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A robust adaptive sliding mode tracking control using an RBF neural network for robotic manipulators

机译:使用RBF神经网络的机械手鲁棒自适应滑模跟踪控制

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A new robust adaptive sliding mode tracking control scheme using an RBF neural network is proposed for rigid robotic manipulators to achieve robustness and asymptotic error convergence. A key feature of this scheme is that the prior knowledge of the upper bound of the system uncertainties is not required. An adaptive RBF neural network is used to learn the upper bound of system uncertainties. The output of the neural network is then used as a compensator parameter in the sense that the effects of the system uncertainties can be eliminated and asymptotic error convergence can be obtained for the closed loop robotic control system.
机译:针对刚性机械臂,提出了一种新的基于RBF神经网络的鲁棒自适应滑模跟踪控制方案,以实现鲁棒性和渐近误差收敛。该方案的关键特征是不需要系统不确定性上限的先验知识。自适应RBF神经网络用于学习系统不确定性的上限。在可以消除系统不确定性的影响并可以为闭环机器人控制系统获得渐近误差收敛的意义上,然后将神经网络的输出用作补偿器参数。

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