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Single-network ADP for solving optimal event-triggered tracking control problem of completely unknown nonlinear systems

机译:用于解决完全未知的非线性系统的最佳事件触发跟踪控制问题的单网络ADP

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摘要

In this paper, we propose an optimal event-triggered tracking control scheme for completely unknown nonlinear systems under the adaptive dynamic programming (ADP) framework. A data-driven model based on recurrent neural networks (RNNs) is first constructed to model the system uncertainties including the drift dynamics and the input gain matrix, and the modeling error caused by NN approximation is well eliminated through adding a compensation term in the data-driven model such that the model state can asymptotically track the system state. Apart from the traditional construction of optimal tracking controllers, in this paper, an augmented system is developed and a discounted performance function is considered to achieve the optimality. By employing the Bellman optimal principle, an event-triggered tracking Hamilton-Jacobi-Bellman (HJB) equation is then formulated. The approximate solution of the HJB equation can be obtained by virtue of a critic NN, which significantly simplifies the implementation architecture of ADP. Both the historical state data and the current state data are incorporated into the updating of the weight vector in the critic NN, in this circumstance, the persistence of excitation assumption is not needed anymore. It is strictly proven via Lyapunov stability theory that the tracking error state and the critic NN weight are uniformly ultimately bounded. Simulation results examine the validity of the design scheme.
机译:在本文中,我们提出了在自适应动态编程(ADP)框架下的完全未知非线性系统的最佳事件触发跟踪控制方案。首先构建基于经常性神经网络(RNNS)的数据驱动模型以模拟包括漂移动态和输入增益矩阵的系统不确定性,并且通过在数据中添加补偿项,通过添加补偿项来消除由NN近似引起的建模误差-Drive模型使模型状态可以渐近地跟踪系统状态。除了传统的最佳跟踪控制器的结构之外,在本文中,开发了一种增强系统,并考虑了折扣性能函数来实现最优性。通过采用Bellman最佳原理,然后制定一个事件触发的跟踪汉密尔顿 - Jacobi-Bellman(HJB)方程。 HJB方程的近似解可以通过批评者NN获得,这显着简化了ADP的实现架构。在这种情况下,历史状态数据和当前状态数据都结合到批评者NN中的重量向量中的更新中,不再需要激励假设的持久性。通过Lyapunov稳定性理论严格验证,即跟踪误差状态和评论家NN重量是均匀的最终界限。仿真结果检查了设计方案的有效性。

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