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Neural Learning-Based Fixed-Time Consensus Tracking Control for Nonlinear Multiagent Systems With Directed Communication Networks

机译:基于神经学习的定型通信网络的非线性多元素系统的定时共识跟踪控制

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摘要

This article investigates the problem of fixed-time consensus tracking for nonlinear multiagent systems. Different from the existing studies where the follower systems are linear or pure integrator-type systems, in this article, the follower systems have completely unknown nonlinear functions and time-varying disturbances. Within this framework, a fixed-time observer-based distributed control strategy is proposed to realize the consensus tracking. First, a distributed fixed-time observer is designed for each follower to estimate the leader's state under directed networks. Then, based on the estimate, a fixed-time tracking control protocol is developed where novel approximation and estimation schemes are designed to tackle the nonlinear functions and disturbances. Furthermore, under the proposed control strategy, it is proved that the tracking errors converge into a small set near zero with a fixed-time convergence rate. Finally, the validity of the proposed method is verified by the simulation results.
机译:本文调查了非线性多元素系统的定期共识跟踪问题。与现有的研究不同,随着跟随器系统是线性或纯积分器型系统,在本文中,从动系统具有完全未知的非线性功能和时变干扰。在此框架内,提出了一种基于定时观察者的分布式控制策略,以实现共识跟踪。首先,为每个跟随者设计了一个分布式的定时观察者,以估计指示网络下的领导状态。然后,基于估计,开发了一种定时跟踪控制协议,其中设计了新颖的近似和估计方案来解决非线性功能和干扰。此外,在所提出的控制策略下,证明跟踪误差会聚成具有定时收敛速率的小型零点。最后,通过模拟结果验证了所提出的方法的有效性。

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