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Robust adaptive neural network-based control of robot manipulators subject to external disturbances

机译:基于强大的自适应神经网络的机器人机械手控制受外部干扰

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The dynamics of the robot manipulator, in general are highly nonlinear and subject to varying payload, potential external disturbance, and model uncertainties. To solve the strong nonlinearity and unmodeled dynamics problems with unknown upper bound of the external disturbances in robot manipulator control, a new robust adaptive neural network-based controller is proposed in this paper. As compared with the existing controllers, the designed control law can overcome the tolerable external disturbances, where a priori knowledge of upper bound for the system uncertainties and external disturbances is not required. The stability and convergence properties of the closed-loop system are analytically proved using Lyapunov stability theory. Simulations are performed for a three-link manipulator to illustrate the viability and the advantages of the proposed controller.
机译:通常的机器人操纵器的动态通常是高度非线性,并且受到不同的有效载荷,潜在的外部干扰和模型不确定性。为了解决机器人操纵器控制中外部干扰未知的上限的强烈非线性和未拼接的动力学问题,本文提出了一种新的鲁棒自适应神经网络的控制器。与现有控制器相比,设计的控制法可以克服可容忍的外部干扰,其中不需要先验的系统不确定性和外部干扰的上限。使用Lyapunov稳定性理论分析闭环系统的稳定性和收敛性。对三连杆机械手进行仿真以说明所提出的控制器的可行性和优点。

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