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Practical inverse kinematics of a kinematically redundant robot using a neural network

Ki-Kap Kim, Yong–San Yoon

发表年份
1991
引用次数
4

摘要

In solving inverse kinematics problems, traditional methods such as RMRC (resolved motion rate control) and the IKM (inverse kinematic method) are mostly complicated and time-consuming. Using a neural network, however, a practical algorithm for obtaining accurate joint angles in a much shorter time is possible. The neural network approach assumes a transfer function between inputs and outputs and trains the network to satisfy the representative input-output pairs in the least squares sense. First, a test of the appropriateness of the neural network method is performed for the case of a planar two degrees of freedom (DOF) robot. Then the neural network method is employed to find three joint angles of a planar 3-DOF robot maximizing local manipulability. In this algorithm, the proximal redundant joint angle is determined from a neural network and then the remaining joint angles are determined from analytical functions. The results from this method compare favourably with those from the other two traditional methods.

关键词

Inverse kinematicsArtificial neural networkKinematicsControl theory (sociology)RobotComputer scienceForward kinematicsInversePlanarDegrees of freedom (physics and chemistry)

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