基于非线性多智能体系统鲁棒一致性的扰动估计

Jaywant P. Kolhe, Adarsh Kodhanda, M. Kuber
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摘要

本文提出了一种基于扰动估计的多智能体系统鲁棒一致性设计方法,将所有智能体建模为非线性动态系统。这里考虑的是固定的拓扑结构,并假设所有代理彼此共享其状态的相对信息。在平均一致性算法中加入基于不确定性和扰动估计(UDE)的扰动估计来增强算法的鲁棒性。在这样做时,系统的状态相关非线性被认为是要估计的不确定性的一部分。所提出的鲁棒共识包括两个方面,即所有智能体状态的一致和作用于每个智能体的外部干扰的估计和消除。本文采用一种新的滤波器设计,对作用在系统上的干扰进行了估计。建立了整个系统的闭环稳定性,并给出了数值仿真结果,验证了该方法对不同干扰的有效性。
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Disturbance Estimation based Robust Consensus of Nonlinear Multi-agent Systems
In this work, a new design based on disturbance estimation for the robust consensus of multi-agent systems is proposed where all agents are modelled as non-linear dynamic systems. Here a fixed topology is considered and it is assumed that all agents share relative information of their states with each other. The average consensus algorithm is augmented with Uncertainty and Disturbance Estimator (UDE) based disturbance estimation to achieve robustness. In doing so, state dependent nonlinearities of the system are considered as a part of the uncertainties to be estimated. The proposed robust consensus has two aspects, the agreement of the states of all agents and the estimation as well as cancellation of external disturbances acting on each agent. Here estimation of disturbances acting on the system is obtained using novel filter design of UDE. Closed loop stability of the overall system is established and numerical simulation results of proposed approach are presented to demonstrate its efficacy against different disturbances.
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