• Title of article

    RESOLUTION OF NONLINEAR OPTIMIZATION PROBLEMS SUBJECT TO BIPOLAR MAX-MIN FUZZY RELATION EQUATION CONSTRAINTS USING GENETIC ALGORITHM

  • Author/Authors

    DANA MAZRAEH, H , ABBASI MOLAI, A

  • Pages
    23
  • From page
    109
  • To page
    131
  • Abstract
    This paper studies the nonlinear optimization problems subject to bipolar max-min fuzzy relation equation constraints. The feasible solution set of the problems is non-convex, in a general case. Therefore, conventional nonlinear optimization methods cannot be ideal for resolution of such problems. Hence, a Genetic Algorithm (GA) is proposed to nd their optimal solution. This algorithm uses the structure of the feasible domain of the problems and lower and upper bound of the feasible solution set to choose the initial population. The GA employs two dierent crossover operations: 1- N-points crossover and 2- Arithmetic crossover. We run the GA with two crossover operations for some test problems and compare their results and performance to each other. Also, their results are compared with the results of other authors' works.
  • Keywords
    Genetic algorithm , Nonlinear optimization , Max-min composition , Bipolar fuzzy relation equations
  • Journal title
    Astroparticle Physics
  • Serial Year
    2018
  • Record number

    2450484