Byzantine Resilience at Swarm Scale: A Decentralized Blocklist Protocol from Inter-robot Accusations

Kacper Wardega, Max von Hippel, Roberto Tron, C. Nita-Rotaru, Wenchao Li
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引用次数: 1

Abstract

The Weighted-Mean Subsequence Reduced (W-MSR) algorithm, the state-of-the-art method for Byzantine-resilient design of decentralized multi-robot systems, is based on discarding outliers received over Linear Consensus Protocol (LCP). Although W-MSR provides well-understood theoretical guarantees relating robust network connectivity to the convergence of the underlying consensus, the method comes with several limitations preventing its use at scale: (1) the number of Byzantine robots, F, to tolerate should be known a priori, (2) the requirement that each robot maintains 2F+1 neighbors is impractical for large F, (3) information propagation is hindered by the requirement that F+1 robots independently make local measurements of the consensus property in order for the swarm's decision to change, and (4) W-MSR is specific to LCP and does not generalize to applications not implemented over LCP. In this work, we propose a Decentralized Blocklist Protocol (DBP) based on inter-robot accusations. Accusations are made on the basis of locally-made observations of misbehavior, and once shared by cooperative robots across the network are used as input to a graph matching algorithm that computes a blocklist. DBP generalizes to applications not implemented via LCP, is adaptive to the number of Byzantine robots, and allows for fast information propagation through the multi-robot system while simultaneously reducing the required network connectivity relative to W-MSR. On LCP-type applications, DBP reduces the worst-case connectivity requirement of W-MSR from (2F+1)-connected to (F+1)-connected and the number of cooperative observers required to propagate new information from F+1 to just 1 observer. We demonstrate empirically that our approach to Byzantine resilience scales to hundreds of robots on cooperative target tracking, time synchronization, and localization case studies.
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群体规模的拜占庭弹性:来自机器人间指控的分散黑名单协议
加权平均子序列简化(W-MSR)算法是分散多机器人系统拜占庭弹性设计的最先进方法,它基于丢弃通过线性共识协议(LCP)接收的异常值。尽管W-MSR提供了很好理解的理论保证,将强大的网络连接与潜在共识的收敛联系起来,但该方法存在一些限制,阻碍了其大规模使用:(1)容许的拜占庭机器人数量F应该是先验已知的;(2)每个机器人保持2F+1个邻居的要求对于较大的F是不切实际的;(3)信息传播受到F+1个机器人独立地对共识属性进行局部测量以使群体决策改变的要求的阻碍;(4)W-MSR是LCP特有的,不能推广到非在LCP上实现的应用。在这项工作中,我们提出了一个基于机器人间指控的去中心化黑名单协议(DBP)。指控是基于对不当行为的本地观察,一旦被网络上的合作机器人共享,就会被用作计算封锁列表的图形匹配算法的输入。DBP可以推广到不通过LCP实现的应用,适应拜占庭机器人的数量,并允许通过多机器人系统快速传播信息,同时相对于W-MSR减少所需的网络连接。在lcp类型的应用中,DBP将W-MSR的最坏情况连接要求从(2F+1)连接降低到(F+1)连接,并且将新信息从F+1传播到1个观察者所需的合作观察者数量减少。我们通过经验证明,我们的拜占庭弹性方法适用于数百个机器人的合作目标跟踪、时间同步和定位案例研究。
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