Using fuzzy expectation-based programming for inventory management

W. Widowati, S. Sutrisno, R. H. Tjahjana
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Abstract

Background: Order allocation planning and inventory management are two important problems in manufacturing industries that must be solved optimally to gain maximal profit. Commonly, there are several unknown parameters in those problems such as future price, future demand, etc., and this means decision-making support that can handle this uncertainty is needed to calculate an optimal decision.Objectives: This study aimed to propose a newly developed joint decision-making support to solve order allocation planning and inventory optimisation of raw materials in a production system comprising multiple suppliers, products and review times with fuzzy parameters.Method: The model was formulated as a fuzzy expectation-based quadratic programming with the uncertain parameters approached as fuzzy numbers. This was used to handle the fuzzy parameters involved in the problem. A classical optimisation algorithm, the generalised reduced gradient combined with branch-and-bound embedded in LINGO 18.0 was applied to calculate the optimal decision. Numerical experiments were conducted using some randomly generated data with four suppliers, four raw materials and six review times.Results: Results provided the optimal decision for the given problem, that is, the number of raw materials to be ordered from each supplier at each review time, as well as the corresponding number to be stored in the warehouse.Conclusion: The proposed model successfully solved the given problems and thus can be used by decision-makers to solve their order allocation planning and inventory problems.
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利用基于模糊期望的规划进行库存管理
背景:订单分配计划和库存管理是制造业中两个重要的问题,必须得到最优解决才能获得最大的利润。通常,在这些问题中存在几个未知参数,如未来价格、未来需求等,这意味着需要能够处理这种不确定性的决策支持来计算最优决策。本研究旨在提出一种新开发的联合决策支持,以解决由多个供应商、产品和评审时间组成的模糊参数生产系统中原材料的订单分配计划和库存优化问题。方法:采用基于模糊期望的二次规划模型,将不确定参数逼近为模糊数。该方法用于处理问题中涉及的模糊参数。应用LINGO 18.0中嵌入的广义约简梯度与分支定界相结合的经典优化算法计算最优决策。采用随机生成的数据,选取4家供应商、4种原材料、6次评审,进行数值实验。结果:给出了给定问题的最优决策,即在每个评审时间向每个供应商订购的原材料数量,以及相应的库存数量。结论:所提出的模型成功地解决了给定的问题,可用于决策者解决其订单分配计划和库存问题。
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来源期刊
CiteScore
2.00
自引率
6.70%
发文量
37
审稿时长
20 weeks
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