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首页> 外文期刊>International Journal of Production Research >Modelling ramp-up curves to reflect learning: improving capacity planning in secondary pharmaceutical production
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Modelling ramp-up curves to reflect learning: improving capacity planning in secondary pharmaceutical production

机译:模拟上升曲线以反映学习情况:改进二级药物生产中的产能计划

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摘要

The experience gained during production ramp-up leads to an increase of the effective production capacity over time. However, full utilisation of production capacity is not always possible during ramp-up. In such cases, the experience gained and hence the available effective capacity are overestimated. We develop a new method, which captures ramp-up as a function of the cumulative production volume to better reflect the experience gained while producing the new product. The use of the more accurate and computationally effective approach is demonstrated for the case of secondary pharmaceutical production. Due to its regulatory framework, this industry cannot fully exploit available capacities during ramp-up. We develop a capacity planning model for a new pharmaceutical drug, which determines the number and location of new production lines and the build-up of inventory such that product availability at market launch is ensured. Our MILP model is applied to a real industry case study using three empirically observed ramp-up curves to demonstrate its value as decision support tool. We demonstrate the superiority of our volume-dependent method over the traditional time-dependent ramp-up functions and derive managerial insights into the selection of ramp-up function and the value of shortening ramp-ups.
机译:随着生产时间的增加,积累的经验会导致有效生产能力随时间增加。但是,在提升期间并不总是能够充分利用生产能力。在这种情况下,所获得的经验以及可用的有效能力都会被高估。我们开发了一种新方法,该方法将产量的增加与累积生产量的函数联系起来,以更好地反映生产新产品时获得的经验。在二级药物生产的情况下,已证明使用更准确和计算有效的方法。由于其监管框架,该行业无法在升级期间充分利用可用容量。我们开发了一种新药的产能计划模型,该模型确定了新生产线的数量和位置以及库存的积累,从而确保了产品上市时的可用性。我们的MILP模型应用于实际行业案例研究,使用三个经验观察到的上升曲线来证明其作为决策支持工具的价值。我们展示了我们的体积依赖方法优于传统的时间依赖的斜坡上升函数的优势,并获得了有关斜坡上升函数选择和缩短斜坡上升值的管理见解。

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