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Reinforcement learning-based asymptotic cooperative tracking of a class multi-agent dynamic systems using neural networks

机译:基于神经网络的一类多智能体动态系统的基于强化学习的渐近协作跟踪

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In this paper, a novel reinforcement learning-based cooperative tracking control scheme is proposed for a class of multi-agent dynamic systems with disturbances and un-modeled dynamics on undirected graphs by using neural networks (NNs). For each agent, two NNs are employed, i.e., an actor NN which approximates the unknown nonlinearity and generates the control input, and a critic NN which evaluates the performance of the actor and updates the weights of actor NN. Further, a RISE technique is utilized in the design of the actor NN and the critic NN to compensate for the external disturbances and the NN approximation errors. Based on the Lyapunov theory, it is proved that the proposed control scheme can guarantee the tracking error of each agent to converge to zero asymptotically. Additionally, the proposed control scheme is distributed in the sense that the controller for each agent only uses the local neighbor information. Finally, two simulation examples are given to verify the effectiveness of the proposed control scheme. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文针对一类具有扰动和无模型动力学的无向图上的多智能体动态系统,利用神经网络(NNs)提出了一种新颖的基于增强学习的协同跟踪控制方案。对于每个代理,采用两个NN,即近似未知非线性并生成控制输入的角色NN,以及评估角色的性能并更新角色NN权重的注释者NN。此外,在演员NN和评论者NN的设计中使用了RISE技术来补偿外部干扰和NN近似误差。基于李雅普诺夫理论,证明了所提出的控制方案可以保证每个智能体的跟踪误差渐近收敛到零。另外,从每个代理的控制器仅使用本地邻居信息的意义上说,所提出的控制方案是分布式的。最后,通过两个仿真实例验证了所提控制方案的有效性。 (C)2015 Elsevier B.V.保留所有权利。

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