MUSE:交通网络中有效路线规划的多式联运分离器

Amine Mohamed Falek, C. Pelsser, S. Julien, Fabrice Théoleyre
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引用次数: 3

摘要

在大陆尺度的网络上,许多算法只需几微秒就能计算出最短路径查询。然而,大多数解决方案都是针对单独的道路或公共交通网络量身定制的。为了充分利用交通基础设施,寻求多模式算法来计算各种运输方式的最短路径。尽管如此,当前的解决方案仍然缺乏在实际网络条件下有效处理交互式查询的性能,这些条件下经常发生交通堵塞、公共交通取消或延误。我们提出了一种基于多模态分离器的算法(MUSE),这是一种新的基于图分离器的多模态算法来计算最短旅行时间路径。它将网络划分为独立的、较小的区域,从而实现快速和可扩展的预处理。该分区对所有模式都是通用的,并且独立于流量条件,因此预处理只执行一次。MUSE依赖于描述模式序列的状态自动机来约束预处理和在线阶段的最短路径。支持新的移动模式序列只需要对每个分区独立的团进行预处理。我们还在查询阶段使用启发式方法增强算法,以在对正确性影响最小的情况下实现进一步的加速。我们提供了法国包含行人、道路、自行车和公共交通网络的多式联运网络的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MUSE: Multimodal Separators for Efficient Route Planning in Transportation Networks
Many algorithms compute shortest-path queries in mere microseconds on continental-scale networks. Most solutions are, however, tailored to either road or public transit networks in isolation. To fully exploit the transportation infrastructure, multimodal algorithms are sought to compute shortest paths combining various modes of transportation. Nonetheless, current solutions still lack performance to efficiently handle interactive queries under realistic network conditions where traffic jams, public transit cancelations, or delays often occur. We present a multimodal separators–based algorithm (MUSE), a new multimodal algorithm based on graph separators to compute shortest travel time paths. It partitions the network into independent, smaller regions, enabling fast and scalable preprocessing. The partition is common to all modes and independent of traffic conditions so that the preprocessing is only executed once. MUSE relies on a state automaton that describes the sequence of modes to constrain the shortest path during the preprocessing and the online phase. The support of new sequences of mobility modes only requires the preprocessing of the cliques, independently for each partition. We also augment our algorithm with heuristics during the query phase to achieve further speedups with minimal effect on correctness. We provide experimental results on France’s multimodal network containing the pedestrian, road, bicycle, and public transit networks.
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