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Fixed-time observer based adaptive neural network time-varying formation tracking control for multi-agent systems via minimal learning parameter approach

机译:基于固定时间观测的基于自适应神经网络通过最小学习参数方法对多种子体系统的自适应神经网络时变形跟踪控制

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摘要

This study proposes a novel control scheme to investigate the time-varying formation tracking control problem for multi-agent systems with model uncertainties and the absence of leader's velocity measurements. For each agent, a novel fixed-time cascaded leader state observer (CLSO) without velocity measurements is first designed to reconstruct the states of the leader. Radial basis function neural networks (RBFNNs) are adopted to deal with the model uncertainties online. Taking the square of the norm of the NN weight vector as a newly developed adaptive parameter, a novel RBFNN-based adaptive control scheme with minimal learning-parameter approach and fixed-time CLSO is then constructed to tackle the time-varying formation tracking problem. The uniform ultimate boundedness property of the formation tracking error is guaranteed through Lyapunov stability analysis. Finally, two simulation scenario results demonstrate the effectiveness of the proposed formation tracking control scheme.
机译:本研究提出了一种新的控制方案,以研究具有模型不确定性的多助理系统的时变形成控制问题以及领导者速度测量的缺失。对于每个代理,首先设计用于没有速度测量的新型固定时间级联的领导者状态观察者(CLSO)以重建领导者的状态。径向基函数神经网络(RBFNNS)被采用在线处理模型不确定性。将NN重量矢量的规范的正方形作为新开发的自适应参数,然后构造具有最小学习参数方法和固定时间CLSO的新型RBFNN的自适应控制方案以解决时变形跟踪问题。通过Lyapunov稳定性分析,可以保证地层跟踪误差的均匀终极边界特性。最后,两个模拟场景结果证明了所提出的形成跟踪控制方案的有效性。

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