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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >RBF networks-based inverse kinematics of 6R manipulator
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RBF networks-based inverse kinematics of 6R manipulator

机译:基于RBF网络的6R机械手逆运动学

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From the point of view of set theory and mathematics, the relation between the forward kinematics (FK) and the inverse kinematics (IK) can be regarded as a nonlinear mapping between the joint space and the operation space of the robot manipulator. Considering the powerful ability of the artificial neural networks (ANN) to process nonlinear mapping relations, the IK problem can be transformed into the problem of training the weights of ANN. In this work, the solution of the IK of the MOTOMAN manipulator is implemented by using ANN. Because of its local approach ability, the radial basis function (RBF) networks of six inputs and one output are designed. The method avoids the traditional complicated deriving equations procedure and programming. Examples are given to illustrate that RBF networks not only have better computation precision than back propagation ( BP) networks but also converge faster than BP networks.
机译:从集合论和数学的角度来看,正向运动学(FK)和逆向运动学(IK)之间的关系可以看作是机器人操纵器的关节空间和操作空间之间的非线性映射。考虑到人工神经网络(ANN)处理非线性映射关系的强大能力,可以将IK问题转化为训练ANN权重的问题。在这项工作中,使用ANN实现了MOTOMAN机械手的IK解决方案。由于其局部逼近能力,设计了具有六个输入和一个输出的径向基函数(RBF)网络。该方法避免了传统的复杂的微分方程程序和编程。举例说明,RBF网络不仅比反向传播(BP)网络具有更好的计算精度,而且比BP网络收敛更快。

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