This paper considers distributed estimation of linear systems when the state observations are corrupted with Gaussian noise of unbounded support and under possible random adversarial attacks. We consider sensors equipped with single time-scale estimators and local chi-square ($\chi^2$) detectors to simultaneously opserve the states, share information, fuse the noise/attack-corrupted data locally, and detect possible anomalies in their own observations. While this scheme is applicable to a wide variety of systems associated with full-rank (invertible) matrices, we discuss it within the context of distributed inference in social networks. The proposed technique outperforms existing results in the sense that: (i) we consider Gaussian noise with no simplifying upper-bound assumption on the support; (ii) all existing $\chi^2$-based techniques are centralized while our proposed technique is distributed, where the sensors \textit{locally} detect attacks, with no central coordinator, using specific probabilistic thresholds; and (iii) no local-observability assumption at a sensor is made, which makes our method feasible for large-scale social networks. Moreover, we consider a Linear Matrix Inequalities (LMI) approach to design block-diagonal gain (estimator) matrices under appropriate constraints for isolating the attacks.
翻译:本文考虑在以下情况下对线性系统进行分布式估计:国家观测由于高斯的无限制支持噪音和可能的随机对抗性攻击而出现腐败时,对线性系统进行分布式估计;我们考虑在传感器上安装单一时间尺度的测距器和本地奇夸的探测器,同时对各州进行观测,共享信息,将噪音/攻击破坏的数据装配到当地,并在自己的观测中发现可能的反常现象;虽然这个办法适用于与全级(可逆)矩阵相关的各种系统,但我们在社会网络中分布式推断的范围内讨论这个办法;拟议的技术优于现有结果,其含义是:(一)我们考虑高斯的测距噪音,而不简化对支持的上限假设;(二)所有现有的以美元/奇夸2美元为基础的技术都是集中的,而我们拟议的技术是分散的,在传感器\ textitle{当地}探测攻击时,没有中央协调员,使用具体的概率阈值阈值;以及(三)在传感器上没有当地观测性假设,这使得我们能够采用大规模攻击的系统设计基准。