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Dynamic output feedback RBF neural network sliding mode control for robust tracking and model following

机译:动态输出反馈RBF神经网络滑模控制,用于鲁棒跟踪和模型跟随

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摘要

A dynamic output feedback radial basis function (RBF) neural network sliding mode control (SMC) scheme is proposed to realize the problem of robust tracking and model following for a class of uncertain time-delay systems. The algorithm is based on dynamic output feedback SMC, RBF neural network and adaptive control. The design of sliding surface and the existence of sliding mode have been addressed. The proposed robust tracking controller guarantees the stability of overall closed-loop system and achieves zero-tracking error in the presence of state delays, input delays, time-varying parameter uncertainties and external disturbances. Moreover, the knowledge of upper bound of uncertainties is not required, and chattering phenomenon is eliminated. Both theoretical analysis and illustrative examples demonstrate the validity of the proposed scheme.
机译:为了解决一类不确定时滞系统的鲁棒跟踪和模型跟随问题,提出了一种动态输出反馈径向基函数(RBF)神经网络滑模控制(SMC)方案。该算法基于动态输出反馈SMC,RBF神经网络和自适应控制。解决了滑动面的设计和滑动模式的存在。所提出的鲁棒跟踪控制器保证了整个闭环系统的稳定性,并在存在状态延迟,输入延迟,时变参数不确定性和外部干扰的情况下实现了零跟踪误差。此外,不需要知道不确定性的上限,并且消除了颤动现象。理论分析和实例验证了所提方案的有效性。

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