不确定条件下轨道交通网络中断容忍度优化

Lei Xu, T. S. Ng, A. Costa
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引用次数: 2

摘要

本文建立了一种分布式鲁棒优化模型,用于在不确定停机情况下轨道交通战术规划策略的设计和中断容忍度的增强。首先,提出了一种新的评价轨道交通中断容忍度的性能函数。具体来说,在给定阈值通勤流量的随机中断事件的概率分布中,性能函数最大化轨道交通网络可以容忍的最坏情况预期停机时间。然后将该容差函数应用于给定预算约束的平台停机保护和总线桥接服务规划设计的优化问题。特别是,我们对平台停机保护策略的实施放松了网络强化和拦截文献中对强大保护的标准假设。所得到的优化问题可以看作是两阶段分布鲁棒优化模型的一个特殊变体。为了使模型具有可计算性,确定了模型的最优性条件。这使我们能够得到一个线性混合整数重公式,它可以被像CPLEX这样的求解器有效地求解。最后,我们以新加坡快速轨道交通网络的核心部分为例,展示了一些有见地的结果。
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Optimizing Disruption Tolerance for Rail Transit Networks Under Uncertainty
In this paper, we develop a distributionally robust optimization model for the design of rail transit tactical planning strategies and disruption tolerance enhancement under downtime uncertainty. First, a novel performance function evaluating the rail transit disruption tolerance is proposed. Specifically, the performance function maximizes the worst-case expected downtime that can be tolerated by rail transit networks over a family of probability distributions of random disruption events given a threshold commuter outflow. This tolerance function is then applied to an optimization problem for the planning design of platform downtime protection and bus-bridging services given budget constraints. In particular, our implementation of platform downtime protection strategy relaxes standard assumptions of robust protection made in network fortification and interdiction literature. The resulting optimization problem can be regarded as a special variation of a two-stage distributionally robust optimization model. In order to achieve computational tractability, optimality conditions of the model are identified. This allows us to obtain a linear mixed-integer reformulation that can be solved efficiently by solvers like CPLEX. Finally, we show some insightful results based on the core part of Singapore Mass Rapid Transit Network.
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