DocumentCode
3335582
Title
Robot control using neural networks
Author
Josin, G. ; Charney, D. ; White, D.
Author_Institution
Neural Syst. Inc., Vancouver, BC, Canada
fYear
1988
fDate
24-27 July 1988
Firstpage
625
Abstract
Neural network theory is applied to theoretical robot kinematics to learn accuracy transforms. The network is trained on accuracy data that characterize the actual robot kinematics. The network learns the differences in the joint angles to improve the accuracy between the effector endpoint resulting from the theoretically calculated joint angles and the desired endpoint. The trained network generalizes a stationary vector field of accuracy data in a two-dimensional planar region. Results show that a neural network can increase both the accuracy and the positional repeatability of robots. Application of a neural network reduces required computational power, calibration time, maintenance cost, and engineering time when developing controllers for new robots by its emergent generalization, fault-tolerant, and self-organization properties.<>
Keywords
kinematics; learning systems; neural nets; robots; accuracy transforms; calibration time; computational power; effector endpoint; emergent generalization; engineering time; fault-tolerant; joint angle differences; maintenance cost; neural networks; positional repeatability; robot kinematics; self-organization; two-dimensional planar region; Kinematics; Learning systems; Neural networks; Robots;
fLanguage
English
Publisher
ieee
Conference_Titel
Neural Networks, 1988., IEEE International Conference on
Conference_Location
San Diego, CA, USA
Type
conf
DOI
10.1109/ICNN.1988.23980
Filename
23980
Link To Document