Title :
Multivariable model reference fuzzy adaptive control
Author :
Banerjee, J.S. ; Jones, K.O. ; Williams, D.
Author_Institution :
Sch. of Eng., Liverpool John Moores Univ., UK
Abstract :
Rule elicitation remains the most crucial problem in the design of a fuzzy logic controller. This is even more difficult if the process is multivariable, in which case the number of rules increase exponentially with the number of variables. To overcome this, a different type of learning fuzzy control algorithm is presented. The control method has been called the model reference fuzzy adaptive control (MRFAC). This algorithm uses a reference model (which specifies the closed-loop process behaviour) to provide performance feedback for synthesising and modifying a fuzzy controller´s rule-base. A multivariable process has been used to test the MRFAC system and the results are presented
Keywords :
fuzzy control; MRACS; MRFAC; closed-loop process behaviour; multivariable model reference fuzzy adaptive control; multivariable process; performance feedback; rule elicitation; rule-base modification; rule-base synthesis;
Conference_Titel :
Learning Systems for Control (Ref. No. 2000/069), IEE Seminar
Conference_Location :
Birmingham
DOI :
10.1049/ic:20000351