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首页> 外文期刊>Annals of Operations Research >New models for the robust shortest path problem: complexity, resolution and generalization
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New models for the robust shortest path problem: complexity, resolution and generalization

机译:鲁棒最短路径问题的新模型:复杂性,分辨率和泛化

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摘要

In optimization, it is common to deal with uncertain and inaccurate factors which make it difficult to assign a single value to each parameter in the model. It may be more suitable to assign a set of values to each uncertain parameter. A scenario is defined as a realization of the uncertain parameters. In this context, a robust solution has to be as good as possible on a majority of scenarios and never be too bad. Such characterization admits numerous possible interpretations and therefore gives rise to various approaches of robustness. These approaches differ from each other depending on models used to represent uncertain factors, on methodology used to measure robustness, and finally on analysis and design of solution methods. In this paper, we focus on the application of a recent criterion for the shortest path problem with uncertain arc lengths. We first present two usual uncertainty models: the interval model and the discrete scenario set model. For each model, we then apply a criterion, called bw-robustness (originally proposed by B. Roy) which defines a new measure of robustness. According to each uncertainty model, we propose a formulation in terms of large scale integer linear program. Furthermore, we analyze the theoretical complexity of the resulting problems. Our computational experiments perform on a set of large scale graphs. By observing the results, we can conclude that the approved solvers, e.g. Cplex, are able to solve the mathematical models proposed which are promising for robustness analysis. In the end, we show that our formulations can be applied to the general linear program in which the objective function includes uncertain coefficients.
机译:在优化中,通常要处理不确定和不准确的因素,这些因素使得很难为模型中的每个参数分配单个值。将一组值分配给每个不确定参数可能更合适。场景定义为不确定参数的实现。在这种情况下,一个健壮的解决方案在大多数情况下都必须尽可能好,并且永远不会太糟。这种表征允许许多可能的解释,因此引起了各种鲁棒性方法。这些方法彼此不同,这取决于用于表示不确定因素的模型,用于测量鲁棒性的方法以及最后取决于解决方案方法的分析和设计。在本文中,我们将重点放在具有不确定弧长的最短路径问题的最新准则的应用上。我们首先介绍两个常见的不确定性模型:区间模型和离散场景集模型。然后,对于每个模型,我们应用一个称为bw-robustness的准则(最初由B. Roy提出),该准则定义了一种新的鲁棒性度量。根据每个不确定性模型,我们根据大规模整数线性程序提出了一种公式。此外,我们分析了由此产生的问题的理论复杂性。我们的计算实验在一组大型图形上执行。通过观察结果,我们可以得出结论:批准的求解器,例如Cplex能够解决所提出的数学模型,这些模型有望用于鲁棒性分析。最后,我们证明了我们的公式可用于目标函数包含不确定系数的一般线性程序。

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