Real-Time Traffic Assignment Using Fast Queries in Customizable Contraction Hierarchies

V. Buchhold, P. Sanders, D. Wagner
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引用次数: 13

Abstract

Given an urban road network and a set of origin-destination (OD) pairs, the traffic assignment problem asks for the traffic flow on each road segment. A common solution employs a feasible-direction method, where the direction-finding step requires many shortest-path computations. In this paper, we significantly accelerate the computation of flow patterns, enabling interactive transportation and urban planning applications. We achieve this by revisiting and carefully engineering known speedup techniques for shortest paths, and combining them with customizable contraction hierarchies. In particular, our accelerated elimination tree search is more than an order of magnitude faster for local queries than the original algorithm, and our centralized search speeds up batched point-to-point shortest paths by a factor of up to 6. These optimizations are independent of traffic assignment and can be generally used for (batched) point-to-point queries. In contrast to prior work, our evaluation uses real-world data for all parts of the problem. On a metropolitan area encompassing more than 2.7 million inhabitants, we reduce the flow-pattern computation for a typical two-hour morning peak from 76.5 to 10.5 seconds on one core, and 4.3 seconds on four cores. This represents a speedup of 18 over the state of the art, and three orders of magnitude over the Dijkstra-based baseline.
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在可定制的收缩层次结构中使用快速查询的实时流量分配
给定一个城市路网和一组OD对,交通分配问题要求在每个路段上的交通流。一种常见的解决方案采用可行方向方法,其中测向步骤需要许多最短路径计算。在本文中,我们大大加快了流模式的计算,使交互式交通和城市规划应用成为可能。我们通过重新审视和仔细设计已知的最短路径加速技术,并将它们与可定制的收缩层次结构结合起来,实现了这一点。特别是,对于本地查询,我们的加速消除树搜索比原始算法快了一个数量级以上,并且我们的集中搜索将批处理点对点最短路径的速度提高了6倍。这些优化与流量分配无关,通常可用于(批处理)点对点查询。与之前的工作相比,我们的评估使用了问题所有部分的真实数据。在一个拥有270多万居民的大都市地区,我们将典型的两个小时早晨高峰的流量模式计算从一个核心的76.5秒减少到10.5秒,四个核心的4.3秒。这比目前的技术水平提高了18倍,比基于dijkstra的基线提高了3个数量级。
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