Resilient Average Consensus: A Detection and Compensation Approach

22 Feb 2022  ·  Wenzhe Zheng, Zhiyu He, Jianping He, Chengcheng Zhao, Chongrong Fang ·

We study the problem of resilient average consensus for multi-agent systems with misbehaving nodes. To protect consensus valuefrom being influenced by misbehaving nodes, we address this problem by detecting misbehaviors, mitigating the corresponding adverse impact and achieving the resilient average consensus. In this paper, general types of misbehaviors are considered,including deception attacks, accidental faults and link failures. We characterize the adverse impact of misbehaving nodes in a distributed manner via two-hop communication information and develop a deterministic detection-compensation-based consensus (D-DCC) algorithm with a decaying fault-tolerant error bound. Considering scenarios where information sets are intermittently available due to link failures, a stochastic extension named stochastic detection-compensation-based consensus(S-DCC) algorithm is proposed. We prove that D-DCC and S-DCC allow nodes to asymptotically achieve resilient averageconsensus exactly and in expectation, respectively. Then, the Wasserstein distance is introduced to analyze the accuracy ofS-DCC. Finally, extensive simulations are conducted to verify the effectiveness of the proposed algorithm

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