A MILP model to optimize the proportion of production quantities considering the ANP composite performance index

N. T. H. Thalagahage, A. Wijayanayake, D. Niwunhella
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Abstract

The apparel industry is considered as one of the most labor-intensive industries where Production Planning and Control (PPC) is considered as an important function, because of its involvement from scheduling each task in the process to the delivery of customer demand. Line planning is a sub-process within PPC, through which the production orders are allocated to production lines according to their setting and due dates of production completion. The decisions that address line planning functions still heavily rely on the expertise of the production planner. When production planners are required to select production lines for the production of a particular type of product, little emphasis has been placed on ways to apportion certain production orders to the most appropriate production system. In this research, a framework is developed using Analytical Network Process (ANP) which is a Multi-Criteria Decision Making (MCDM) method, enabling the incorporation of all the planning criteria in the selection of a production line. The weighted scores obtained by the best alternative production lines are used in a Linear Programming model to optimize the resource allocation in an apparel firm.
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考虑ANP综合性能指标的生产数量比例优化的MILP模型
服装行业被认为是最劳动密集型的行业之一,生产计划和控制(PPC)被认为是一个重要的功能,因为它涉及到从调度过程中的每个任务到交付客户需求。生产线计划是PPC中的一个子过程,根据生产线的设置和生产完成的截止日期,将生产订单分配到生产线上。解决生产线计划功能的决策仍然严重依赖于生产计划人员的专业知识。当生产计划人员被要求为生产一种特定类型的产品选择生产线时,很少强调如何将某些生产订单分配给最合适的生产系统。在本研究中,使用分析网络过程(ANP)开发了一个框架,这是一种多标准决策(MCDM)方法,可以将所有规划标准纳入生产线的选择中。利用最佳备选生产线的加权得分,建立线性规划模型,对服装企业的资源配置进行优化。
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