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Adaptive Critic Designs for Event-Triggered Robust Control of Nonlinear Systems With Unknown Dynamics

机译:具有未知动态的非线性系统事件触发鲁棒控制的自适应批评设计

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摘要

This paper develops a novel event-triggered robust control strategy for continuous-time nonlinear systems with unknown dynamics. To begin with, the event-triggered robust nonlinear control problem is transformed into an event-triggered nonlinear optimal control problem by introducing an infinite-horizon integral cost for the nominal system. Then, a recurrent neural network (RNN) and adaptive critic designs (ACDs) arc employed to solve the derived event-triggered nonlinear optimal control problem. The RNN is applied to reconstruct the system dynamics based on collected system data. After acquiring the knowledge of system dynamics, a unique critic network is proposed to obtain the approximate solution of the event-triggered Hamilton-Jacobi-Bellman equation within the framework of ACDs. The critic network is updated by using simultaneously historical and instantaneous state data. An advantage of the present critic network update law is that it can relax the persistence of excitation condition. Meanwhile, under a newly developed event-triggering condition, the proposed critic network tuning rule not only guarantees the critic network weights to converge to optimums but also ensures nominal system states to be uniformly ultimately bounded. Moreover, by using Lyapunov method, it is proved that the derived optimal event-triggered control (ETC) guarantees uniform ultimate boundedness of all the signals in the original system. Finally, a nonlinear oscillator and an unstable power system are provided to validate the developed robust ETC scheme.
机译:本文开发了一种用于具有未知动力学的连续时间非线性系统的新事件触发的强大控制策略。首先,通过引入标称系统的无限范围整体成本,将事件触发的鲁棒非线性控制问题转换为事件触发的非线性最佳控制问题。然后,用于解决导出的事件触发非线性最佳控制问题的经常性神经网络(RNN)和自适应批评设计(ACDS)弧。基于收集的系统数据,应用RNN重建系统动态。在获取系统动态的知识之后,提出了一个独特的评论家网络,以获得ACD框架内事件触发的汉密尔顿 - jacobi-bellman方程的近似解。通过同时历史和瞬时状态数据更新批评网络。目前批评网络更新法的一个优势在于它可以放松励磁条件的持久性。同时,在新开发的事件触发条件下,建议的批评批评网络调整规则不仅保证了批评网络权重聚到最佳,而且还确保了名义上的系统状态均匀最终界定。此外,通过使用Lyapunov方法,证明导出的最佳事件触发的控制(ETC)保证了原始系统中所有信号的均匀终极界限。最后,提供了一种非线性振荡器和不稳定的电力系统以验证开发的鲁棒等方案。

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