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Distributed cooperative learning for a group of uncertain systems via output feedback and neural networks

机译:通过输出反馈和神经网络对一组不确定系统进行分布式协作学习

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This paper studies the problem of adaptive neural network (NN) output-feedback control for a group of uncertain nonlinear multi-agent systems (MASs) from the viewpoint of cooperative learning. It is assumed that all MASs have identical unknown nonlinear dynamic models but carry out different periodic control tasks, i.e., each agent system has its own periodic reference trajectory. By establishing a network topology among systems, we propose a new consensus-based distributed cooperative learning (DCL) law for the unknown weights of radial basis function (RBF) neural networks appearing in output-feedback control laws. The main advantage of such a learning scheme is that all estimated weights converge to a small neighborhood of the optimal value over the union of all system estimated state orbits. Thus, the learned NN weights have better generalization ability than those obtained by traditional NN learning laws. Our control approach also guarantees the convergence of tracking errors and the stability of closed-loop system. Under the assumption that the network topology is undirected and connected, we give a strict proof by verifying the cooperative persisting excitation condition of RBF regression vectors. This condition is defined in our recent work and plays a key role in analyzing the convergence of adaptive parameters. Finally, two simulation examples are provided to verify the effectiveness and advantages of the control scheme proposed in this paper. (C) 2018 The Franklin Institute. Published by Elsevier Ltd. All rights reserved.
机译:从合作学习的角度研究了一组不确定的非线性多智能体系统的自适应神经网络输出反馈控制问题。假定所有MAS具有相同的未知非线性动力学模型,但执行不同的周期性控制任务,即每个代理系统都有自己的周期性参考轨迹。通过在系统之间建立网络拓扑,我们针对输出反馈控制律中出现的径向基函数(RBF)神经网络的未知权重,提出了一种新的基于共识的分布式合作学习(DCL)法。这种学习方案的主要优点是,在所有系统估计状态轨道的并集上,所有估计的权重都收敛到最优值的小邻域。因此,与传统的NN学习法则相比,学习的NN权值具有更好的泛化能力。我们的控制方法还保证了跟踪误差的收敛性和闭环系统的稳定性。在网络拓扑是无方向性和连通性的假设下,我们通过验证RBF回归向量的协同持久激励条件来给出严格的证明。此条件在我们最近的工作中定义,并在分析自适应参数的收敛性中起关键作用。最后,通过两个仿真实例验证了本文提出的控制方案的有效性和优势。 (C)2018富兰克林研究所。由Elsevier Ltd.出版。保留所有权利。

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  • 来源
    《Journal of the Franklin Institute》 |2018年第5期|2536-2561|共26页
  • 作者单位

    Xidian Univ, Sch Aerosp Sci & Technol, Xian 710071, Shaanxi, Peoples R China;

    Xidian Univ, Sch Aerosp Sci & Technol, Xian 710071, Shaanxi, Peoples R China;

    Tencent Holdings Ltd, Beijing 100080, Peoples R China;

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  • 正文语种 eng
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  • 入库时间 2022-08-18 02:57:37

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