Robust models for manufacturing capacity planning under demand uncertainty

A. Karnik, Chandrashekar S. Tallichetty, Atul Saroop
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引用次数: 2

Abstract

The objective of this work is to develop mathematical models and tools to aid decision makers in devising capacity plans for a manufacturing network in face of uncertainty in future demand. A manufacturing network is constituted by a set of plants serving a set of markets with a set of products. It is specified in terms of a product portfolio for each market and a product portfolio, resource capacities and a set of markets to serve, for each plant. Based on this definition, we address the following question: Given a manufacturing network, determine when to change the manufacturing capacity, where to change it and by how much to change it. Our approach is to devise a plan that is robust with respect to certain perturbations in demand forecasts, rather than one that is optimal with respect to the inherent uncertainty in demand. Thus the idea we follow is to superimpose perturbations on demand forecasts used by decision-makers, and devise a plan that can withstand those variations. Representing manufacturing capacity through the notion of operating configurations, we formulate dynamic optimization models to address the problem.
需求不确定性下制造能力规划的鲁棒模型
这项工作的目标是开发数学模型和工具,以帮助决策者在面对未来需求的不确定性时为制造网络设计产能计划。制造网络是由一组工厂组成的,这些工厂用一组产品服务于一组市场。它根据每个市场的产品组合以及每个工厂的产品组合、资源能力和要服务的一组市场来指定。基于这一定义,我们解决了以下问题:给定一个制造网络,确定何时改变制造能力,在何处改变以及改变多少。我们的方法是设计一个对需求预测中的某些扰动具有鲁棒性的计划,而不是对需求中固有的不确定性具有最优性的计划。因此,我们遵循的想法是,在决策者使用的需求预测上叠加扰动,并设计出能够承受这些变化的计划。通过操作配置的概念来表示制造能力,我们制定了动态优化模型来解决这个问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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