Adaptive Neural Networks Based Robust Output Feedback Controllers for Nonlinear Systems

A. Abougarair, Mohamed Aburakhis, M. Edardar
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引用次数: 15

Abstract

The performance of the nonlinear control system that is subjected to uncertainty, can be enhanced by implementing an adaptive approach by using the robust output-feedback control and the artificial intelligence neural network. This paper seeks to utilize output feedback control for nonlinear system using artificial intelligence employing neural network. The Two Wheel Mobile Robot (TWMR) is treated as a multi-body dynamic system. The nonlinear swing-up problem is handled by designing an adaptive neural network, which is trained using a modified conventional controller called Linear Quadratic Optimal State Estimator with Integral Control (LQOSEIC). In this paper, the nonlinear system TWMR is stabilized utilizing a robust output feedback control called LQOSEIC. This controller allows a linearized model to emulate a model reference for the original nonlinear system. However, it works for a limited range of operations and will fail if the plant characteristics are unknown or uncertain. An adaptive neural network is used to overcome this problem. The adaptive neural controller is trained offline using LQOSEIC to obtain the initial weights of neurons for the network's hidden layers. After finishing the training, the LQOSEIC will be replaced by the adaptive neural controller. The main advantage of a neuro-controller is its ability to update the weights online depending on the error signal. If there are any disturbances or uncertainties that arises within the concerned nonlinear system, the neuro-controller will be able to handle it because of online learning that compensates for the effect of unpredictable conditions. The proposed adaptive neural network improves control performance and ensures the robust stability of the closed-loop control system. Finally, numerical simulations are used to demonstrate the efficacy of the proposed controllers.
基于自适应神经网络的非线性鲁棒输出反馈控制器
采用鲁棒输出反馈控制与人工智能神经网络相结合的自适应方法,可以提高非线性控制系统的不确定性性能。本文试图利用人工智能神经网络对非线性系统进行输出反馈控制。将两轮移动机器人(TWMR)视为一个多体动力学系统。通过设计一个自适应神经网络来处理非线性摆动问题,该神经网络使用一种改进的传统控制器线性二次最优状态估计器与积分控制(LQOSEIC)进行训练。本文采用一种鲁棒输出反馈控制LQOSEIC来稳定TWMR非线性系统。该控制器允许线性化模型模拟原始非线性系统的模型参考。然而,它在有限的操作范围内有效,如果工厂的特性是未知或不确定的,它将失效。采用自适应神经网络来克服这一问题。使用LQOSEIC离线训练自适应神经控制器,获得网络隐藏层神经元的初始权值。训练完成后,LQOSEIC将被自适应神经控制器取代。神经控制器的主要优点是它能够根据误差信号在线更新权值。如果在相关的非线性系统中出现任何干扰或不确定性,神经控制器将能够处理它,因为在线学习补偿了不可预测条件的影响。所提出的自适应神经网络提高了控制性能,保证了闭环控制系统的鲁棒稳定性。最后,通过数值仿真验证了所提控制器的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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