基于未来出行估计的车辆网络动态路径规划

Stefano Fontanelli, Enrico Bini, P. Santi
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引用次数: 19

摘要

交通拥堵浪费时间、能源,还造成污染。在本文中,我们提出了一种利用车辆通信的应用,即动态路线规划。在动态路线规划中,从旅行起点到目的地的路线不是在旅行开始时静态确定的,而是根据实时交通信息周期性地重新计算。估计未来出行时间是动态路线规划问题的核心。由于不可能知道未来的旅行时间,因此对其估计是一个主要的挑战。在本文中,我们考虑了三种对未来旅行时间的估计:文献中常用的最晚旅行时间启发式,对最晚旅行时间启发式的改进,以及一种基于观察到的路段车辆密度与旅行时间之间相关性的新方法。我们通过精确的模拟表明,所有这些启发式方法都能够显着提高交通效率,与静态路线规划的情况相比,最多可减少60%的旅行时间。在考虑的启发式算法中,基于车辆密度的启发式算法始终优于其他启发式算法,特别是在交通拥堵/缓解拥堵的情况下(例如,事故)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic route planning in vehicular networks based on future travel estimation
Traffic congestion wastes time, energy, and causes pollution. In this paper, We propose an application taking advantage of vehicular communications, namely dynamic route planning. In dynamic route planning, the route from a travel origin to its destination, instead of being statically determined at the travel starting time, is periodically recomputed according to real-time traffic information. Estimating future travel time is indeed central to the dynamic route planning problem. Since knowing future travel times cannot be achieved, a major challenge its estimation. In this paper, we consider three estimates for the future travel time: the latest travel time heuristic commonly used in the literature, an improvement of the latest travel time heuristic, and a novel approach based on exploiting the observed correlation between vehicle density in a road segment and travel time. We show through accurate simulation that all these heuristics are able to considerably improve traffic efficiency, with up to 60% traveling time reduction with respect to the case of the static route planning. Among the considered heuristics, the one based on vehicle density is consistently outperforming the others, especially in presence of traffic build up/decongestion situations (e.g., accidents).
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