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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Approximate Optimal Distributed Control of Nonlinear Interconnected Systems Using Event-Triggered Nonzero-Sum Games
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Approximate Optimal Distributed Control of Nonlinear Interconnected Systems Using Event-Triggered Nonzero-Sum Games

机译:基于事件触发的非零和博弈的非线性互联系统的近似最优分布控制

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摘要

In this paper, approximate optimal distributed control schemes for a class of nonlinear interconnected systems with strong interconnections are presented using continuous and event-sampled feedback information. The optimal control design is formulated as an N-player nonzero-sum game where the control policies of the subsystems act as players. An approximate Nash equilibrium solution to the game, which is the solution to the coupled Hamilton-Jacobi equation, is obtained using the approximate dynamic programming-based approach. A critic neural network (NN) at each subsystem is utilized to approximate the Nash solution and novel event-sampling conditions, that are decentralized, are designed to asynchronously orchestrate the sampling and transmission of state vector at each subsystem. To ensure the local ultimate boundedness of the closed-loop system state and NN parameter estimation errors, a hybrid-learning scheme is introduced and the stability is guaranteed using Lyapunov-based stability analysis. Finally, implementation of the proposed event-based distributed control scheme for linear interconnected systems is discussed. For completeness, Zeno-free behavior of the event-sampled system is shown analytically and a numerical example is included to support the analytical results.
机译:在本文中,使用连续的和事件采样的反馈信息,给出了一类具有强互连性的非线性互连系统的近似最优分布式控制方案。最优控制设计公式化为N玩家非零和博弈,其中子系统的控制策略充当玩家。使用基于动态规划的近似方法,可以获得博弈的近似Nash平衡解,它是耦合的Hamilton-Jacobi方程的解。利用每个子系统的评论者神经网络(NN)来近似Nash解,并且将分散的新颖事件采样条件设计为异步协调每个子系统的状态向量的采样和传输。为了确保闭环系统状态和NN参数估计误差的局部极限有界,引入了一种混合学习方案,并使用基于Lyapunov的稳定性分析来保证稳定性。最后,讨论了所提出的基于事件的线性互连系统的分布式控制方案的实现。为了完整起见,分析显示了事件采样系统的无Zeno行为,并提供了一个数值示例来支持分析结果。

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