4.5 Article

Robot arm reaching through neural inversions and reinforcement learning

Journal

ROBOTICS AND AUTONOMOUS SYSTEMS
Volume 31, Issue 4, Pages 227-246

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/S0921-8890(99)00100-1

Keywords

differential inverse kinematics; neural networks; reaching motions; redundant manipulators; reinforcement learning

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We present a neural method that computes the inverse kinematics of any kind of robot manipulators; both redundant and non-redundant. Inverse kinematics solutions are obtained through the inversion of a neural network that has been previously trained to approximate the manipulator forward kinematics. The inversion provides difference vectors in the joint space from difference vectors in the workspace. Our differential inverse kinematics (DIV) approach can be viewed as a neural network implementation of the Jacobian transpose method for arm kinematic control that does not require previous knowledge of the arm forward kinematics. Redundancy can be exploited to obtain a special inverse kinematic solution that meets a particular constraint (e.g. joint limit avoidance) by inverting an additional neural network The usefulness of our DIV approach is further illustrated with sensor-based multilink manipulators that learn collision-free reaching motions in unknown environments. For this task, the neural controller has two modules: a reinforcement-based action generator (AG) and a DIV module that computes goal vectors in the joint space. The actions given by the AG are interpreted with regard to those goal vectors. (C) 2000 Published by Elsevier Science B.V. All rights reserved.

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