交通拥堵信息共享的车辆聚类算法

Yohei Kanemaru, S. Matsuura, Masatoshi Kakiuchi, Satoru Noguchi, A. Inomata, K. Fujikawa
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引用次数: 8

摘要

我们提出了一种对处于同一拥挤交通流中的车辆进行聚类的方法。我们的目标是提供一种在相同情况下车辆之间共享信息的机制,以缓解城市地区的交通拥堵。因为关于拥挤交通流的最准确的信息来源是在交通流前端的车辆,所以首先需要对其进行识别。为此,采用了一种基于轨迹抽象的聚类算法。通过将具有相同或相似轨迹的车辆分组到同一个集群中,交通流尾部的车辆可以发现交通流头部的车辆。此外,我们采用了一种抽象的轨迹表示来补偿GPS信息中的误差。仿真结果表明,该算法比现有常用的聚类算法具有更高的正确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vehicle clustering algorithm for sharing information on traffic congestion
We present a method for clustering vehicles that are in the same congested traffic flow. Our goal is to provide a mechanism for sharing information between vehicles in the same situation to ease traffic congestion in urban areas. Because the most accurate source of information about the congested traffic flow is the vehicle at the head of the traffic flow, it first needs to be identified. To do so, we adapt a clustering algorithm by trajectory abstraction. By grouping the vehicles that have the same or similar trajectory into the same cluster, the vehicle at the tail of the traffic flow can discover the vehicle at the head of the traffic flow. Moreover, we adapt an abstracted trajectory representation to compensate for the error in GPS information. Simulation results show that the proposed algorithm provides a higher rate of correctness than existing commonly used clustering algorithms.
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