Title :
Experimental studies on robustness of a learning method with a forgetting factor for robotic motion control
Author :
Nanjo, Yoshito ; Arimoto, Suguru
Author_Institution :
Autonomous Robot Syst. Lab., NTT Human Interface Lab., Tokyo, Japan
Abstract :
P-type learning control algorithms for manipulators are quite simple and easily implemented compared with the D-type, since differentiation of velocity signals is unnecessary. When initialization errors, fluctuations of dynamics, and measurement noise exist, the convergence of trajectories to a neighborhood of a given ideal trajectory is uncertain in the P-type algorithm. However, manipulator motion trajectories in P-type learning control that includes a forgetting factor are uniformly bounded. Moreover, if command input data in a long-term memory are updated selectively after every few operational trials, output trajectories converge to a neighborhood of the desired one. In this paper, experimental results are presented, which show the robustness and convergence of this proposed method, and the best choice of a forgetting factor is discussed based on these experimental results.<>
Keywords :
learning (artificial intelligence); proportional control; robots; stability; P-type learning control algorithms; dynamics fluctuations; forgetting factor; initialization errors; learning method; measurement noise; robotic motion control; robustness; trajectory convergence; Convergence; Error correction; Fluctuations; Learning systems; Motion control; Noise measurement; Robot motion; Robust control; Robustness; Velocity control;
Conference_Titel :
Advanced Robotics, 1991. 'Robots in Unstructured Environments', 91 ICAR., Fifth International Conference on
Conference_Location :
Pisa, Italy
Print_ISBN :
0-7803-0078-5
DOI :
10.1109/ICAR.1991.240681