Solving a flow shop scheduling problem with missing operations in an Industry 4.0 production environment

Industry 4.0 is a modern approach that aims at enhancing the connectivity between the different stages of the production process and the requirements of consumers. This paper addresses a relevant problem for both Industry 4.0 and flow shop literature: the missing operations flow shop schedu...

Full description

Bibliographic Details
Main Authors: Rossit, Daniel Alejandro, Toncovich, Adrián, Rossit, Diego Gabriel, Nesmachnow, Sergio
Format: Article
Language:English
Published: Growing Science 2021-01-01
Series:Journal of Project Management
Online Access:http://www.growingscience.com/jpm/Vol6/jpm_2020_15.pdf
id doaj-9fad9dba23dd4a21952f3a70b7b7ae7b
record_format Article
spelling doaj-9fad9dba23dd4a21952f3a70b7b7ae7b2020-11-25T04:03:16ZengGrowing ScienceJournal of Project Management2371-83662371-83742021-01-01334410.5267/j.jpm.2020.10.001Solving a flow shop scheduling problem with missing operations in an Industry 4.0 production environmentRossit, Daniel AlejandroToncovich, AdriánRossit, Diego GabrielNesmachnow, Sergio Industry 4.0 is a modern approach that aims at enhancing the connectivity between the different stages of the production process and the requirements of consumers. This paper addresses a relevant problem for both Industry 4.0 and flow shop literature: the missing operations flow shop scheduling problem. In general, in order to reduce the computational effort required to solve flow shop scheduling problems only permutation schedules (PFS) are considered, i.e., the same job sequence is used for all the machines involved. However, considering only PFS is not a constraint that is based on the real-world conditions of the industrial environments, and it is only a simplification strategy used frequently in the literature. Moreover, non-permutation (NPFS) orderings may be used for most of the real flow shop systems, i.e., different job schedules can be used for different machines in the production line, since NPFS solutions usually outperform the PFS ones. In this work, a novel mathematical formulation to minimize total tardiness and a resolution method, which considers both PFS and (the more computationally expensive) NPFS solutions, are presented to solve the flow shop scheduling problem with missing operations. The solution approach has two stages. First, a Genetic Algorithm, which only considers PFS solutions, is applied to solve the scheduling problem. The resulting solution is then improved in the second stage by means of a Simulated Annealing algorithm that expands the search space by considering NPFS solutions. The experimental tests were performed on a set of instances considering varying proportions of missing operations, as it is usual in the Industry 4.0 production environment. The results show that NPFS solutions clearly outperform PFS solutions for this problem.http://www.growingscience.com/jpm/Vol6/jpm_2020_15.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Rossit, Daniel Alejandro
Toncovich, Adrián
Rossit, Diego Gabriel
Nesmachnow, Sergio
spellingShingle Rossit, Daniel Alejandro
Toncovich, Adrián
Rossit, Diego Gabriel
Nesmachnow, Sergio
Solving a flow shop scheduling problem with missing operations in an Industry 4.0 production environment
Journal of Project Management
author_facet Rossit, Daniel Alejandro
Toncovich, Adrián
Rossit, Diego Gabriel
Nesmachnow, Sergio
author_sort Rossit, Daniel Alejandro
title Solving a flow shop scheduling problem with missing operations in an Industry 4.0 production environment
title_short Solving a flow shop scheduling problem with missing operations in an Industry 4.0 production environment
title_full Solving a flow shop scheduling problem with missing operations in an Industry 4.0 production environment
title_fullStr Solving a flow shop scheduling problem with missing operations in an Industry 4.0 production environment
title_full_unstemmed Solving a flow shop scheduling problem with missing operations in an Industry 4.0 production environment
title_sort solving a flow shop scheduling problem with missing operations in an industry 4.0 production environment
publisher Growing Science
series Journal of Project Management
issn 2371-8366
2371-8374
publishDate 2021-01-01
description Industry 4.0 is a modern approach that aims at enhancing the connectivity between the different stages of the production process and the requirements of consumers. This paper addresses a relevant problem for both Industry 4.0 and flow shop literature: the missing operations flow shop scheduling problem. In general, in order to reduce the computational effort required to solve flow shop scheduling problems only permutation schedules (PFS) are considered, i.e., the same job sequence is used for all the machines involved. However, considering only PFS is not a constraint that is based on the real-world conditions of the industrial environments, and it is only a simplification strategy used frequently in the literature. Moreover, non-permutation (NPFS) orderings may be used for most of the real flow shop systems, i.e., different job schedules can be used for different machines in the production line, since NPFS solutions usually outperform the PFS ones. In this work, a novel mathematical formulation to minimize total tardiness and a resolution method, which considers both PFS and (the more computationally expensive) NPFS solutions, are presented to solve the flow shop scheduling problem with missing operations. The solution approach has two stages. First, a Genetic Algorithm, which only considers PFS solutions, is applied to solve the scheduling problem. The resulting solution is then improved in the second stage by means of a Simulated Annealing algorithm that expands the search space by considering NPFS solutions. The experimental tests were performed on a set of instances considering varying proportions of missing operations, as it is usual in the Industry 4.0 production environment. The results show that NPFS solutions clearly outperform PFS solutions for this problem.
url http://www.growingscience.com/jpm/Vol6/jpm_2020_15.pdf
work_keys_str_mv AT rossitdanielalejandro solvingaflowshopschedulingproblemwithmissingoperationsinanindustry40productionenvironment
AT toncovichadrian solvingaflowshopschedulingproblemwithmissingoperationsinanindustry40productionenvironment
AT rossitdiegogabriel solvingaflowshopschedulingproblemwithmissingoperationsinanindustry40productionenvironment
AT nesmachnowsergio solvingaflowshopschedulingproblemwithmissingoperationsinanindustry40productionenvironment
_version_ 1724440900611866624