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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >3-Dimensional sliding mode adaptive MIMO recurrent fuzzy neural network control for two-link manipulator system
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3-Dimensional sliding mode adaptive MIMO recurrent fuzzy neural network control for two-link manipulator system

机译:两连杆机械手系统的三维滑模自适应MIMO递归模糊神经网络控制

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摘要

A novel methodology of 3-dimensional sliding mode adaptive multi-inputs multi-outputs (MIMO) recurrent fuzzy neural network (SAMRFNN) control for two-link manipulator system is proposed. This control scheme consists of a sliding mode (SM) controller and a 3-dimensional adaptive multi-inputs multi-outputs (MIMO) recurrent fuzzy neural network (AMRFNN) controller. The SM controller is to cope with uncertain dynamics of system and external disturbances; and the AMRFNN controller is used to approach the ideal controller of SM controller such as to stabilize the system. The Lyapunov theorem based adaptive laws are derived to tune the SAMRFNN parameters such that the stability and convergence of those can be guaranteed. In the simulations, persistency excitation (PE) effects and results of all parameters have been discussed and demonstrated; meanwhile, better effectiveness and performances of the proposed SAMRFNN control are demonstrated by comparisons with the adaptive fuzzy neural network (AFNN) control and state feedback control.
机译:提出了一种新型的两连杆机械手3维滑模自适应多输入多输出递归模糊神经网络(SAMRFNN)控制方法。该控制方案由滑模(SM)控制器和3维自适应多输入多输出(MIMO)递归模糊神经网络(AMRFNN)控制器组成。 SM控制器应处理系统的动态不确定性和外部干扰。 AMRFNN控制器用于逼近SM控制器的理想控制器,以使系统稳定。导出基于李雅普诺夫定理的自适应定律,以调整SAMRFNN参数,从而可以确保这些参数的稳定性和收敛性。在仿真中,讨论并演示了持久性激励(PE)效果和所有参数的结果。同时,通过与自适应模糊神经网络(AFNN)控制和状态反馈控制的比较,证明了所提出的SAMRFNN控制具有更好的效果和性能。

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