Title of article :
Linear optimization on the intersection of two fuzzy relational inequalities defined with Yager family of t-norms
Author/Authors :
Ghodousian, Amin Faculty of Engineering Science - College of Engineering - University of Tehran, Tehran , Zarghani, Reza School of Mechanical Engineering - College of Engineering - University of Tehran, Tehran
Abstract :
In this paper, optimization of a linear objective function
with fuzzy relational inequality constraints is investigated
where the feasible region is formed as the
intersection of two inequality fuzzy systems and Yager
family of t-norms is considered as fuzzy composition.
Yager family of t-norms is a parametric family of continuous
nilpotent t-norms which is also one of the
most frequently applied one. This family of t-norms
is strictly increasing in its parameter and covers the
whole spectrum of t-norms when the parameter is
changed from zero to infinity. The resolution of the
feasible region of the problem is firstly investigated when it is defined with max-Yager composition. Based on some theoretical results,
conditions are derived for determining the feasibility. Moreover, in order to simplify
the problem, some procedures are presented. It is shown that a lower bound is always
attainable for the optimal objective value. Also, it is proved that the optimal solution
of the problem is always resulted from the unique maximum solution and a minimal
solution of the feasible region. A method is proposed to generate random feasible max-
Yager fuzzy relational inequalities and an algorithm is presented to solve the problem.
Finally, an example is described to illustrate these algorithms.
Keywords :
Fuzzy relation , fuzzy relational inequality , linear optimization , fuzzy compositions and t-norms
Journal title :
Astroparticle Physics