Title of article :
Solving a non-convex non-linear optimization problem constrained by fuzzy relational equations and Sugeno-Weber family of t-norms
Author/Authors :
Ghodousian, A Faculty of Engineering Science - College of Engineering - University of Tehran, Tehran , Ahmadi, A Faculty of Engineering Science - College of Engineering - University of Tehran, Tehran , Dehghani, A Faculty of Engineering Science - College of Engineering - University of Tehran, Tehran
Abstract :
Sugeno-Weber family of t-norms and t-conorms is one of
the most applied one in various fuzzy modelling problems.
This family of t-norms and t-conorms was suggested
by Weber for modeling intersection and union of
fuzzy sets. Also, the t-conorms were suggested as addition
rules by Sugeno for so-called {fuzzy measures. In
this paper, we study a nonlinear optimization problem
where the feasible region is formed as a system of fuzzy
relational equations (FRE) dened by the Sugeno-Weber
t-norm. We rstly investigate the resolution of the feasible
region when it is dened with max-Sugeno-Weber
composition and present some necessary and sucient
conditions for determining the feasibility of the problem.
Also, two procedures are presented for simplifying
the problem. Since the feasible solutions set of FREs is non-convex and the nding of all minimal solutions is an NP-hard problem, conventional
nonlinear programming methods may not be directly employed. For these reasons, a
genetic algorithm is presented, which preserves the feasibility of new generated solutions.
The proposed GA does not need to initially nd the minimal solutions. Also, it does not
need to check the feasibility after generating the new solutions. Additionally, we propose
a method to generate feasible max-Sugeno-Weber FREs as test problems for evaluating
the performance of our algorithm. The proposed method has been compared with some
related works. The obtained results conrm the high performance of the proposed method
in solving such nonlinear problems.
Keywords :
Fuzzy relational equations , nonlinear optimiza- tion , genetic algorithm
Journal title :
Astroparticle Physics