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Adaptive Critic Learning and Experience Replay for Decentralized Event-Triggered Control of Nonlinear Interconnected Systems

机译:自适应批评学习和经验重放非线性互联系统的分散事件触发控制

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摘要

In this paper, we develop a decentralized event-triggered control (ETC) strategy for a class of nonlinear systems with uncertain interconnections. To begin with, we show that the decentralized ETC policy for the whole system can be represented by a group of optimal ETC laws of auxiliary subsystems. Then, under the framework of adaptive critic learning, we construct the critic networks to solve the event-triggered Hamilton–Jacobi–Bellman equations related to these optimal ETC laws. The weight vectors used in the critic networks are updated by using the gradient descent approach and the experience replay (ER) technique together. With the aid of the ER technique, we can conquer the difficulty arising in the persistence of excitation condition. Meanwhile, by using classic Lyapunov approaches, we prove that the estimated weight vectors used in the critic networks are uniformly ultimately bounded. Moreover, we demonstrate that the obtained decentralized ETC can force the overall system to be asymptotically stable. Finally, we present an interconnected nonlinear plant to validate the proposed decentralized ETC scheme.
机译:在本文中,我们为一类具有不确定互连的非线性系统开发了分散的事件触发控制(ETC)策略。首先,我们表明,整个系统的分散等政策可以由辅助子系统的一组最佳等法律表示。然后,在自适应批评学习的框架下,我们构建了批评网络,以解决与这些最佳等法律相关的事件触发的汉密尔顿 - jacobi-bellman方程。通过使用梯度下降方法和体验重放(ER)技术在一起更新批评网络中使用的重量向量。借助于ER技术,我们可以征服激发条件持续存在的困难。同时,通过使用经典的Lyapunov方法,我们证明了评论家网络中使用的估计权重向量是均匀的最终界限。此外,我们证明所获得的分散等能力强迫整个系统渐近稳定。最后,我们介绍了一个互连的非线性工厂,以验证提出的分散等等方案。

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