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首页> 外文期刊>International Journal of Precision Engineering and Manufacturing >Tracking control of redundant robot manipulators using RBF neural network and an adaptive bound on disturbances
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Tracking control of redundant robot manipulators using RBF neural network and an adaptive bound on disturbances

机译:基于RBF神经网络和干扰自适应限制的冗余机器人操纵器跟踪控制

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摘要

In this paper, a hybrid trajectory tracking controller is designed for redundant robot manipulators, consisting of RBF neural network and an adaptive bound on disturbances. The controller is composed of computed torque type part, RBF neural network and an adaptive controller. The controller achieves end-effector trajectory tracking as well as subtask tracking effectively. The controller is able to learn the existing structured and unstructured uncertainties in the system in online manner. The RBF network learns the unknown part of the robot dynamics with no requirement of the offline training. The adaptive controller is used to estimate the unknown bounds on unstructured uncertainties and neural network reconstruction error. The overall system is proved to be asymptotically stable in the sense of Lyapunov. Finally, numerical simulation studies are performed on a 3R planar robot manipulator to show the effectiveness of the control scheme.
机译:本文设计了一种用于冗余机器人操纵器的混合轨迹跟踪控制器,该控制器由RBF神经网络和扰动自适应边界组成。该控制器由计算转矩型零件,RBF神经网络和自适应控制器组成。控制器有效地实现了末端执行器的轨迹跟踪以及子任务跟踪。控制器能够以在线方式了解系统中现有的结构化和非结构化不确定性。 RBF网络无需离线培训即可学习机器人动力学的未知部分。自适应控制器用于估计非结构化不确定性和神经网络重构误差的未知范围。在李雅普诺夫的意义上,整个系统被证明是渐近稳定的。最后,在3R平面机器人操纵器上进行了数值模拟研究,以显示该控制方案的有效性。

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