Let Trajectories Speak Out the Traffic Bottlenecks

Hui Luo, Z. Bao, G. Cong, J. Culpepper, N. Khoa
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引用次数: 1

Abstract

Traffic bottlenecks are a set of road segments that have an unacceptable level of traffic caused by a poor balance between road capacity and traffic volume. A huge volume of trajectory data which captures realtime traffic conditions in road networks provides promising new opportunities to identify the traffic bottlenecks. In this paper, we define this problem as trajectory-driven traffic bottleneck identification: Given a road network R, a trajectory database T, find a representative set of seed edges of size K of traffic bottlenecks that influence the highest number of road segments not in the seed set. We show that this problem is NP-hard and propose a framework to find the traffic bottlenecks as follows. First, a traffic spread model is defined which represents changes in traffic volume for each road segment over time. Then, the traffic diffusion probability between two connected segments and the residual ratio of traffic volume for each segment can be computed using historical trajectory data. We then propose two different algorithmic approaches to solve the problem. The first one is a best-first algorithm BF, with an approximation ratio of 1-1/e. To further accelerate the identification process in larger datasets, we also propose a sampling-based greedy algorithm SG. Finally, comprehensive experiments using three different datasets compare and contrast various solutions, and provide insights into important efficiency and effectiveness trade-offs among the respective methods.
让轨迹说出交通瓶颈
交通瓶颈是由于道路容量和交通量之间的不平衡造成的一组路段的交通水平令人无法接受。捕获道路网络实时交通状况的大量轨迹数据为识别交通瓶颈提供了有希望的新机会。本文将这一问题定义为轨迹驱动的交通瓶颈识别问题:给定一个路网R,一个轨迹数据库T,找到一个具有代表性的、影响不在种子集中的路段数量最多的、大小为K的交通瓶颈种子边集合。我们证明了这个问题是np困难的,并提出了一个框架来找到流量瓶颈如下。首先,定义了交通扩展模型,该模型表示每个路段的交通量随时间的变化。然后,利用历史轨迹数据计算两个连通路段之间的交通扩散概率和每个路段的剩余交通量比。然后我们提出了两种不同的算法方法来解决这个问题。第一种是最佳优先算法BF,近似比为1-1/e。为了进一步加快大型数据集的识别过程,我们还提出了一种基于采样的贪婪算法SG。最后,使用三种不同数据集的综合实验比较和对比了各种解决方案,并提供了各自方法之间重要的效率和有效性权衡的见解。
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