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Growing Science » Decision Science Letters » Multi-objective optimization for supply chain management problem: A literature review

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Decision Science Letters

ISSN 1929-5812 (Online) - ISSN 1929-5804 (Print)
Quarterly Publication
Volume 5 Issue 2 pp. 283-316 , 2016

Multi-objective optimization for supply chain management problem: A literature review Pages 283-316 Right click to download the paper Download PDF

Authors: Trisna Trisna, Marimin Marimin, Yandra Arkeman, Titi Candra Sunarti

DOI: 10.5267/j.dsl.2015.10.003

Keywords: Metaheuristic algorithm, Multi-objective optimization, Optimization technique, Supply chain

Abstract: Multi-objective optimization is an optimization problem with some conflicting objectives to be attained, simultanously. This paper reviewed literature about multi-objective optimization problems for supply chain management. The review aimed to provide the lastest research views and recomendations for further studies. We discussed the lastest ten years publications about multi-objective optimization for supply chain management. The scope of this review was classified into five categories i.e. problem statements, multi-objective frameworks, mathematical formulation modeling, optimization techniques, and representation of supply chain. Multi-objective optimization approaches, both classical and metaheuristic approaches, were discussed, accordingly. In this review, we conducted conclusion and recomendations about likelihood research directions in future.

How to cite this paper
Trisna, T., Marimin, M., Arkeman, Y & Sunarti, T. (2016). Multi-objective optimization for supply chain management problem: A literature review.Decision Science Letters , 5(2), 283-316.

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Journal: Decision Science Letters | Year: 2016 | Volume: 5 | Issue: 2 | Views: 6894 | Reviews: 0

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