MANIPULATION
Trajectory control of robotic manipulators by using a feedback-error-learning neural network
Zaryab Hamavand, Howard M. Schwartz
- Year
- 1995
- Citations
- 9
Abstract
Summary This paper presents a neural network based control strategy for the trajectory control of robot manipulators. The neural network learns the inverse dynamics of a robot manipulator without any a priori knowledge of the manipulator inertial parameters nor any a priori knowledge of the equation of dynamics. A two step feedback-error-learning process is proposed. Strategies for selection of the training trajectories and difficulties with on-line training are discussed.
Keywords
Artificial neural networkTrajectoryComputer scienceA priori and a posterioriControl theory (sociology)Inverse dynamicsRobot manipulatorArtificial intelligenceProcess (computing)Control engineering
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