首页> 外文会议>International Conference on Advances in Natural Computation(ICNC 2005); 20050827-29; Changsha(CN) >Use of Adaptive Learning Radial Basis Function Network in Real-Time Motion Tracking of a Robot Manipulator
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Use of Adaptive Learning Radial Basis Function Network in Real-Time Motion Tracking of a Robot Manipulator

机译:自适应学习径向基函数网络在机器人操纵器实时运动跟踪中的应用

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摘要

In this paper, real time motion tracking of a robot manipulator based on the adaptive learning radial basis function network is proposed. This method for adaptive learning needs little knowledge of the plant in the design processes. So the centers and widths of the employed radial basis function network (RBFN) as well as the weights are determined adaptively. With the help of the RBFN, motion tracking of the robot manipulator is implemented without knowing the information of the system in advance. Furthermore, identification error and the tuned parameters of the RBFN are guaranteed to be uniformly ultimately bounded in the sense of Lyapunov's stability criterion.
机译:本文提出了一种基于自适应学习径向基函数网络的机器人操纵器实时运动跟踪方法。这种用于自适应学习的方法在设计过程中几乎不需要工厂的知识。因此,自适应地确定所采用的径向基函数网络(RBFN)的中心和宽度以及权重。借助RBFN,无需事先了解系统信息即可执行机器人操纵器的运动跟踪。此外,从Lyapunov的稳定性准则的意义上讲,RBFN的识别误差和调整后的参数可以保证最终统一。

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