Mathematical model for dynamic cell formation in fast fashion apparel manufacturing stage
محورهای موضوعی : Mathematical OptimizationGayathri Perera 1 , Vijitha Ratnayake 2
1 - Department of Textile and Clothing Technology, University of Moratuwa, Moratuwa, Sri Lanka
2 - Department of Textile and Clothing Technology, University of Moratuwa, Moratuwa, Sri Lanka
کلید واژه: Dynamic cell . Labor, intensive . Apparel . Product layout . Changeover . Cost saving,
چکیده مقاله :
This paper presents a mathematical programming model for dynamic cell formation to minimize changeover-related costs (i.e., machine relocation costs and machine setup cost) and inter-cell material handling cost to cope with the volatile production environments in apparel manufacturing industry. The model is formulated through findings of a comprehensive literature review. Developed model is validated based on data collected from three different factories in apparel industry, manufacturing fast fashion products. A program code is developed using Lingo 16.0 software package to generate optimal cells for developed model and to determine the possible cost-saving percentage when the existing layouts used in three factories are replaced by generated optimal cells. The optimal cells generated by developed mathematical model result in significant cost saving when compared with existing product layouts used in production/assembly department of selected factories in apparel industry. The developed model can be considered as effective in minimizing the considered cost terms in dynamic production environment of fast fashion apparel manufacturing industry. Findings of this paper can be used for further researches on minimizing the changeover-related costs in fast fashion apparel production stage.
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