多智能体系统共识跟踪的迭代学习控制

Shiping Yang, Jian-xin Xu, Deqing Huang
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引用次数: 23

摘要

本文在可重复运行环境下,采用迭代学习控制(ILC)方案对多智能体系统(MAS)进行共识跟踪,其中假定下划线通信图是固定且有向的。与现有的线性智能体动力学共识方案不同,我们考虑了具有非参数不确定性的时变非线性智能体模型。此外,期望的共识轨迹仅为代理的子集所知。利用跟踪任务的重复性和每个智能体的学习能力,所提出的ILC方案使所有智能体在迭代域内达到渐近输出共识,同时在时域内达到完美跟踪。此外,由于存在关联的初始状态学习控制器,因此所提出的共识方案不需要相同的初始条件,使其在实践中更具适用性。最后,通过实例验证了共识方案的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Iterative learning control for multi-agent systems consensus tracking
In this paper, under repeatable operation environment, an iterative learning control (ILC) scheme is applied for multi-agent systems (MAS) to perform consensus tracking, where the underline communication graph is assumed to be fixed and directed. Different from many existing consensus schemes for linear agent dynamics, we consider time-varying nonlinear agent models with non-parametric uncertainties. Furthermore, the desired consensus trajectory is only known to a subset of the agents. By virtue of the repetitiveness of tracking task and the learning ability of each agent, the proposed ILC scheme enables all agents to achieve the asymptotic output consensus in the iteration domain and perfect tracking in the time domain simultaneously. Moreover, owing to the associated initial state learning controller, the proposed consensus scheme does not require the identical initial conditions, henceforth, making it more applicable in practice. In the end, an illustrative example is provided to demonstrate the efficacy of the consensus scheme.
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