This paper proposes a distributed attack detection and mitigation technique based on distributed estimation over a multi-agent network, where the agents take partial system measurements susceptible to (possible) biasing attacks. In particular, we assume that the system is not locally observable via the measurements in the direct neighborhood of any agent. First, for performance analysis in the attack-free case, we show that the proposed distributed estimation is unbiased with bounded mean-square deviation in steady-state. Then, we propose a residual-based strategy to locally detect possible attacks at agents. In contrast to the deterministic thresholds in the literature assuming an upper bound on the noise support, we define the thresholds on the residuals in a probabilistic sense. After detecting and isolating the attacked agent, a system-digraph-based mitigation strategy is proposed to replace the attacked measurement with a new observationally-equivalent one to recover potential observability loss. We adopt a graph-theoretic method to classify the agents based on their measurements, to distinguish between the agents recovering the system rank-deficiency and the ones recovering output-connectivity of the system digraph. The attack detection/mitigation strategy is specifically described for each type, which is of polynomial-order complexity for large-scale applications. Illustrative simulations support our theoretical results.
翻译:本文根据对多试剂网络的分布估计,提出了一个分布式攻击探测和减缓技术,根据对多试剂网络的分布式估计,在多试剂网络中,物剂采取容易(可能)偏向攻击的局部系统测量,我们特别假定该系统不是通过任何物剂直接附近的测量可以在当地观测到的。首先,为了对无攻击性案例进行性能分析,我们表明,拟议的分布式估计是不带偏见的,在稳定状态下,具有受约束的平均值偏差。然后,我们提出一项基于残余的战略,以便在当地检测可能发生的对物剂的攻击。与文献中那些对噪音支持具有高度约束作用的确定性临界值相比,我们从概率的角度界定残余物的临界值。在发现和隔离被攻击物剂之后,我们建议一项基于系统测量的缓解战略,用一种新的观测等值测量法取代被攻击的测量,以恢复潜在的耐受观察性损失。我们采用了一种图形理论学方法,根据测量结果对物剂进行分类,以区分恢复系统等级偏移的物剂和恢复系统断析的输出连接的物的物,我们具体描述的理论级模型应用。