Resource planning for just-in-time make-to-order environments: A scalable methodology using tabu search

This paper develops a two-phase tabu search-based methodology for detailed resource planning in make-to-order production systems with multiple resources, unique routings, and varying job due dates. In the first phase rather than attempting to construct a good feasible plan from scratch, we define a...

Full description

Bibliographic Details
Main Authors: Scott A. Moses, Wassama Sangplung
Format: Article
Language:English
Published: Taylor & Francis Group 2017-01-01
Series:Cogent Engineering
Subjects:
mrp
jit
Online Access:http://dx.doi.org/10.1080/23311916.2017.1341289
id doaj-421ba4ca348c4de09625512cd1b09d87
record_format Article
spelling doaj-421ba4ca348c4de09625512cd1b09d872021-03-02T14:23:45ZengTaylor & Francis GroupCogent Engineering2331-19162017-01-014110.1080/23311916.2017.13412891341289Resource planning for just-in-time make-to-order environments: A scalable methodology using tabu searchScott A. Moses0Wassama Sangplung1The University of OklahomaKing Mongkut’s University of Technology ThonburiThis paper develops a two-phase tabu search-based methodology for detailed resource planning in make-to-order production systems with multiple resources, unique routings, and varying job due dates. In the first phase rather than attempting to construct a good feasible plan from scratch, we define a novel approach to resource planning that computes an infeasible but optimal plan, uses it as the initial resource plan, and then makes the necessary modifications to the times of individual tasks to create a feasible finite-capacity plan. In the second phase we search for alternate finite-capacity plans that have decreased earliness, tardiness and lead time. To reduce earliness as well as tardiness, just-in-time philosophical elements are weaved into the construction of the initial solution, the neighborhood structure and the selection criteria. Computational experiments reveal that the tabu search-based methodology is more effective and reliable for resource planning than an exact approach using binary integer linear programming, which struggles to find a good solution in a reasonable amount of time even for trivially small instances. It also outperforms heuristic methods commonly used in practice for resource planning that sort jobs according to priority and load them onto resources one at a time.http://dx.doi.org/10.1080/23311916.2017.1341289resource planningmake-to-ordermrpjittabu search
collection DOAJ
language English
format Article
sources DOAJ
author Scott A. Moses
Wassama Sangplung
spellingShingle Scott A. Moses
Wassama Sangplung
Resource planning for just-in-time make-to-order environments: A scalable methodology using tabu search
Cogent Engineering
resource planning
make-to-order
mrp
jit
tabu search
author_facet Scott A. Moses
Wassama Sangplung
author_sort Scott A. Moses
title Resource planning for just-in-time make-to-order environments: A scalable methodology using tabu search
title_short Resource planning for just-in-time make-to-order environments: A scalable methodology using tabu search
title_full Resource planning for just-in-time make-to-order environments: A scalable methodology using tabu search
title_fullStr Resource planning for just-in-time make-to-order environments: A scalable methodology using tabu search
title_full_unstemmed Resource planning for just-in-time make-to-order environments: A scalable methodology using tabu search
title_sort resource planning for just-in-time make-to-order environments: a scalable methodology using tabu search
publisher Taylor & Francis Group
series Cogent Engineering
issn 2331-1916
publishDate 2017-01-01
description This paper develops a two-phase tabu search-based methodology for detailed resource planning in make-to-order production systems with multiple resources, unique routings, and varying job due dates. In the first phase rather than attempting to construct a good feasible plan from scratch, we define a novel approach to resource planning that computes an infeasible but optimal plan, uses it as the initial resource plan, and then makes the necessary modifications to the times of individual tasks to create a feasible finite-capacity plan. In the second phase we search for alternate finite-capacity plans that have decreased earliness, tardiness and lead time. To reduce earliness as well as tardiness, just-in-time philosophical elements are weaved into the construction of the initial solution, the neighborhood structure and the selection criteria. Computational experiments reveal that the tabu search-based methodology is more effective and reliable for resource planning than an exact approach using binary integer linear programming, which struggles to find a good solution in a reasonable amount of time even for trivially small instances. It also outperforms heuristic methods commonly used in practice for resource planning that sort jobs according to priority and load them onto resources one at a time.
topic resource planning
make-to-order
mrp
jit
tabu search
url http://dx.doi.org/10.1080/23311916.2017.1341289
work_keys_str_mv AT scottamoses resourceplanningforjustintimemaketoorderenvironmentsascalablemethodologyusingtabusearch
AT wassamasangplung resourceplanningforjustintimemaketoorderenvironmentsascalablemethodologyusingtabusearch
_version_ 1724234865513070592