Relocation Scheduling in a Two-Machine Flow Shop with Resource Recycling Operations

This paper considers a variant of the relocation problem, which is formulated from an urban renewal project. There is a set of jobs to be processed in a two-machine flow shop subject to a given initial resource level. Each job consumes some units of the resource to start its processing on machine 1...

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Main Authors: Ting-Chun Lo, Bertrand M. T. Lin
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Mathematics
Subjects:
Online Access:https://www.mdpi.com/2227-7390/9/13/1527
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spelling doaj-94dcf4ef4bef4e07a9e036b50524512c2021-07-15T15:41:35ZengMDPI AGMathematics2227-73902021-06-0191527152710.3390/math9131527Relocation Scheduling in a Two-Machine Flow Shop with Resource Recycling OperationsTing-Chun Lo0Bertrand M. T. Lin1Institute of Information Management, National Yang Ming Chiao Tung University, Hsinchu 300, TaiwanInstitute of Information Management, National Yang Ming Chiao Tung University, Hsinchu 300, TaiwanThis paper considers a variant of the relocation problem, which is formulated from an urban renewal project. There is a set of jobs to be processed in a two-machine flow shop subject to a given initial resource level. Each job consumes some units of the resource to start its processing on machine 1 and will return some amount of the resource when it is completed on machine 2. The amount of resource released by a job is not necessarily equal to the amount of resource acquired by the job for starting the process. Subject to the resource constraint, the problem is to find a feasible schedule whose makespan is minimum. In this paper, we first prove the NP-hardness of two special cases. Two heuristic algorithms with different processing characteristics, permutation and non-permutation, are designed to construct feasible schedules. Ant colony optimization (ACO) algorithms are also proposed to produce approximate solutions. We design and conduct computational experiments to appraise the performances of the proposed algorithms.https://www.mdpi.com/2227-7390/9/13/1527resource-constrained schedulingrelocation problemflow shopresource recyclingheuristic algorithmsant colony optimization
collection DOAJ
language English
format Article
sources DOAJ
author Ting-Chun Lo
Bertrand M. T. Lin
spellingShingle Ting-Chun Lo
Bertrand M. T. Lin
Relocation Scheduling in a Two-Machine Flow Shop with Resource Recycling Operations
Mathematics
resource-constrained scheduling
relocation problem
flow shop
resource recycling
heuristic algorithms
ant colony optimization
author_facet Ting-Chun Lo
Bertrand M. T. Lin
author_sort Ting-Chun Lo
title Relocation Scheduling in a Two-Machine Flow Shop with Resource Recycling Operations
title_short Relocation Scheduling in a Two-Machine Flow Shop with Resource Recycling Operations
title_full Relocation Scheduling in a Two-Machine Flow Shop with Resource Recycling Operations
title_fullStr Relocation Scheduling in a Two-Machine Flow Shop with Resource Recycling Operations
title_full_unstemmed Relocation Scheduling in a Two-Machine Flow Shop with Resource Recycling Operations
title_sort relocation scheduling in a two-machine flow shop with resource recycling operations
publisher MDPI AG
series Mathematics
issn 2227-7390
publishDate 2021-06-01
description This paper considers a variant of the relocation problem, which is formulated from an urban renewal project. There is a set of jobs to be processed in a two-machine flow shop subject to a given initial resource level. Each job consumes some units of the resource to start its processing on machine 1 and will return some amount of the resource when it is completed on machine 2. The amount of resource released by a job is not necessarily equal to the amount of resource acquired by the job for starting the process. Subject to the resource constraint, the problem is to find a feasible schedule whose makespan is minimum. In this paper, we first prove the NP-hardness of two special cases. Two heuristic algorithms with different processing characteristics, permutation and non-permutation, are designed to construct feasible schedules. Ant colony optimization (ACO) algorithms are also proposed to produce approximate solutions. We design and conduct computational experiments to appraise the performances of the proposed algorithms.
topic resource-constrained scheduling
relocation problem
flow shop
resource recycling
heuristic algorithms
ant colony optimization
url https://www.mdpi.com/2227-7390/9/13/1527
work_keys_str_mv AT tingchunlo relocationschedulinginatwomachineflowshopwithresourcerecyclingoperations
AT bertrandmtlin relocationschedulinginatwomachineflowshopwithresourcerecyclingoperations
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