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Neural network inverse control techniques for PD controlled robot manipulator

Published online by Cambridge University Press:  01 May 2000

Seul Jung
Affiliation:
Robotics and Computational Intelligence Laboratory, Chungnam National University, Taejon (Korea) 305–764
T.C. Hsia
Affiliation:
Robotics Research Laboratory, Department of Electrical and Computer Engineering, University of California, Davis, CA 95616 (USA)
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Abstract

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In this paper neural network (NN) control techniques for non-model based PD controlled robot manipulators are proposed. The main difference between the proposed technique and the existing feedback error learning (FEL) technique is that compensation of robot dynamics uncertainties is done outside the control loop by modifying the desired input trajectory. By using different NN training signals, two NN control schemes are developed. One is comparable to that in the FEL technique and another has to deal with the Jacobian of the PD controlled robot dynamic system. Performances of both controllers for various trajectories with different PD controller gains are examined and compared with that of the FEL controller. It is shown that the new control technique performed better and robust to PD controller gain variations.

Type
Research Article
Copyright
© 2000 Cambridge University Press