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Neural Adaptive Dynamic Surface Asymptotic Tracking Control for a Class of Uncertain Nonlinear System

机译:一类不确定非线性系统的神经自适应动态表面渐近跟踪控制

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摘要

In this paper, by incorporating the neural network into an adaptive dynamic surface control (DSC) framework, a neural adaptive DSC algorithm is developed for a class of uncertain nonlinear system to ensure the asymptotic output tracking. Neural network is used to approximate the unknown nonlinear term in the system such that the requirements for known nonlinear term in control laws design procedure are released. In order to eliminate the boundary layer effects, which are caused by the linear filters at each step in the DSC procedure, the nonlinear filters with the compensation term are designed skillfully. The proposed neural adaptive DSC algorithm not only avoids the inherent problem of "explosion of complexity" in the backstepping procedure, but also has its own advantages: (1) releasing the requirements for known nonlinear term in control laws design procedure; (2) holding the asymptotic output tracking performance. Some simulations are shown to demonstrate the effectiveness and advantages of the proposed controller.
机译:本文通过将神经网络纳入自适应动态表面控制(DSC)框架,为一类不确定的非线性系统开发了一种神经自适应DSC算法,以确保渐近输出跟踪。神经网络用于近似系统中未知的非线性术语,使得释放了对照法设计过程中已知非线性术语的要求。为了消除由DSC过程中的每个步骤的线性滤波器引起的边界层效果,具有补偿项的非线性滤波器巧妙地设计。该提出的神经自适应DSC算法不仅避免了在BackStepping程序中的“复杂性爆炸”的固有问题,而且还具有自己的优点:(1)释放对照法设计程序中已知非线性术语的要求; (2)持有渐近输出跟踪性能。显示一些模拟来证明所提出的控制器的有效性和优点。

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