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Travel time forecasting and dynamic origin-destination estimation for freeways based on bluetooth traffic monitoring

机译:基于蓝牙交通监控的高速公路出行时间预测和动态起始 - 目的地估计

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摘要

From the point of view of the information supplied by an ATIS to the motorists entering a freeway of one of the most relevant is the Forecasted Travel Time, that is the expected travel time that they will\udexperience when traverse a freeway segment. From the point of view of ATMS the dynamic estimates of time dependencies in OD matrices is a major input to dynamic traffic models used for estimating the current traffic state and forecasting its short term evolution. Travel Time Forecasting and Dynamic OD Estimation are two of the key components of ATIS/ATMS and the quality of the results that they could provide depend not only on the quality of the models but also on the accuracy and reliability of\udthe measurements of traffic variables supplied by the detection technology.\udThe quality and reliability of the measurements produced by traditional technologies, as inductive loop detectors, is not usually the required by real-time applications, therefore one wonders what could be expected from the new ICT technologies as for example Automatic Vehicle Location, License Plate Recognition, detection of mobile devices and so on. The main objectives of this paper are: to explore\udthe quality of the data produced by the Bluetooth detection of mobile devices equipping vehicles for Travel Time Forecasting and its use to estimate time dependent OD matrices. Ad hoc procedures\udbased on Kalman Filtering have been designed and implemented successfully and the numerical results of the computational experiments are presented and discussed.
机译:从ATIS提供给进入高速公路的驾驶者中最相关的驾驶者的信息的角度来看,这是预测的行驶时间,这是指他们穿越高速公路路段时的\\经验。从ATMS的角度来看,OD矩阵中时间相关性的动态估计是动态流量模型的主要输入,动态流量模型用于估算当前流量状态并预测其短期演变。行程时间预测和动态OD估算是ATIS / ATMS的两个关键组成部分,它们提供的结果的质量不仅取决于模型的质量,还取决于交通变量的测量的准确性和可靠性。 \ ud传统上作为感应环路检测器的技术所产生的测量的质量和可靠性通常不是实时应用所要求的,因此人们想知道例如新的ICT技术会带来什么?自动车辆定位,车牌识别,移动设备检测等。本文的主要目标是:研究装备了用于行进时间预测的车辆的移动设备的蓝牙检测所产生的数据质量,以及该数据用于估计与时间相关的OD矩阵。成功设计并实现了基于卡尔曼滤波的特设程序,并给出了计算实验的数值结果并进行了讨论。

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