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Inventory management under uncertainty : a military application

机译:不确定下的库存管理:军事应用

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摘要

Inventory management under uncertainty is a widely researched field and many different types of inventory models have been used to address inventory problems in practice [1, 10, 11, 26, 50, 35]. However, there is a lack of published studies focusing on inventory planning in environments, such as the military, that are characterised by uncertainty as a result of extreme events. A critical area in military decision support is inventory management. Planning for stock levels in particular can be a daunting task, due to the uncertainty associated with the future. The military is typically an environment where improbable events can have massive impacts on operations; and the availability of the correct amount of stock can enhance the responsiveness, efficiency, and preparedness of the military, and ultimately save human lives. On the other hand, excessive stock - especially ammunition - can result in huge monetary losses through damages, stock degradation, and stock obsolescence. Excessive ammunition also poses a risk to public safety, and can ultimately challenge a country's ability to control the use of force. It is therefore very important to provide proper attention to determining the required stock levels during military inventory management. This dissertation aims, therefore, to develop a reliable decision support tool that can assist with inventory management in the military. To achieve this, a mixed multi-objective mathematical model is used that attempts to minimise cost, shortages, and stock while incorporating demand uncertainty by means of probability distributions and fuzzy numbers. The model considers three different scenarios, and determines the minimum required stock level and the best order quantity for three different stock categories, for a single ammunition item. The model is converted into its crisp, non-fuzzy, and deterministic counterpart first by transforming the fuzzy constraints into their crisp versions and then deriving the deterministic model of the crisp recourse stochastic model. The corresponding crisp, deterministic model is then solved using exact branch-and-bound embedded in the LINGO 10.0 optimisation software package and the reliability of the solutions in different scenarios is tested by means of discrete event simulation. The reliability of the model is then compared with the reliabilities of the well known (r;Q) and (s; S) inventory models in the literature. The comparison indicates that the mixed model proposed in this dissertation is more reliable in extreme scenarios than the (r;Q) and (s; S) inventory models in the literature. A sensitivity analysis is then performed and results indicate that the model yields reliable solutions with a reliability that varies between 74.54% and 100%, depending on the scenario investigated. The lower reliability is during the high demand scenario, this is caused by the ability of the inventory model to prioritise different scenarios based on their estimated possibility to ensure that stock levels are not unneccessary escalated for highly improbable events. It can be concluded that the proposed mixed multi-objective mathematical model that aims to minimise inventory cost, surplus stock, and shortages is a reliable inventory decision support model for the uncertain military environment.
机译:不确定性下的库存管理是一个广泛研究的领域,在实践中已使用许多不同类型的库存模型来解决库存问题[1、10、11、26、50、35]。但是,缺乏针对军事环境等环境中库存计划的已发表研究,这些环境的特征在于极端事件的不确定性。军事决策支持中的一个关键领域是库存管理。由于与未来相关的不确定性,计划库存水平尤其是一项艰巨的任务。军事环境通常是不可能发生的事件可能对行动造成重大影响的环境;正确数量的库存可以增强军队的反应能力,效率和准备水平,并最终挽救生命。另一方面,过多的存货,尤其是弹药,会因损坏,存货退化和过时而导致巨额金钱损失。弹药过多也会对公共安全构成威胁,并最终可能挑战一个国家控制武力的能力。因此,在军事库存管理过程中提供适当的注意力来确定所需的库存水平非常重要。因此,本文旨在开发一种可靠的决策支持工具,该工具可以协助军队进行库存管理。为了实现这一目标,我们使用了一个混合的多目标数学模型,该模型试图通过将成本不确定性和概率分布和模糊数纳入需求不确定性,从而最大程度地降低成本,短缺和库存。该模型考虑了三种不同的情况,并针对单个弹药确定了三种不同库存类别的最低所需库存水平和最佳订购数量。首先,通过将模糊约束转换为清晰的版本,然后推导清晰的资源随机模型的确定性模型,将模型转换为清晰的,非模糊的确定性副本。然后,使用精确的分支定界嵌入LINGO 10.0优化软件包来求解相应的清晰确定性模型,并通过离散事件仿真测试解决方案在不同情况下的可靠性。然后将模型的可靠性与文献中众所周知的(r; Q)和(s; S)库存模型的可靠性进行比较。比较表明,本文提出的混合模型在极端情况下比文献中的(r; Q)和(s; S)库存模型更可靠。然后进行敏感性分析,结果表明该模型产生可靠的解决方案,其可靠性在74.54%到100%之间变化,具体取决于所研究的方案。可靠性较低的情况是在高需求情况下,这是由于库存模型根据估计的可能性对不同情况进行优先级排序的能力导致的,以确保不会因高度不可能的事件而不必要地提升库存水平。可以得出的结论是,所提出的混合多目标数学模型旨在最小化库存成本,剩余库存和短缺,是不确定的军事环境的可靠库存决策支持模型。

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    Bean, Willemiena Lodewika;

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  • 年度 2011
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