Title :
Sufficient Conditions for Absolute Stability and Optimization Using Genetic Algorithms of Specific Class of Fuzzy Logic Controllers
Author :
Osmic, Jakub ; Prljaca, Naser
Abstract :
This paper has proposed Specific class of single input single output (SISO) Mamdani fuzzy logic proportional controllers (FLPC) with triangle input membership functions, output membership functions with the same area, the sum-product composition rule for inference and centroid of area defuzzifier for control of both stable and unstable SISO linear time invariant systems. The proposed FLPC in fact represents memoryless, nonlinear, locally Lipschitz mapping between its input and output. According to the Popov criterion for absolute stability, nonlinear part of the system must satisfy sector conditions. In this paper necessary and sufficient conditions have been determined, which must satisfy FLPC parameters in order for the memoryless function represented by FLPC to satisfy the sector conditions. Subsequently, using the Popov criterion, the sufficient conditions for absolute stability of feedback connected linear system and FLPC have been determined. Based on the results achieved, an optimization method for both parameters and decision rules of FLPC has been proposed using genetic algorithms.
Keywords :
Popov criterion; feedback; fuzzy control; genetic algorithms; linear systems; stability; Mamdani fuzzy logic proportional controllers; Popov criterion; absolute stability; fuzzy logic controllers; genetic algorithms; output membership functions; single input single output system; Control systems; Feedback; Fuzzy logic; Genetic algorithms; Linear systems; Optimization methods; Proportional control; Stability criteria; Sufficient conditions; Time invariant systems; Absolute stability; Popov criterion; design; explicit structure; fuzzy controller; genetic algorithms; optimization;
Conference_Titel :
Internet Computing in Science and Engineering, 2008. ICICSE '08. International Conference on
Conference_Location :
Harbin
Print_ISBN :
978-0-7695-3112-0
Electronic_ISBN :
978-0-7695-3112-0
DOI :
10.1109/ICICSE.2008.101