重放攻击下分布式一致性滤波的安全性分析

Security Analysis of Distributed Consensus Filtering Under Replay Attacks

IEEE Transactions on Cybernetics · 2023
被引 31
ABS 3

中文导读

研究了重放攻击对分布式一致性滤波的影响,证明在稳定系统下估计误差有界且攻击可被量化,在不稳定系统下误差可能发散并给出可检测条件。

Abstract

This work studies the security of consensus-based distributed filtering under the replay attack, which can freely select a part of sensors and modify their measurements into previously recorded ones. We analyze the performance degradation of distributed estimation caused by the replay attack, and utilize the Kullback-Leibler (K-L) divergence to quantify the attack stealthiness. Specifically, for a stable system, we prove that under any replay attack, the estimation error is not only bounded, but also can re-enter the steady state. In that case, we prove that the replay attack is ϵ -stealthy, where ϵ can be calculated based on two Lyapunov equations. On the other hand, for an unstable system, we prove that the trace of estimation error covariance is lower bounded by an exponential function, which indicates that the estimation error may diverge due to the attack. In view of this, we provide a sufficient condition to ensure that any replay attack is detectable. Furthermore, we analyze the case that the adversary starts to attack only if the current measurement is close to a previously recorded one. Finally, we verify the theoretical results via several numerical simulations.

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