Parragh Sophie N, Tricoire Fabien, Gutjahr Walter J
Institute of Production and Logistics Management, Johannes Kepler University Linz, Altenberger Straße 69, 4040 Linz, Austria.
Institute for Transport and Logistics Management, Vienna University of Economics and Business, Welthandelsplatz 1, 1020 Vienna, Austria.
OR Spectr. 2022;44(2):419-459. doi: 10.1007/s00291-020-00616-7. Epub 2021 Mar 6.
In many real-world optimization problems, more than one objective plays a role and input parameters are subject to uncertainty. In this paper, motivated by applications in disaster relief and public facility location, we model and solve a bi-objective stochastic facility location problem. The considered objectives are cost and covered demand, where the demand at the different population centers is uncertain but its probability distribution is known. The latter information is used to produce a set of scenarios. In order to solve the underlying optimization problem, we apply a Benders' type decomposition approach which is known as the L-shaped method for stochastic programming and we embed it into a recently developed branch-and-bound framework for bi-objective integer optimization. We analyze and compare different cut generation schemes and we show how they affect lower bound set computations, so as to identify the best performing approach. Finally, we compare the branch-and-Benders-cut approach to a straight-forward branch-and-bound implementation based on the deterministic equivalent formulation.
在许多实际的优化问题中,不止一个目标发挥作用,并且输入参数存在不确定性。在本文中,受救灾和公共设施选址应用的启发,我们对一个双目标随机设施选址问题进行建模并求解。所考虑的目标是成本和覆盖需求,其中不同人口中心的需求是不确定的,但已知其概率分布。后一信息用于生成一组场景。为了解决潜在的优化问题,我们应用一种被称为随机规划的L形方法的Benders型分解方法,并将其嵌入到最近开发的用于双目标整数优化的分支定界框架中。我们分析并比较不同的割生成方案,并展示它们如何影响下界集计算,以便确定性能最佳的方法。最后,我们将分支- Benders割方法与基于确定性等价公式的直接分支定界实现进行比较。