Dynamic small-series fashion order allocation ...
Type de document :
Article dans une revue scientifique: Article original
DOI :
URL permanente :
Titre :
Dynamic small-series fashion order allocation and supplier selection: a ga-topsis-based model
Auteur(s) :
Harale, Nitin [Auteur]
Génie des Matériaux Textiles - ULR 2461 [GEMTEX]
Thomassey, Sebastien [Auteur]
1144862|||Génie des Matériaux Textiles - ULR 2461 [GEMTEX] (VALID)
Zeng, Xianyi [Auteur]
Génie des Matériaux Textiles - ULR 2461 [GEMTEX]
Génie des Matériaux Textiles - ULR 2461 [GEMTEX]
Thomassey, Sebastien [Auteur]

1144862|||Génie des Matériaux Textiles - ULR 2461 [GEMTEX] (VALID)
Zeng, Xianyi [Auteur]
Génie des Matériaux Textiles - ULR 2461 [GEMTEX]
Titre de la revue :
International Journal of Industrial Optimization
Nom court de la revue :
Int. J. Ind. Optim.
Numéro :
4
Pagination :
82-102
Éditeur :
Universitas Ahmad Dahlan
Date de publication :
2023-09-11
ISSN :
2714-6006
Mot(s)-clé(s) en anglais :
Multi criteria decision making
Genetic Algorithm
TOPSIS
Supplier Selection
pareto front
Genetic Algorithm
TOPSIS
Supplier Selection
pareto front
Discipline(s) HAL :
Sciences de l'ingénieur [physics]
Résumé en anglais : [en]
The fashion industry is currently confronted with significant economic and environmental challenges, necessitating the exploration of novel business models. Among the promising approaches is small series production on ...
Lire la suite >The fashion industry is currently confronted with significant economic and environmental challenges, necessitating the exploration of novel business models. Among the promising approaches is small series production on demand, though this poses considerable complexities in the highly competitive sector. Traditional supplier selection and production planning processes, known for their lengthy and intricate nature, must be replaced with more dynamic and effective decision-making procedures. To tackle this problem, GA-TOPSIS hybrid model is proposed as the methodology. The model integrates Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) evaluation into the fitness function of Genetic Algorithm (GA) to comprehensively consider both qualitative and quantitative criteria for supplier selection. Simultaneously, GA efficiently optimizes the order sequence for production planning. The model's efficacy is demonstrated through implementation on real orders, showcasing its ability to handle diverse evaluation criteria and support supplier selection in different scenarios. Moreover, the proposed model is employed to compute the Pareto front, which provides optimal sets of solutions for the given objective criteria. This allows for an effective demand-driven strategy, particularly relevant for fashion retailers to select supplier and order planning optimization decisions in dynamic and multi-criteria context. Overall, GA-TOPSIS hybrid model offers an innovative and efficient decision support system for fashion retailers to adapt to changing demands and achieve effective supplier selection and production planning optimization. The model's incorporation of both qualitative and quantitative criteria in a dynamic environment contributes to its originality and potential for addressing the complexities of the fashion industry's supply chain challengesLire moins >
Lire la suite >The fashion industry is currently confronted with significant economic and environmental challenges, necessitating the exploration of novel business models. Among the promising approaches is small series production on demand, though this poses considerable complexities in the highly competitive sector. Traditional supplier selection and production planning processes, known for their lengthy and intricate nature, must be replaced with more dynamic and effective decision-making procedures. To tackle this problem, GA-TOPSIS hybrid model is proposed as the methodology. The model integrates Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) evaluation into the fitness function of Genetic Algorithm (GA) to comprehensively consider both qualitative and quantitative criteria for supplier selection. Simultaneously, GA efficiently optimizes the order sequence for production planning. The model's efficacy is demonstrated through implementation on real orders, showcasing its ability to handle diverse evaluation criteria and support supplier selection in different scenarios. Moreover, the proposed model is employed to compute the Pareto front, which provides optimal sets of solutions for the given objective criteria. This allows for an effective demand-driven strategy, particularly relevant for fashion retailers to select supplier and order planning optimization decisions in dynamic and multi-criteria context. Overall, GA-TOPSIS hybrid model offers an innovative and efficient decision support system for fashion retailers to adapt to changing demands and achieve effective supplier selection and production planning optimization. The model's incorporation of both qualitative and quantitative criteria in a dynamic environment contributes to its originality and potential for addressing the complexities of the fashion industry's supply chain challengesLire moins >
Langue :
Anglais
Comité de lecture :
Oui
Audience :
Internationale
Vulgarisation :
Non
Établissement(s) :
Université de Lille
ENSAIT
Junia HEI
ENSAIT
Junia HEI
Collections :
Équipe(s) de recherche :
Human-Centered Design
Date de dépôt :
2025-02-17T10:27:37Z
2025-02-17T13:35:22Z
2025-02-17T13:35:22Z
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