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Solving a bi-objective flowshop scheduling problem by a Multi-objective Immune System and comparing with SPEA2+ and SPGA
Authors:H. Amin-TahmasbiR. Tavakkoli-Moghaddam
Affiliation:Department of Industrial Engineering, and Center for Excellence for Intelligence-Based Experimental Mechanics, College of Engineering, University of Tehran, Tehran, Iran
Abstract:This paper presents a bi-objective flowshop scheduling problem with sequence-dependent setup times. The objective functions are to minimize the total completion time and the total earliness/tardiness for all jobs. An integer programming model is developed for the given problem that belongs to an NP-hard class. Thus, an algorithm based on a Multi-objective Immune System (MOIS) is proposed to find a locally Pareto-optimal frontier of the problem. To prove the efficiency of the proposed MOIS, different test problems are solved. Based on some comparison metrics, the computational results of the proposed MOIS is compared with the results obtained using two well-established multi-objective genetic algorithms, namely SPEA2+ and SPGA. The related results show that the proposed MOIS outperforms genetic algorithms, especially for the large-sized problems.
Keywords:Bi-objective flowshop scheduling   Sequence-dependent setup times   Earliness/tardiness   Completion time   Multi-objective Immune System   Genetic algorithm
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