Publication:
Ant colony optimization for multi-objective flow shop scheduling problem

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Yağmahan, Betül

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Yenisey, Mehmet Mutlu

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Pergamon-Elsevier Science

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Abstract

Flow shop scheduling problem consists of scheduling given jobs with same order at all machines. The job can be processed on at most one machine; meanwhile one machine can process at most one job. The most common objective for this problem is makespan. However, multi-objective approach for scheduling to reduce the total scheduling cost is important. Hence, in this study, we consider the flow shop scheduling problem with multi-objectives of makespan, total flow time and total machine idle time. Ant colony optimization (ACO) algorithm is proposed to solve this problem which is known as NP-hard type. The proposed algorithm is compared with solution performance obtained by the existing multi-objective heuristics. As a result, computational results show that proposed algorithm is more effective and better than other methods compared.

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Keywords

Flow shop, Scheduling, Multi-objective, Ant colony optimization, M-machine, N-job, Algorithm, Search, System, Computational efficiency, Problem solving, Optimization, Algorithms, Computer science, Engineering

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Yağmahan, B. ve Yenisey, M.M. (2008). ''Ant colony optimization for multi-objective flow shop scheduling problem''. Computers & Industrial Engineering, 54(3), 411-420.

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