以路径为中心的不确定道路网络的随机最短路径查找

Georgi Andonov, B. Yang
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引用次数: 9

摘要

研究了以路径为中心(PACE)不确定路网模型中的随机路由问题。在PACE模型中,不确定的旅行时间不仅与边缘有关,而且与某些路径有关。与路径相关的不确定旅行时间能够很好地捕捉不同边之间的旅行时间依赖关系。这大大提高了任意路径的行程时间分布估计的准确性,这是随机路由的基本功能,与经典的不确定路网模型相比,不确定的行程时间只与边缘相关。基于PACE模型,研究了具有准时到达可靠性(SPOTAR)问题的最短路径。给定一个源、一个目的地和一个旅行时间预算,SPOTAR问题的目标是找到一条使准时到达概率最大化的路径。我们开发了一种具有不同加速策略的通用算法来解决PACE模型下的SPOTAR问题。利用大量GPS轨迹数据进行的实证研究深入了解了所提出算法的设计特性,并证实了该算法的有效性。
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Stochastic Shortest Path Finding in Path-Centric Uncertain Road Networks
We study stochastic routing in the PAth-CEntric (PACE) uncertain road network model. In the PACE model, uncertain travel times are associated with not only edges but also some paths. The uncertain travel times associated with paths are able to well capture the travel time dependency among different edges. This significantly improves the accuracy of travel time distribution estimations for arbitrary paths, which is a fundamental functionality in stochastic routing, compared to classic uncertain road network models where uncertain travel times are associated with only edges. Based on the PACE model, we investigate the shortest path with on-time arrival reliability (SPOTAR) problem. Given a source, a destination, and a travel time budget, the SPOTAR problem aims at finding a path that maximizes the on-time arrival probability. We develop a generic algorithm with different speedup strategies to solve the SPOTAR problem under the PACE model. Empirical studies with substantial GPS trajectory data offer insight into the design properties of the proposed algorithm and confirm that the algorithm is effective.
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