高频扰动非线性不确定系统的自适应神经网络控制

Kuangwei Miao, Sihan Li, Qian Li, Qinmin Yang, Peng Cheng
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引用次数: 0

摘要

在这项工作中,我们处理了一类具有外部高频干扰的不确定非线性对象。提出了一种由两个神经网络和一个低通滤波器组成的新型控制器结构。一个神经网络用来逼近理想控制律,另一个神经网络用来逼近前一个神经网络输出的导数。通过低通滤波器的实现,保证了控制信号的平滑性。此外,在很大程度上减轻了传统神经网络控制器中的类振荡现象。随后,提出了网络的在线学习算法,而不需要先验的系统动力学知识。证明了跟踪误差是半全局一致最终有界的,且有界可以任意小。同时,闭环系统的所有其他信号都是有界的。仿真结果验证了该控制器的性能,并验证了理论结果。
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Adaptive neural network control for nonlinear uncertain systems with high-frequency disturbances
In this work, we deal with a class of uncertain nonlinear plants along with external high-frequency disturbances. A novel controller structure consisting of two neural networks (NNs) and a low-pass filter is proposed. One NN is utilized to approximate an ideal control law and the other one to approximate the derivative of the output of the former NN. The smoothness of the control signal is guaranteed by implementing the low-pass filter. Moreover, the oscillation-like phenomena in traditional NN controllers are largely mitigated. Subsequently, the online learning algorithms of the NNs are presented without the need of a priori knowledge of the system dynamics. The tracking error is proven to be semi-global uniformly ultimately bounded (UUB) and the bound can be made arbitrarily small. Meanwhile, all other signals of the closed-loop system are bounded. Simulation results illustrate the performance of our controller and validate the theoretical outcome.
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