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Short-term prediction of motorway travel time using ANPR and loop data

机译:使用ANPR和回路数据对高速公路行驶时间进行短期预测

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摘要

Travel time is a good operational measure of the effectiveness of transportation systems. The ability to accurately predict motorway and arterial travel times is a critical component for many intelligent transportation systems (ITS) applications. Advanced traffic data collection systems using inductive loop detectors and video cameras have been installed, particularly for motorway networks. An inductive loop can provide traffic flow at its location. Video cameras with image-processing software, e.g. Automatic Number Plate Recognition (ANPR) software, are able to provide travel time of a road section. This research developed a dynamic linear model (DLM) model to forecast short-term travel time using both loop and ANPR data. The DLM approach was tested on three motorway sections ill Southern England. Overall, the model produced good prediction results. albeit large prediction errors occurred at congested traffic conditions due to the dynamic nature of traffic. This result indicated advantages of use of the both data sources. Copyright (C) 2008 John Wiley & Sons, Ltd.
机译:出行时间是衡量运输系统有效性的良好操作指标。准确预测高速公路和动脉行驶时间的能力是许多智能交通系统(ITS)应用程序的关键组成部分。已经安装了使用感应环路检测器和摄像机的高级交通数据收集系统,特别是对于高速公路网络。感应环路可以在其位置提供流量。带有图像处理软件的摄像机,例如自动车牌识别(ANPR)软件能够提供路段的行驶时间。这项研究开发了动态线性模型(DLM)模型,以使用回路和ANPR数据预测短期旅行时间。 DLM方法在英格兰南部的三个高速公路路段进行了测试。总体而言,该模型产生了良好的预测结果。尽管由于交通的动态性质,在拥堵的交通状况下会发生较大的预测错误。该结果表明了使用两个数据源的优势。版权所有(C)2008 John Wiley&Sons,Ltd.

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