An enhanced reliability-oriented workforce planning model for process industry using combined fuzzy goal programming and differential evolution approach

Abstract This paper draws on the “human reliability” concept as a structure for gaining insight into the maintenance workforce assessment in a process industry. Human reliability hinges on developing the reliability of humans to a threshold that guides the maintenance workforce to execute accurate d...

Full description

Bibliographic Details
Main Authors: D. E. Ighravwe, S. A. Oke, K. A. Adebiyi
Format: Article
Language:English
Published: Islamic Azad University 2017-08-01
Series:Journal of Industrial Engineering International
Subjects:
Online Access:http://link.springer.com/article/10.1007/s40092-017-0223-9
id doaj-39135e316b9e444ebed15630bd3e972b
record_format Article
spelling doaj-39135e316b9e444ebed15630bd3e972b2021-02-02T00:28:24ZengIslamic Azad UniversityJournal of Industrial Engineering International1735-57022251-712X2017-08-0114118521210.1007/s40092-017-0223-9An enhanced reliability-oriented workforce planning model for process industry using combined fuzzy goal programming and differential evolution approachD. E. Ighravwe0S. A. Oke1K. A. Adebiyi2Department of Mechanical Engineering, Faculty of Engineering, University of LagosDepartment of Mechanical Engineering, Faculty of Engineering, University of LagosDepartment of Mechanical Engineering, Faculty of Engineering and Technology, Ladoke Akintola University of TechnologyAbstract This paper draws on the “human reliability” concept as a structure for gaining insight into the maintenance workforce assessment in a process industry. Human reliability hinges on developing the reliability of humans to a threshold that guides the maintenance workforce to execute accurate decisions within the limits of resources and time allocations. This concept offers a worthwhile point of deviation to encompass three elegant adjustments to literature model in terms of maintenance time, workforce performance and return-on-workforce investments. These fully explain the results of our influence. The presented structure breaks new grounds in maintenance workforce theory and practice from a number of perspectives. First, we have successfully implemented fuzzy goal programming (FGP) and differential evolution (DE) techniques for the solution of optimisation problem in maintenance of a process plant for the first time. The results obtained in this work showed better quality of solution from the DE algorithm compared with those of genetic algorithm and particle swarm optimisation algorithm, thus expressing superiority of the proposed procedure over them. Second, the analytical discourse, which was framed on stochastic theory, focusing on specific application to a process plant in Nigeria is a novelty. The work provides more insights into maintenance workforce planning during overhaul rework and overtime maintenance activities in manufacturing systems and demonstrated capacity in generating substantially helpful information for practice.http://link.springer.com/article/10.1007/s40092-017-0223-9Returns-on-workforce investmentFuzzy goal programmingMeta-heuristicsMaintenance workforce planningManufacturing system
collection DOAJ
language English
format Article
sources DOAJ
author D. E. Ighravwe
S. A. Oke
K. A. Adebiyi
spellingShingle D. E. Ighravwe
S. A. Oke
K. A. Adebiyi
An enhanced reliability-oriented workforce planning model for process industry using combined fuzzy goal programming and differential evolution approach
Journal of Industrial Engineering International
Returns-on-workforce investment
Fuzzy goal programming
Meta-heuristics
Maintenance workforce planning
Manufacturing system
author_facet D. E. Ighravwe
S. A. Oke
K. A. Adebiyi
author_sort D. E. Ighravwe
title An enhanced reliability-oriented workforce planning model for process industry using combined fuzzy goal programming and differential evolution approach
title_short An enhanced reliability-oriented workforce planning model for process industry using combined fuzzy goal programming and differential evolution approach
title_full An enhanced reliability-oriented workforce planning model for process industry using combined fuzzy goal programming and differential evolution approach
title_fullStr An enhanced reliability-oriented workforce planning model for process industry using combined fuzzy goal programming and differential evolution approach
title_full_unstemmed An enhanced reliability-oriented workforce planning model for process industry using combined fuzzy goal programming and differential evolution approach
title_sort enhanced reliability-oriented workforce planning model for process industry using combined fuzzy goal programming and differential evolution approach
publisher Islamic Azad University
series Journal of Industrial Engineering International
issn 1735-5702
2251-712X
publishDate 2017-08-01
description Abstract This paper draws on the “human reliability” concept as a structure for gaining insight into the maintenance workforce assessment in a process industry. Human reliability hinges on developing the reliability of humans to a threshold that guides the maintenance workforce to execute accurate decisions within the limits of resources and time allocations. This concept offers a worthwhile point of deviation to encompass three elegant adjustments to literature model in terms of maintenance time, workforce performance and return-on-workforce investments. These fully explain the results of our influence. The presented structure breaks new grounds in maintenance workforce theory and practice from a number of perspectives. First, we have successfully implemented fuzzy goal programming (FGP) and differential evolution (DE) techniques for the solution of optimisation problem in maintenance of a process plant for the first time. The results obtained in this work showed better quality of solution from the DE algorithm compared with those of genetic algorithm and particle swarm optimisation algorithm, thus expressing superiority of the proposed procedure over them. Second, the analytical discourse, which was framed on stochastic theory, focusing on specific application to a process plant in Nigeria is a novelty. The work provides more insights into maintenance workforce planning during overhaul rework and overtime maintenance activities in manufacturing systems and demonstrated capacity in generating substantially helpful information for practice.
topic Returns-on-workforce investment
Fuzzy goal programming
Meta-heuristics
Maintenance workforce planning
Manufacturing system
url http://link.springer.com/article/10.1007/s40092-017-0223-9
work_keys_str_mv AT deighravwe anenhancedreliabilityorientedworkforceplanningmodelforprocessindustryusingcombinedfuzzygoalprogramminganddifferentialevolutionapproach
AT saoke anenhancedreliabilityorientedworkforceplanningmodelforprocessindustryusingcombinedfuzzygoalprogramminganddifferentialevolutionapproach
AT kaadebiyi anenhancedreliabilityorientedworkforceplanningmodelforprocessindustryusingcombinedfuzzygoalprogramminganddifferentialevolutionapproach
AT deighravwe enhancedreliabilityorientedworkforceplanningmodelforprocessindustryusingcombinedfuzzygoalprogramminganddifferentialevolutionapproach
AT saoke enhancedreliabilityorientedworkforceplanningmodelforprocessindustryusingcombinedfuzzygoalprogramminganddifferentialevolutionapproach
AT kaadebiyi enhancedreliabilityorientedworkforceplanningmodelforprocessindustryusingcombinedfuzzygoalprogramminganddifferentialevolutionapproach
_version_ 1724313702278103040