需求不确定经济订货量模型中最优再订货点的封闭解方法

Omid Jadidi , Fatemeh Firouzi , Shahryar Sorooshian
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引用次数: 0

摘要

经济订货量(EOQ)模型中的再订货点公式传统上假定前置期的需求服从正态分布。然而,这一假设提出了几个挑战。首先,替代概率分布可能更好地捕捉特定产品和市场的需求模式。其次,历史数据可能并不总是可用来预测这些分布;在这种情况下,模糊集理论可以用来估计需求基于专家的意见和判断。第三,传统的再订货点公式忽略了重要因素,如单位批发价格和单位短缺成本。例如,当单位短缺或商誉成本很高时,增加再订货点可以帮助最大限度地减少缺货的风险。为了解决这些问题,我们将交货期的库存问题重新表述为报贩问题,并推导出最优再订货点的封闭解。在这个模型中,交货期的需求是用模糊数(捕捉可能性)和概率分布来表示的,允许我们将单位批发价格、短缺或商誉成本等因素纳入其中。此外,我们通过数值分析提供管理见解,帮助指导重新订购点调整的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A closed-form solution approach for optimal reorder point in economic order quantity models with uncertain demands
The reorder point formula in the Economic Order Quantity (EOQ) model traditionally assumes that demand during the lead-time follows a normal distribution. However, this assumption presents several challenges. First, alternative probability distributions may better capture demand patterns for specific products and markets. Second, historical data may not always be available to predict these distributions; in such cases, fuzzy set theory can be used to estimate demand based on expert opinions and judgments. Third, the conventional reorder point formula overlooks important factors, such as unit wholesale price and unit shortage costs. For instance, when unit shortage or goodwill costs are high, increasing the reorder point can help minimize the risk of stockouts. To address these issues, we reformulate the inventory problem during the lead-time as a newsvendor problem and derive closed-form solutions for the optimal reorder point. In this model, demand during the lead-time is represented using both fuzzy numbers (to capture possibility) and probability distributions, allowing us to incorporate factors like unit wholesale price and shortage or goodwill costs. Additionally, we provide managerial insights through numerical analysis, helping to guide decisions on reorder point adjustments.
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