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首页> 外文期刊>IEEE Transactions on Neural Networks >Neural Network Adaptive Control for a Class of Nonlinear Uncertain Dynamical Systems With Asymptotic Stability Guarantees
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Neural Network Adaptive Control for a Class of Nonlinear Uncertain Dynamical Systems With Asymptotic Stability Guarantees

机译:具有渐近稳定性的一类非线性不确定动力系统的神经网络自适应控制。

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In this paper, a neuroadaptive control framework for continuous- and discrete-time nonlinear uncertain dynamical systems with input-to-state stable internal dynamics is developed. The proposed framework is Lyapunov based and unlike standard neural network (NN) controllers guaranteeing ultimate boundedness, the framework guarantees partial asymptotic stability of the closed-loop system, that is, asymptotic stability with respect to part of the closed-loop system states associated with the system plant states. The neuroadaptive controllers are constructed without requiring explicit knowledge of the system dynamics other than the assumption that the plant dynamics are continuously differentiable and that the approximation error of uncertain system nonlinearities lie in a small gain-type norm bounded conic sector. This allows us to merge robust control synthesis tools with NN adaptive control tools to guarantee system stability. Finally, two illustrative numerical examples are provided to demonstrate the efficacy of the proposed approach.
机译:本文针对具有输入状态稳定内部动力学的连续和离散时间非线性不确定动力系统,建立了一种神经自适应控制框架。所提出的框架是基于Lyapunov的,并且与保证最终有界性的标准神经网络(NN)控制器不同,该框架保证了闭环系统的部分渐近稳定性,即,与关联的部分闭环系统状态有关的渐近稳定性系统工厂状态。构造神经自适应控制器不需要明确了解系统动力学,而无需假设植物动力学可以连续微分,并且不确定系统非线性的近似误差位于较小的增益型范数有界圆锥曲线扇形中。这使我们能够将鲁棒的控制综合工具与NN自适应控制工具合并,以确保系统稳定性。最后,提供了两个说明性的数值示例来证明所提出方法的有效性。

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