City traffic prediction based on real-time traffic information for Intelligent Transport Systems

Zilu Liang, Y. Wakahara
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引用次数: 26

Abstract

Intelligent Transportation Systems (ITS) have been considered important technologies to mitigate urban traffic congestion. Accurate traffic prediction is one of the critical steps in the operation of an ITS. While techniques for traffic prediction have existed for many years, the research effort has mainly been focused on highway networks. Due to the fundamental difference between the traffic flow pattern on highways and that on city roads, much of the existing models cannot be effectively applied to city traffic prediction. In this paper, we propose two city traffic prediction models using different modeling approaches. Model-1 is based on the traffic flow propagation in the network, while Model-2 is based on the time-varied spare flow capacity on the concerned road link. The proposed models are implemented to predict the traffic volume in Cologne in Germany, and the real data are collected through simulations in the traffic simulator SUMO. The results show that both of the proposed models reduce the prediction error up to 52% and 30% in the best cases compared to the existing Shift Model. In addition, we found that Model-1 is suitable for short prediction interval that is in the same magnitude as the link travel time, while Model-2 demonstrates superiority when the prediction interval is larger than one minute.
基于实时交通信息的智能交通系统城市交通预测
智能交通系统(ITS)被认为是缓解城市交通拥堵的重要技术。准确的交通预测是智能交通系统运行的关键步骤之一。虽然交通预测技术已经存在多年,但研究工作主要集中在公路网络上。由于高速公路交通流模式与城市道路交通流模式的根本区别,现有的许多模型不能有效地应用于城市交通预测。本文采用不同的建模方法,提出了两种城市交通预测模型。模型1基于交通流在网络中的传播,模型2基于相关路段上随时间变化的备用通行能力。将所提出的模型应用于德国科隆的交通流量预测,并在交通模拟器SUMO中进行仿真,收集真实数据。结果表明,与现有的Shift模型相比,两种模型在最佳情况下的预测误差分别降低了52%和30%。此外,我们发现模型1适用于与路段行程时间相同量级的较短预测区间,而模型2适用于大于1分钟的预测区间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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