A Submodular Receding Horizon Control Strategy to Distributed Persistent Monitoring

Xiaohu Zhao, Yuanyuan Zou, Shaoyuan Li
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Abstract

This paper investigates the multi-agent persistent monitoring problem via a novel distributed submodular receding horizon control approach. In order to approximate global monitoring performance, with the definition of sub-modularity, the original persistent monitoring objective is divided into several local objectives in a receding horizon framework, and the optimal trajectories of each agent are obtained by taking into account the neighborhood information. Specifically, the optimization horizon of each local objective is derived from the local target states and the information received from their neighboring agents. Based on the sub-modularity of each local objective, the distributed greedy algorithm is proposed. As a result, each agent coordinates with neighboring agents asynchronously and optimizes its trajectory independently, which reduces the computational complexity while achieving the global performance as much as possible. The conditions are established to ensure the estimation error converges to a bounded global performance. Finally, simulation results show the effectiveness of the proposed method.
分布式持续监测的子模块后向时域控制策略
本文通过一种新的分布式子模块后退时域控制方法研究了多智能体的持久监测问题。为了近似全局监测性能,在子模块化的定义下,将原始的持久监测目标在后退时域框架中划分为多个局部目标,并通过考虑邻域信息来获得每个代理的最优轨迹。具体地,每个局部目标的优化范围是从局部目标状态和从其相邻代理接收的信息中导出的。基于每个局部目标的子模块性,提出了分布式贪婪算法。因此,每个代理与相邻代理异步协调,并独立优化其轨迹,这在尽可能实现全局性能的同时降低了计算复杂性。建立了确保估计误差收敛到有界全局性能的条件。最后,仿真结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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