Applying Genetic Algorithm for An integrated Supply and Production/Distribution Planning in assembly systems

Abstract: An efficient supply chain system operates under a strategy to minimize costs by integrating the different functions inside the system and by meeting customer demands in time. In this paper, an integrated supply-production and distribution planning (SPDP) is considered despite the fact that...

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Main Authors: Mohammad Sabet Motlagh, Ali Mohaghar
Format: Article
Language:fas
Published: University of Tehran 2016-07-01
Series:مدیریت صنعتی
Subjects:
Online Access:https://imj.ut.ac.ir/article_60654_d47f51411e4c68b240140a0a643cc563.pdf
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spelling doaj-163fff39e9904ee4ad9ce4bbad95958c2020-11-25T02:52:36ZfasUniversity of Tehranمدیریت صنعتی2008-58852423-53692016-07-018216319010.22059/imj.2016.6065460654Applying Genetic Algorithm for An integrated Supply and Production/Distribution Planning in assembly systemsMohammad Sabet Motlagh0Ali Mohaghar1PhD Candidate, Faculty of Management and Accounting, Allameh Tabatabaee University, Tehran, IranProf. Industrial Management, Tehran University, Tehran, IranAbstract: An efficient supply chain system operates under a strategy to minimize costs by integrating the different functions inside the system and by meeting customer demands in time. In this paper, an integrated supply-production and distribution planning (SPDP) is considered despite the fact that in most of the Papers, Part of the supply chain has been studied, not all parts. Therefore, we develop a mathematical model that calculate the optimal inventory lot sizing for each supplier and minimize the total cost associated in the process of procuring raw material, transferring and holding raw materials, manufacturing and, finally, delivering the finished product. The problem is formulated as a pure integer programming and heuristic genetic algorithm (GA) method applied to solve it. Then we test the proposed model in a case study conducted in Iran. Experimental results show that such a model can reduce the costs of the case study by 8/4694%.https://imj.ut.ac.ir/article_60654_d47f51411e4c68b240140a0a643cc563.pdfGenetic algorithminventory managementMathematical modelingpure integer programmingSupply chain management
collection DOAJ
language fas
format Article
sources DOAJ
author Mohammad Sabet Motlagh
Ali Mohaghar
spellingShingle Mohammad Sabet Motlagh
Ali Mohaghar
Applying Genetic Algorithm for An integrated Supply and Production/Distribution Planning in assembly systems
مدیریت صنعتی
Genetic algorithm
inventory management
Mathematical modeling
pure integer programming
Supply chain management
author_facet Mohammad Sabet Motlagh
Ali Mohaghar
author_sort Mohammad Sabet Motlagh
title Applying Genetic Algorithm for An integrated Supply and Production/Distribution Planning in assembly systems
title_short Applying Genetic Algorithm for An integrated Supply and Production/Distribution Planning in assembly systems
title_full Applying Genetic Algorithm for An integrated Supply and Production/Distribution Planning in assembly systems
title_fullStr Applying Genetic Algorithm for An integrated Supply and Production/Distribution Planning in assembly systems
title_full_unstemmed Applying Genetic Algorithm for An integrated Supply and Production/Distribution Planning in assembly systems
title_sort applying genetic algorithm for an integrated supply and production/distribution planning in assembly systems
publisher University of Tehran
series مدیریت صنعتی
issn 2008-5885
2423-5369
publishDate 2016-07-01
description Abstract: An efficient supply chain system operates under a strategy to minimize costs by integrating the different functions inside the system and by meeting customer demands in time. In this paper, an integrated supply-production and distribution planning (SPDP) is considered despite the fact that in most of the Papers, Part of the supply chain has been studied, not all parts. Therefore, we develop a mathematical model that calculate the optimal inventory lot sizing for each supplier and minimize the total cost associated in the process of procuring raw material, transferring and holding raw materials, manufacturing and, finally, delivering the finished product. The problem is formulated as a pure integer programming and heuristic genetic algorithm (GA) method applied to solve it. Then we test the proposed model in a case study conducted in Iran. Experimental results show that such a model can reduce the costs of the case study by 8/4694%.
topic Genetic algorithm
inventory management
Mathematical modeling
pure integer programming
Supply chain management
url https://imj.ut.ac.ir/article_60654_d47f51411e4c68b240140a0a643cc563.pdf
work_keys_str_mv AT mohammadsabetmotlagh applyinggeneticalgorithmforanintegratedsupplyandproductiondistributionplanninginassemblysystems
AT alimohaghar applyinggeneticalgorithmforanintegratedsupplyandproductiondistributionplanninginassemblysystems
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