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Minimizing Convergence Error in Multi-Agent Systems Via Leader Selection: A Supermodular Optimization Approach

机译:通过领导者选择最小化多智能体系统中的收敛误差:一种超模块化优化方法

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In a leader-follower multi-agent system (MAS), the leader agents act as control inputs and influence the states of the remaining follower agents. The rate at which the follower agents converge to their desired states, as well as the errors in the follower agent states prior to convergence, are determined by the choice of leader agents. In this paper, we study leader selection in order to minimize convergence errors experienced by the follower agents, which we define as a norm of the distance between the follower agents' intermediate states and the convex hull of the leader agent states. By introducing a novel connection to random walks on the network graph, we show that the convergence error has an inherent supermodular structure as a function of the leader set. Supermodularity enables development of efficient discrete optimization algorithms that directly approximate the optimal leader set, provide provable performance guarantees, and do not rely on continuous relaxations. We formulate two leader selection problems within the supermodular optimization framework, namely, the problem of selecting a fixed number of leader agents in order to minimize the convergence error, as well as the problem of selecting the minimum-size set of leader agents to achieve a given bound on the convergence error. We introduce algorithms for approximating the optimal solution to both problems in static networks, dynamic networks with known topology distributions, and dynamic networks with unknown and unpredictable topology distributions. Our approach is shown to provide significantly lower convergence errors than existing random and degree-based leader selection methods in a numerical study.
机译:在领导者跟随者多主体系统(MAS)中,领导者主体充当控制输入并影响其余跟随者主体的状态。跟随者代理收敛到其期望状态的速率,以及在收敛之前跟随者代理状态中的错误,取决于领导者代理的选择。在本文中,我们研究领导者选择以最小化跟随者主体经历的收敛误差,我们将其定义为跟随者主体的中间状态与领导者主体的凸包之间的距离的范数。通过向网络图上的随机游走引入新颖的连接,我们表明收敛误差具有固有的超模结构,这是前导集的函数。超模块化可以开发有效的离散优化算法,该算法可以直接逼近最佳领导者集,提供可证明的性能保证,并且不依赖于连续松弛。我们在超模块化优化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代理以最小化收敛误差的问题,以及选择最小大小的领导者代理以实现目标的问题。给定收敛误差的界。我们介绍了一些算法,用于对静态网络,具有已知拓扑分布的动态网络和具有未知且不可预测的拓扑分布的动态网络中的问题进行近似求解。与数值研究中现有的基于随机度和基于度的领导者选择方法相比,我们的方法被证明提供了低得多的收敛误差。

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