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Short-term real-time traffic prediction methods: A survey

机译:短期实时流量预测方法:调查

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摘要

Short-term traffic prediction provides tools for improved road management by allowing the reduction of delays, incidents and other unexpected events. Different real-time approaches provide traffic managers with varying but valuable information. This paper reviews the literature regarding model-driven and data-driven approaches focusing on short-term realtime traffic prediction. We start by analyzing real-time traffic data collection, referring network state acquisition and description methods which are used as input to predictive algorithms. According to the input variables available, we describe common and useful traffic prediction outputs that should contribute to understand the panorama verified on a road network. We then discuss metrics commonly used to assess prediction accuracy, in order to understand a standardized way to compare the different approaches. We list, detail and compare existing model-driven and data-driven approaches that provide short-term real-time traffic predictions. This research leads to an understanding of the many advantages, disadvantages and trade-offs of the approaches studied and provides useful insights for future development. Despite the predominance of model-driven solutions for the last years, data-driven approaches also present good results suitable for Traffic Management usage.
机译:短期交通量预测通过减少延误,事故和其他意外事件,为改善道路管理提供了工具。不同的实时方法为交通管理人员提供了多种多样但有价值的信息。本文回顾了有关模型驱动和数据驱动方法的文献,重点是短期实时流量预测。我们首先分析实时交通数据收集,然后参考网络状态获取和描述方法,这些方法用作预测算法的输入。根据可用的输入变量,我们描述了常见且有用的交通预测输出,这些输出应有助于理解道路网络上验证的全景图。然后,我们讨论通常用于评估预测准确性的指标,以便了解比较不同方法的标准化方法。我们列出,详细说明和比较现有的模型驱动和数据驱动方法,这些方法可提供短期实时流量预测。这项研究使人们了解了所研究方法的许多优点,缺点和折衷方案,并为未来的发展提供了有用的见识。尽管在过去几年中,模型驱动解决方案占主导地位,但数据驱动方法也呈现出适合于流量管理使用的良好结果。

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