Title :
Fuzzy learning control for a flexible-link robot
Author :
Moudgal, Vivek G. ; Kwong, Waihon Andrew ; Passino, Kevin M. ; Yurkovich, Stephen
Author_Institution :
Dept. of Electr. Eng., Ohio State Univ., Columbus, OH, USA
fDate :
5/1/1995 12:00:00 AM
Abstract :
There are two main drawbacks in fuzzy control: 1) the design of fuzzy controllers is usually performed in an ad hoc manner where it is often difficult to choose some of the controller parameters; and 2) the fuzzy controller constructed for the nominal plant may later perform inadequately if significant and unpredictable plant parameter variations occur. In this paper we illustrate these two problems on a two-link flexible robot testbed by: 1) developing, implementing, and evaluating a fuzzy controller for the robotic mechanism, and 2) illustrating that payload variations can have negative effects on the performance of a well designed fuzzy control system. Next, we show how to develop and implement a fuzzy model reference learning controller for the flexible robot and illustrate that it can automatically synthesize a rule-base for a fuzzy controller that will achieve comparable performance to the case where it was manually constructed, and automatically tune the fuzzy controller so that it can adapt to variations in the payload
Keywords :
control system analysis; fuzzy control; intelligent control; knowledge based systems; model reference adaptive control systems; robots; flexible-link robot; fuzzy learning control; fuzzy model reference learning controller; intelligent control; payload variations; rule-based system; Automatic control; Degradation; Fuzzy control; Orbital robotics; Payloads; Robot control; Robot sensing systems; Robotics and automation; Space stations; Vibration control;
Journal_Title :
Fuzzy Systems, IEEE Transactions on