Article ID Journal Published Year Pages File Type
1131609 Transportation Research Part B: Methodological 2016 27 Pages PDF
Abstract

•Sample-based link travel times are introduced to capture the randomness of metro systems.•A random two-stage programming model is formulated for the transfer strategy choices.•A label-correcting algorithm based branch and bound solution framework is designed.•The effectiveness of the proposed approaches is verified by the numerical experiments.

This research focuses on finding the best transfer schemes in metro networks. Using sample-based time-invariant link travel times to capture the uncertainty of a realistic network, a two-stage stochastic integer programming model with the minimized expected travel time and penalty value incurred by transfer activities is formulated. The first stage aims to find a sequence of potential transfer nodes (stations) that can compose a feasible path from origins to destinations in the transfer activity network, and the second stage provides the least time paths passing by the generated transfer stations in the first stage for evaluating the given transfer schemes and then outputs the best routing information. To solve our proposed model, an efficient hybrid algorithm, in which the label correcting algorithm is embedded into a branch and bound searching framework, is presented to find the optimal solutions of the considered problem. Finally, the numerical experiments are implemented in different scales of metro networks. The computational results demonstrate the effectiveness and performance of the proposed approaches even for the large-scale Beijing metro network.

Related Topics
Social Sciences and Humanities Decision Sciences Management Science and Operations Research
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