Home /Research /Performance and storage requirements of topology-conserving maps for robot manipulator control
MANIPULATION

Performance and storage requirements of topology-conserving maps for robot manipulator control

Rüdiger Brause

Year
1989
Citations
5
Access
Open access

Abstract

A new programming paradigm for the control of a robot manipulator by learning the mapping between the Cartesian space and the joint space (inverse Kinematic) is discussed. It is based on a Neural Network model of optimal mapping between two high-dimensional spaces by Kohonen. This paper describes the approach and presents the optimal mapping, based on the principle of maximal information gain. It is shown that Kohonens mapping in the 2-dimensional case is optimal in this sense. Furthermore, the principal control error made by the learned mapping is evaluated for the example of the commonly used PUMA robot, the trade-off between storage resources and positional error is discussed and an optimal position encoding resolution is proposed.

Keywords

RobotTopology (electrical circuits)Computer scienceManipulator (device)Control (management)Control engineeringEngineeringArtificial intelligence

Related papers

Browse all MANIPULATION papers