论文标题

自适应主动辅助网络多重系统

Adaptive Active-Passive Networked Multiagent Systems

论文作者

Arabi, Ehsan, Panagou, Dimitra, Yucelen, Tansel

论文摘要

主动 - 辅助多重系统系统由受输入(活跃药物)和没有输入(被动剂)的代理组成,其中活性和被动剂角色被认为是可互换的,以捕获广泛的应用程序。控制主动性多构想系统的挑战是信息交换不确定性的存在,这些不确定性可能会产生不良的闭环系统性能。本文以这个角度的启发,提出了针对此类多构想系统的自适应控制算法,以抑制信息交换不确定性的负面影响。具体而言,通过估计这些不确定性,提出的自适应控制体系结构具有以分布式方式恢复活跃的多种系统性能的能力。结果,代理将应用到活动剂的输入平均值的用户调整邻域收敛。从人类机器人协作的角度来看,所提出的控制体系结构的功效也得到了验证,其中人类正在访问多个任务位置,而多基因系统将这些位置确定为覆盖范围控制问题。

Active-passive multiagent systems consist of agents subject to inputs (active agents) and agents with no inputs (passive agents), where active and passive agent roles are considered to be interchangeable in order to capture a wide array of applications. A challenge in the control of active-passive multiagent systems is the presence of information exchange uncertainties that can yield to undesirable closed-loop system performance. Motivated by this standpoint, this paper proposes an adaptive control algorithm for this class of multiagent systems to suppress the negative effects of information exchange uncertainties. Specifically, by estimating these uncertainties, the proposed adaptive control architecture has the ability to recover the active-passive multiagent system performance in a distributed manner. As a result, the agents converge to a user-adjustable neighborhood of the average of the applied inputs to the active agents. The efficacy of the proposed control architecture is also validated from a human-robot collaboration perspective, where a human is visiting several task locations, and the multiagent system identifies these locations and moves toward them as a coverage control problem.

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