城市与郊区交通预测方法的比较

Julien Salotti, S. Fenet, Romain Billot, Nour-Eddin El Faouzi, C. Solnon
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引用次数: 10

摘要

在互联城市和智慧城市的背景下,预测短期交通状况的需求导致了各种预测算法的发展。尽管进行了各种各样的研究工作,但是对于全网络流量预测所涉及的需求仍然没有明确的认识。本文研究了几种最先进的方法预测各路段交通流的能力。一些多变量方法使用所有传感器的信息来预测特定位置的交通,而另一些方法则依赖于选择合适的子集。在经典学习方法的基础上,本文采用一种新的基于时间序列图模型和信息论的变量选择算法,研究了学习该子集的优势。这种方法已经成功地应用于具有类似目标的自然科学应用中,但尚未应用于交通领域。一个贡献是在两个具有不同特征的真实数据集上评估所有这些方法,并比较每种方法在两种情况下的预测能力。第一个数据集描述了法国里昂市中心的交通流,由于网络结构和城市交通动态,该数据集呈现出复杂的模式。第二个数据集描述了法国城市马赛郊区的城际高速公路交通情况。实验结果验证了变量选择机制的必要性,并说明了根据道路类型和预测范围的预测算法的互补性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Traffic Forecasting Methods in Urban and Suburban Context
In the context of Connected and Smart Cities, the need to predict short term traffic conditions has led to the development of a large variety of forecasting algorithms. In spite of various research efforts, there is however still no clear view of the requirements involved in network-wide traffic forecasting. In this paper, the ability of several state-of-the-art methods to forecast the traffic flow at each road segment is studied. Some of the multivariate methods use the information of all sensors to predict traffic at a specific location, whereas some others rely on the selection of a suitable subset. In addition to classical methods, this paper studies the advantage of learning this subset by using a new variable selection algorithm based on time series graphical models and information theory. This method has already been successfully used in natural science applications with similar goals, but not in the traffic community. A contribution is to evaluate all these methods on two real-world datasets with different characteristics and to compare the forecasting ability of each method in both contexts. The first dataset describes the traffic flow in the city center of Lyon (France), which exhibits complex patterns due to the network structure and urban traffic dynamics. The second dataset describes inter-urban freeway traffic on the outskirts of the French city of Marseille. Experimental results validate the need for variable selection mechanisms and illustrate the complementarity of forecasting algorithms depending on the type of road and the forecasting horizon.
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