Title :
A growing and pruning method for a history stack neural network based adaptive controller
Author :
Showalter, I. ; Schwartz, H.M.
Author_Institution :
Neptec Design Group, Kanata, Ont., Canada
Abstract :
This paper presents a neural network based control strategy for adaptive control of a robotic manipulator. The neural network learns the inverse dynamics of the robotic manipulator while controlling the robot on-line without any a priori knowledge of the manipulator inertial parameters or the equation of dynamics. The only assumptions that must be made about the target system are the number of inputs and outputs to the system. A history stack algorithm is used to facilitate simultaneous control and learning. Learning performance is improved by growing and pruning neurons from the neural network based on the magnitude of the trajectory error. Simulation of a two degree of freedom serial link manipulator allows verification of the effectiveness of the algorithm. Results show improved performance in comparison to a controller using the history stack alone.
Keywords :
adaptive control; learning (artificial intelligence); manipulator dynamics; neurocontrollers; history stack neural network based adaptive controller; inverse dynamics; manipulator inertial parameters; neural network based control strategy; pruning method; robotic manipulator; serial link manipulator; trajectory error; Adaptive control; Adaptive systems; Artificial neural networks; Control systems; History; Manipulator dynamics; Neural networks; Neurons; Programmable control; Robots;
Conference_Titel :
Decision and Control, 2004. CDC. 43rd IEEE Conference on
Print_ISBN :
0-7803-8682-5
DOI :
10.1109/CDC.2004.1429590