Title of article :
Evolutionary Algorithm for Multi-Objective Multi-Index Transportation Problem Under Fuzziness
Author/Authors :
El-Shorbagy, Mohammed A Department of Basic Engineering Science - Faculty of Engineering - Menoufia University - Shebin El-Kom - Egypt , Mousa, Abd Allah A Department of Mathematics - College of Science and Humanities in Al-Kharj - Prince Sattam Bin Abdulaziz University - Al-Kharj 11942 - Saudi Arabia , ALoraby, Hanaa Department of Mathematics and Statistics - Faculty of Sciences - Taif University - Taif - Saudi Arabia , Abo-Kila, Taghreed Department of geography - faculty of arts - Banha university - Egypt
Abstract :
An Improved Genetic Algorithm (I-GA) for solving multi-objective Fuzzy Multi–Index
Multi-objective Transportation Problem (FM-MOTP) is presented. Firstly, we introduce
a new structure for the individual to be able to represent all possible feasible solutions.
In addition, in order to keep the feasibility of the chromosome, a criterion of the
feasibility was designed. Based on this criterion, the crossover and mutation were
modified and implemented to generate feasible chromosomes. Secondly, an external
archive of Pareto optimal solutions is used, which best conform a Pareto front. For
avoiding an overwhelming number of solutions, the algorithm has a finite-sized archive
of non-dominated solutions, which is updated iteratively at the presence of new
solutions. Finally, the computational studies using two numerical problems, taken from
the literature, demonstrate the effectiveness of the proposed algorithm to solve FMMOTP Problem under fuzziness.
Keywords :
Evolutionary Algorithm , Transportation Problem , Multi-Objective Optimization Problem
Journal title :
Journal of Applied Research on Industrial Engineering