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A scenario-based framework for supply planning under uncertainty: stochastic programming versus robust optimization approaches

机译:不确定条件下基于情景的供应计划框架:随机规划与稳健的优化方法

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摘要

In this paper we analyze the effect of two modelling approaches for supply planning problems under uncertainty: two-stage stochastic programming (SP) and robust optimization (RO). The comparison between the two approaches is performed through a scenario-based framework methodology, which can be applied to any optimization problem affected by uncertainty. For SP we compute the minimum expected cost based on the specific probability distribution of the uncertain parameters related to a set of scenarios. For RO we consider static approaches where random parameters belong to box or ellipsoidal uncertainty sets in compliance with the data used to generate SP scenarios. Dynamic approaches for RO, via the concept of adjustable robust counterpart, are also considered. The efficiency of the methodology has been illustrated for a supply planning problem to optimize vehicle-renting and procurement transportation activities involving uncertainty on demands and on buying costs for extra-vehicles. Numerical experiments through the scenario-based framework allow a fair comparison in real case instances. Advantages and disadvantages of RO and SP are discussed.
机译:在本文中,我们分析了两种建模方法对不确定性下的供应计划问题的影响:两阶段随机规划(SP)和鲁棒优化(RO)。两种方法之间的比较是通过基于场景的框架方法进行的,该方法可以应用于受不确定性影响的任何优化问题。对于SP,我们根据与一组场景相关的不确定参数的特定概率分布来计算最小预期成本。对于RO,我们考虑静态方法,其中随机参数属于盒形或椭圆形不确定性集,与用于生成SP场景的数据保持一致。还考虑了通过可调整的鲁棒对等概念来实现RO的动态方法。已经说明了该方法对于解决供应计划问题以优化车辆租赁和采购运输活动所涉及的不确定性,而这些活动涉及需求和购车成本的不确定性。通过基于场景的框架进行的数字实验允许在真实案例中进行公平的比较。讨论了RO和SP的优缺点。

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