多智能体系统的分散协作与编队迭代学习控制

Shangcheng Chen, C. Freeman
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引用次数: 3

摘要

协同跟踪控制和编队控制是多个代理协同工作以执行全局目标的常用方法。它们越来越多地用于各种应用程序,但是很少有控制器同时处理这两个任务。为了提高重复任务的性能,迭代学习控制(ILC)被分别应用于这两种方法。然而,焦点一直集中在集中式结构上,现有的解决方案通常具有有限的收敛速度和鲁棒性。本文通过开发一个强大的分散ILC框架来解决这些限制,该框架将协作跟踪和编队控制目标结合起来。它使广泛类别的ILC算法能够推导出定义良好的收敛率,最佳跟踪解决方案和透明的鲁棒性。通过推导三种新的ILC更新:逆ILC、梯度ILC和范数最优ILC来说明该框架。最后给出了该框架的收敛性分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decentralised Collaborative and Formation Iterative Learning Control for Multi-Agent Systems
Collaborative tracking control and formation control are common approaches in which multiple agents work together to perform a global objective. They are increasingly used in a diverse range of applications, however few controllers simultaneously address both tasks. To improve performance of repeated tasks, iterative learning control (ILC) has been independently applied to both methodologies. However, focus has been on centralized structures, and existing solutions typically have limited convergence rates and robustness properties.This paper addresses these limitations by developing a powerful decentralised ILC framework that unites both collaborative tracking and formation control objectives. It enables broad classes of ILC algorithm to be derived with well-defined convergence rates, optimal tracking solutions, and transparent robustness properties. The framework is illustrated through derivation of three new ILC updates: inverse, gradient and norm optimal ILC. Convergence analysis for the proposed framework is also given.
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