Solving the dual-resource constrained flexible job shop scheduling problem with learning effect by a hybrid genetic algorithm

In this article, we investigate a novel dual-resource constrained flexible job shop scheduling problem with consideration of worker’s learning ability and develop an efficient hybrid genetic algorithm to solve the problem. To begin with, a comprehensive mathematical model with the objective of minim...

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Main Authors: Rui Wu, Yibing Li, Shunsheng Guo, Wenxiang Xu
Format: Article
Language:English
Published: SAGE Publishing 2018-10-01
Series:Advances in Mechanical Engineering
Online Access:https://doi.org/10.1177/1687814018804096
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spelling doaj-e4e2a6100574485c9fdd0165ad9261a02020-11-25T03:06:33ZengSAGE PublishingAdvances in Mechanical Engineering1687-81402018-10-011010.1177/1687814018804096Solving the dual-resource constrained flexible job shop scheduling problem with learning effect by a hybrid genetic algorithmRui WuYibing LiShunsheng GuoWenxiang XuIn this article, we investigate a novel dual-resource constrained flexible job shop scheduling problem with consideration of worker’s learning ability and develop an efficient hybrid genetic algorithm to solve the problem. To begin with, a comprehensive mathematical model with the objective of minimizing the makespan is formulated. Then, a hybrid algorithm which hybridizes genetic algorithm and variable neighborhood search is developed. In the proposed algorithm, a three-dimensional chromosome coding scheme is employed to represent the individuals, a mixed population initialization method is designed for yielding the initial population, and advanced crossover and mutation operators are proposed according to the problem characteristic. Moreover, variable neighborhood search is integrated to improve the local search ability. Finally, to evaluate the effectiveness of the proposed algorithm, computational experiments are performed. The results demonstrate that the proposed algorithm can solve the problem effectively and efficiently.https://doi.org/10.1177/1687814018804096
collection DOAJ
language English
format Article
sources DOAJ
author Rui Wu
Yibing Li
Shunsheng Guo
Wenxiang Xu
spellingShingle Rui Wu
Yibing Li
Shunsheng Guo
Wenxiang Xu
Solving the dual-resource constrained flexible job shop scheduling problem with learning effect by a hybrid genetic algorithm
Advances in Mechanical Engineering
author_facet Rui Wu
Yibing Li
Shunsheng Guo
Wenxiang Xu
author_sort Rui Wu
title Solving the dual-resource constrained flexible job shop scheduling problem with learning effect by a hybrid genetic algorithm
title_short Solving the dual-resource constrained flexible job shop scheduling problem with learning effect by a hybrid genetic algorithm
title_full Solving the dual-resource constrained flexible job shop scheduling problem with learning effect by a hybrid genetic algorithm
title_fullStr Solving the dual-resource constrained flexible job shop scheduling problem with learning effect by a hybrid genetic algorithm
title_full_unstemmed Solving the dual-resource constrained flexible job shop scheduling problem with learning effect by a hybrid genetic algorithm
title_sort solving the dual-resource constrained flexible job shop scheduling problem with learning effect by a hybrid genetic algorithm
publisher SAGE Publishing
series Advances in Mechanical Engineering
issn 1687-8140
publishDate 2018-10-01
description In this article, we investigate a novel dual-resource constrained flexible job shop scheduling problem with consideration of worker’s learning ability and develop an efficient hybrid genetic algorithm to solve the problem. To begin with, a comprehensive mathematical model with the objective of minimizing the makespan is formulated. Then, a hybrid algorithm which hybridizes genetic algorithm and variable neighborhood search is developed. In the proposed algorithm, a three-dimensional chromosome coding scheme is employed to represent the individuals, a mixed population initialization method is designed for yielding the initial population, and advanced crossover and mutation operators are proposed according to the problem characteristic. Moreover, variable neighborhood search is integrated to improve the local search ability. Finally, to evaluate the effectiveness of the proposed algorithm, computational experiments are performed. The results demonstrate that the proposed algorithm can solve the problem effectively and efficiently.
url https://doi.org/10.1177/1687814018804096
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AT shunshengguo solvingthedualresourceconstrainedflexiblejobshopschedulingproblemwithlearningeffectbyahybridgeneticalgorithm
AT wenxiangxu solvingthedualresourceconstrainedflexiblejobshopschedulingproblemwithlearningeffectbyahybridgeneticalgorithm
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