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Metaheuristics for two-stage flow-shop assembly problem with a truncation learning function

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posted on 2020-05-07, 10:40 authored by Chin-Chia Wu, Xingong Zhang, Ameni Azzouz, Wei-Lun Shen, Shuenn-Ren Cheng, Peng-Hsiang Hsu, Win-Chin Lin

This study examines a two-stage three-machine flow-shop assembly scheduling model in which job processing time is considered as a mixed function of a controlled truncation parameter with a sum-of-processing-times-based learning effect. However, the truncation function is very limited in the two-stage flow-shop assembly scheduling settings. To overcome this limitation, this study investigates a two-stage three-machine flow-shop assembly problem with a truncation learning function where the makespan criterion (completion of the last job) is minimized. Given that the proposed model is NP hard, dominance rules, lemmas and a lower bound are derived and applied to the branch-and-bound method. A dynamic differential evolution algorithm, a hybrid greedy iterated algorithm and a genetic algorithm are also proposed for searching approximate solutions. Results obtained from test experiments validate the performance of all the proposed algorithms.

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