probability belief at the estimator that the system is under attack. State transition probabilities are derived in terms of system parameters, and the structure of the optimal policy is derived analytically. It turns out that the optimal policy amounts to checking whether the probability belief exceeds a threshold. Numerical results demonstrate significant performance gain under the proposed algorithm against competing algorithms.
机译:在本文中,考虑了对远程状态估计的假数据注入攻击的最快检测。一套 $ n $ 传感器对具有高斯噪声的离散时间线性过程进行嘈杂的线性观察,并将观察报告给远程估计。挑战是存在一些可能的恶意传感器,其可以在随机时间开始战略性地操纵他们的观察,以便歪斜估计。已知的线性攻击方案的最快攻击检测问题被构成为受约束的马尔可夫决策过程,以便最小化受错误警报限制的预期检测延迟,其涉及系统受到攻击的估计的概率信念。状态转换概率在系统参数方面导出,并且在分析上导出了最佳策略的结构。事实证明,最佳政策需要检查概率信念是否超过阈值。数值结果表明,根据竞争算法的提议算法表现出显着的性能增益。

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