A two-stage stochastic rule-based model to determine pre-assembly buffer content

Abstract This study considers instant decision-making needs of the automobile manufactures for resequencing vehicles before final assembly (FA). We propose a rule-based two-stage stochastic model to determine the number of spare vehicles that should be kept in the pre-assembly buffer to restore the...

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Main Authors: Elif Elcin Gunay, Ufuk Kula
Format: Article
Language:English
Published: Islamic Azad University 2018-01-01
Series:Journal of Industrial Engineering International
Subjects:
Online Access:http://link.springer.com/article/10.1007/s40092-017-0252-4
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spelling doaj-0a1a89ea4f0b44a1b07efd7081fc9ae02021-02-02T00:48:28ZengIslamic Azad UniversityJournal of Industrial Engineering International1735-57022251-712X2018-01-0114465566310.1007/s40092-017-0252-4A two-stage stochastic rule-based model to determine pre-assembly buffer contentElif Elcin Gunay0Ufuk Kula1Industrial Engineering Department, Sakarya UniversityIndustrial Engineering Department, American University of the Middle EastAbstract This study considers instant decision-making needs of the automobile manufactures for resequencing vehicles before final assembly (FA). We propose a rule-based two-stage stochastic model to determine the number of spare vehicles that should be kept in the pre-assembly buffer to restore the altered sequence due to paint defects and upstream department constraints. First stage of the model decides the spare vehicle quantities, where the second stage model recovers the scrambled sequence respect to pre-defined rules. The problem is solved by sample average approximation (SAA) algorithm. We conduct a numerical study to compare the solutions of heuristic model with optimal ones and provide following insights: (i) as the mismatch between paint entrance and scheduled sequence decreases, the rule-based heuristic model recovers the scrambled sequence as good as the optimal resequencing model, (ii) the rule-based model is more sensitive to the mismatch between the paint entrance and scheduled sequences for recovering the scrambled sequence, (iii) as the defect rate increases, the difference in recovery effectiveness between rule-based heuristic and optimal solutions increases, (iv) as buffer capacity increases, the recovery effectiveness of the optimization model outperforms heuristic model, (v) as expected the rule-based model holds more inventory than the optimization model.http://link.springer.com/article/10.1007/s40092-017-0252-4Mixed-model assembly linesCar resequencingHeuristicsStochastic programming
collection DOAJ
language English
format Article
sources DOAJ
author Elif Elcin Gunay
Ufuk Kula
spellingShingle Elif Elcin Gunay
Ufuk Kula
A two-stage stochastic rule-based model to determine pre-assembly buffer content
Journal of Industrial Engineering International
Mixed-model assembly lines
Car resequencing
Heuristics
Stochastic programming
author_facet Elif Elcin Gunay
Ufuk Kula
author_sort Elif Elcin Gunay
title A two-stage stochastic rule-based model to determine pre-assembly buffer content
title_short A two-stage stochastic rule-based model to determine pre-assembly buffer content
title_full A two-stage stochastic rule-based model to determine pre-assembly buffer content
title_fullStr A two-stage stochastic rule-based model to determine pre-assembly buffer content
title_full_unstemmed A two-stage stochastic rule-based model to determine pre-assembly buffer content
title_sort two-stage stochastic rule-based model to determine pre-assembly buffer content
publisher Islamic Azad University
series Journal of Industrial Engineering International
issn 1735-5702
2251-712X
publishDate 2018-01-01
description Abstract This study considers instant decision-making needs of the automobile manufactures for resequencing vehicles before final assembly (FA). We propose a rule-based two-stage stochastic model to determine the number of spare vehicles that should be kept in the pre-assembly buffer to restore the altered sequence due to paint defects and upstream department constraints. First stage of the model decides the spare vehicle quantities, where the second stage model recovers the scrambled sequence respect to pre-defined rules. The problem is solved by sample average approximation (SAA) algorithm. We conduct a numerical study to compare the solutions of heuristic model with optimal ones and provide following insights: (i) as the mismatch between paint entrance and scheduled sequence decreases, the rule-based heuristic model recovers the scrambled sequence as good as the optimal resequencing model, (ii) the rule-based model is more sensitive to the mismatch between the paint entrance and scheduled sequences for recovering the scrambled sequence, (iii) as the defect rate increases, the difference in recovery effectiveness between rule-based heuristic and optimal solutions increases, (iv) as buffer capacity increases, the recovery effectiveness of the optimization model outperforms heuristic model, (v) as expected the rule-based model holds more inventory than the optimization model.
topic Mixed-model assembly lines
Car resequencing
Heuristics
Stochastic programming
url http://link.springer.com/article/10.1007/s40092-017-0252-4
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