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A Supermodular Optimization Framework for Leader Selection Under Link Noise in Linear Multi-Agent Systems

机译:线性多Agent系统中链路噪声下领导者选择的超模块化优化框架

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In many applications of multi-agent systems (MAS), a set of leader agents acts as control inputs to the remaining follower agents. In this paper, we introduce an analytical approach to selecting leader agents in order to minimize the total mean-square error of the follower agent states from their desired value in steady-state in the presence of noisy communication links. We show that, for a set of link weights based on the second-order noise statistics, the problem of choosing leaders in order to minimize this error can be solved using supermodular optimization techniques, leading to efficient algorithms that are within a provable bound of the optimum. We formulate two leader selection problems within our framework, namely the problem of choosing a fixed number of leaders to minimize the error, as well as the problem of choosing the minimum number of leaders to achieve a tolerated level of error. We study both leader selection criteria for different scenarios, including MAS with static topologies, topologies experiencing random link or node failures, switching topologies, and topologies that vary arbitrarily in time due to node mobility. In addition to providing provable bounds for all of these cases, simulation results demonstrate that our approach outperforms other leader selection methods, such as node degree-based and random selection methods, and provides comparable performance to current state of the art algorithms.
机译:在多主体系统(MAS)的许多应用中,一组领导者代理充当其余跟随者代理的控制输入。在本文中,我们介绍了一种选择领导者代理的分析方法,以便在存在嘈杂的通信链接的情况下,将跟随者代理状态的总均方误差从稳态时的期望值降至最低。我们表明,对于基于二阶噪声统计量的一组链路权重,可以使用超模块化优化技术解决选择引导器以最小化此错误的问题,从而导致在可证明范围内的有效算法。最佳。我们在我们的框架内制定了两个领导者选择问题,即选择固定数量的领导者以最小化误差的问题,以及选择最小数量的领导者以实现可容忍的错误水平的问题。我们研究了针对不同场景的两种领导者选择标准,包括具有静态拓扑的MAS,遇到随机链路或节点故障的拓扑,交换拓扑以及由于节点移动性随时间变化的拓扑。除了为所有这些情况提供可证明的界限外,仿真结果还表明,我们的方法优于其他领导者选择方法(例如,基于节点度的方法和随机选择方法),并且可提供与当前最新算法相当的性能。

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