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Evaluating inventory segmentation strategies for aftermarket service parts in heavy industry using linked discrete-event and Monte Carlo simulations

机译:使用链接离散事件和蒙特卡罗模拟评估重工业售后服务部件的库存细分策略

摘要

Heavy industries operate equipment having a long life to generate revenue or perform a mission. These industries must invest in the specialized service parts needed to maintain their equipment, because unlike in other industries such as automotive, there is often no aftermarket supplier. If parts are not on the shelf when needed, equipment sits idle while replacements are manufactured. Stock levels are often set to achieve an off-the-shelf fill rate goal using commercial inventory optimization tools, while supply chain performance is instead measured against a speed of service metric such as order fulfillment lead time, the time from order placement to customer receipt. When some parts are more important than others, and shipping delays are accounted for, there is ostensibly little correlation between these two metrics and setting stock levels devolves into an inefficient and expensive guessing game. This thesis resolves the disconnect between stock levels and service metrics performance by linking an existing discrete-event simulation of warehouse operations to a new Monte Carlo demand categorization and metrics simulation, predicting tomorrow's supply chain performance from today's logistics data. The insights gained here through evaluating an industry representative dataset apply generally to supply chains for aftermarket service parts. The simulation predicts that the stocking policy recommended by a simple strategy for inventory segmentation for consumable parts will not achieve the desired service metrics. An internal review board that meets monthly, and a quarterly customer acquisition policy, each degrade performance by imposing a periodic review policy on stock levels developed assuming a continuous review policy. This thesis compares the simple strategy to a sophisticated strategy for inventory segmentation, using simulation to demonstrate that with the latter, metrics can be achieved in one year, inventory investment lowered 20%, and buys for parts in low annual usage categories automated.
机译:重工业使用寿命长的设备来产生收入或执行任务。这些行业必须投资于维护其设备所需的专用服务部件,因为与其他行业(例如汽车)不同,通常没有售后市场供应商。如果零件在需要时不在架子上,则设备在制造替换件时处于闲置状态。通常使用商业库存优化工具将库存水平设置为达到现成的填充率目标,而根据服务速度指标(例如订单履行提前期,从下订单到收到客户的时间)来衡量供应链绩效。当某些零件比其他零件更重要并且考虑到运输延误时,这两个指标之间表面上几乎没有相关性,并且设定库存水平会导致效率低下且昂贵的猜测游戏。本文通过将现有的仓库操作离散事件模拟与新的蒙特卡洛需求分类和度量模拟相链接,解决了库存水平与服务度量标准绩效之间的脱节,并根据当今的物流数据预测了未来的供应链绩效。通过评估行业代表性数据集获得的见解通常适用于售后维修零件的供应链。该模拟预测,简单的策略(针对易损件的库存细分)推荐的库存策略将无法实现所需的服务指标。一个内部审查委员会,每月一次,一个季度一次,满足客户获取政策,每一个都会通过在假设连续审查策略的情况下对制定的库存水平施加定期审查策略来降低性能。本文将简单策略与复杂的库存细分策略进行了比较,并通过仿真证明了后者,可以在一年内实现指标,库存投资降低20%,并自动购买低年使用率类别的零件。

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