Multiple and usually conflicting objectives subject to data uncertainty are main features in many real-world problems. Consequently, in practice, decision-makers need to understand the trade-off between the objectives, considering different levels of uncertainty in order to choose a suitable solution. In this paper, we consider a two-stage bi-objective single source capacitated model as a base formulation for designing a last-mile network in disaster relief where one of the objectives is subject to demand uncertainty. We analyze scenario-based two-stage risk-neutral stochastic programming, adaptive (two-stage) robust optimization, and a two-stage risk-averse stochastic approach using conditional value-at-risk (CVaR). To cope with the bi-objective nature of the problem, we embed these concepts into two criterion space search frameworks, the $\epsilon$-constraint method and the balanced box method, to determine the Pareto frontier. Additionally, a matheuristic technique is developed to obtain high-quality approximations of the Pareto frontier for large-size instances. In an extensive computational experiment, we evaluate and compare the performance of the applied approaches based on real-world data from a Thies drought case, Senegal.
翻译:受数据不确定性影响的多重和通常相互冲突的目标是许多现实世界问题的主要特征,因此,在实践中,决策者需要理解目标之间的权衡,考虑到不同程度的不确定性,以便选择适当的解决办法。在本文件中,我们认为,两阶段的双重目标单一源的功能化模型是设计救灾最后一英里网络的基础配方,因为其中一个目标受到需求不确定性的影响。我们分析基于情景的两阶段风险中性随机程序、适应性(两阶段)强力优化和两阶段风险反偏差方法,使用有条件的高风险价值(CVaR)。为了应对问题的双重目标性质,我们将这些概念纳入两个标准的空间搜索框架,即美元-约束法和平衡箱法,以确定Pareto边界。此外,我们开发了数学经济学技术,以获得大型案例的Pareto前沿高质量近似比。在广泛的计算实验中,我们评估并比较了基于实际世界数据、塞内加尔的干旱应用方法的绩效。