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Course control of air cushion vessel based on terminal sliding mode control with RBF neural network

机译:基于RBF神经网络终端滑模控制的气垫船航向控制。

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A terminal sliding mode (TSM) control system with radial basis function (RBF) neural network, which is designed for enhancing the maneuverability and realizing the course control accurately of air cushion vehicle is proposed in the paper. An advanced TSM is utilized to drive the system to converge in a fast period of time, and attenuate the air cushion vehicle uncertainties and external disturbances. In order to reduce the error caused by the unchangeable surface of the sliding mode control, a RBF neural network is introduced to approximate external disturbances to offset the disadvantage and guarantee robust performance of the sliding mode control by moving the sliding surface effectively. The stability of the proposed movement control law was proved utilizing the Lyapunov theory. Under conditions of different external disturbances, the simulation results of the TSM control confirm that TSM control can achieve fast response speed, good stability and high precision with a simple controller.
机译:提出了一种基于径向基函数(RBF)神经网络的终端滑模(TSM)控制系统,该系统旨在提高气垫车的可操纵性并实现对路线的精确控制。利用先进的TSM驱动系统在短时间内收敛,并减轻气垫车的不确定性和外部干扰。为了减少由滑动模式控制的不可改变的表面引起的误差,引入了RBF神经网络来近似外部干扰,以弥补缺点并通过有效地移动滑动表面来保证滑动模式控制的鲁棒性能。利用李雅普诺夫理论证明了所提出的运动控制律的稳定性。在不同的外部干扰条件下,TSM控制的仿真结果表明,TSM控制可以通过简单的控制器实现快速响应速度,良好的稳定性和高精度。

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