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A high performing metaheuristic for multi-objective flowshop scheduling problem
Affiliation:1. Industrial Engineering Department, Baskent University, School of Engineering, Eskişehir Yolu 20 km., Bağlica Kampüsü Etimesgut, Ankara 068100, Turkey;2. Department of Industrial and Systems Engineering, University at Buffalo, 309 Bell Hall, Buffalo, NY, USA, 14260-2050;3. Distinguished Professor, Department of Industrial & Systems Engineering, Auburn University, 3301 Shelby Center, Auburn, AL, USA, 36849-5346
Abstract:Genetic algorithm is a powerful procedure for finding an optimal or near optimal solution for the flowshop scheduling problem. This is a simple and efficient algorithm which is used for both single and multi-objective problems. It can easily be utilized for real life applications. The proposed algorithm makes use of the principle of Pareto solutions. It mines the Pareto archive to extract the most repetitive sequences, and constitutes artificial chromosome for generation of the next population. In order to guide the search direction, this approach coupled with variable neighborhood search. This algorithm is applied on the flowshop scheduling problem for minimizing makespan and total weighted tardiness. For the assessment of the algorithm, its performance is compared with the MOGLS [1]. The results of the experiments allow us to claim that the proposed algorithm has a considerable performance in this problem.
Keywords:Genetic algorithm  Flowshop scheduling problem  Multi-objective optimization  Pareto archive  Variable Neighborhood Search (VNS)
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