Five crisp and fuzzy models for supply chain of an automotive manufacturing system
Five crisp and fuzzy models for supply chain of an automotive manufacturing system
Supply Chain Management (SCM) is a new approach to production planning. It integrates the components of supply chain in a holistic manner. Modeling this large-scale system, which contains all effective enterprises in production such as raw material suppliers, part manufacturers, assembly plants, distribution organizations, and the like, is challenging for managers, engineers and researchers. This paper concentrates on supply chain system modeling with fuzzy linear programming, and fuzzy expert system for an automobile plant. First, a linear programming model is developed in such a way that while the input data is fuzzy, the constraints are crisp. In the second linear model, the coefficients of the model are crisp while the constraints are fuzzy. In the third model, we aggregate the first and the second models into one fuzzy linear programming where all constraints and coefficients are fuzzy. In each case, we compare the results with those of classical SC models. Finally, a rule based fuzzy expert system for SC is developed and the results are compared with those of the classical and fuzzy LP models. The results of the fuzzy expert system show its superiority over the former crisp and fuzzy linear programming models.
Expert systems, Fuzzy linear programming, Fuzzy theory, Supply chain management (scm)
178-196
Fazel Zarandi, Mohammad H.
4c7a5aeb-95ee-42fc-bd02-e91c8f501c47
Fazel Zarani, Mohammad M.
bf7af453-9bc0-43f7-b639-b8bb67914e7f
Saghiri, S.
6bfd600c-bdd1-4dde-9f33-d3f138e85e9d
2007
Fazel Zarandi, Mohammad H.
4c7a5aeb-95ee-42fc-bd02-e91c8f501c47
Fazel Zarani, Mohammad M.
bf7af453-9bc0-43f7-b639-b8bb67914e7f
Saghiri, S.
6bfd600c-bdd1-4dde-9f33-d3f138e85e9d
Fazel Zarandi, Mohammad H., Fazel Zarani, Mohammad M. and Saghiri, S.
(2007)
Five crisp and fuzzy models for supply chain of an automotive manufacturing system.
International Journal of Management Science and Engineering Management, 2 (3), .
(doi:10.1080/17509653.2007.10671020).
Abstract
Supply Chain Management (SCM) is a new approach to production planning. It integrates the components of supply chain in a holistic manner. Modeling this large-scale system, which contains all effective enterprises in production such as raw material suppliers, part manufacturers, assembly plants, distribution organizations, and the like, is challenging for managers, engineers and researchers. This paper concentrates on supply chain system modeling with fuzzy linear programming, and fuzzy expert system for an automobile plant. First, a linear programming model is developed in such a way that while the input data is fuzzy, the constraints are crisp. In the second linear model, the coefficients of the model are crisp while the constraints are fuzzy. In the third model, we aggregate the first and the second models into one fuzzy linear programming where all constraints and coefficients are fuzzy. In each case, we compare the results with those of classical SC models. Finally, a rule based fuzzy expert system for SC is developed and the results are compared with those of the classical and fuzzy LP models. The results of the fuzzy expert system show its superiority over the former crisp and fuzzy linear programming models.
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Accepted/In Press date: 21 July 2007
Published date: 2007
Keywords:
Expert systems, Fuzzy linear programming, Fuzzy theory, Supply chain management (scm)
Identifiers
Local EPrints ID: 472770
URI: http://eprints.soton.ac.uk/id/eprint/472770
ISSN: 1750-9653
PURE UUID: b49844ac-747a-41aa-8366-d30869ef8bd1
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Date deposited: 19 Dec 2022 17:30
Last modified: 17 Mar 2024 04:17
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Contributors
Author:
Mohammad H. Fazel Zarandi
Author:
Mohammad M. Fazel Zarani
Author:
S. Saghiri
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