Original scientific paper
CMAC neural network method with application to kinematics control of a redundant manipulator
Yangmin Li
; Faculty of Science and Technology, University of Macau, MACAU
Sio Hong Leong
Abstract
The inverse kinematics problems of redundant manipulators have been investigated for many years. The conventional method of solving this problem is through applying the Jacobian Pseudoinverse Algorithm, which is effective and able to resolve the redundancy for a redundant manipulator. However, computational effort makes it not suitable for real time control. Recently, neural networks have been widely used in robotic control because they are fast, fault-tolerant and able to learn. In this paper, we will present the application of CMAC (Cerebellar Model Articulation Controller) neural network for solving the inverse kinematics problems in real time. Simulations have been carried out for a five-link manipulator in order to evaluate the performance of the CMAC neural network. Through computer simulation, we found CMAC NN method is especially suitable for real time control of robots and solving nonlinear function approximation problem.
Keywords
inverse kinematic problem, neural network method, redundant manipulator, real time control
Hrčak ID:
318796
URI
Publication date:
12.12.2001.
Visits: 229 *