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Probabilistic travel time progression and its application to automatic vehicle identification data

机译:概率行驶时间进程及其在车辆自动识别数据中的应用

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Travel time has been identified as an important variable to evaluate the performance of a transportation system. Based on the travel time prediction, road users can make their optimal decision in choosing route and departure time. In order to utilise adequately the advanced data collection methods that provide real-time different types of information, this paper is aimed at a novel approach to the estimation of long roadway travel times, using Automatic Vehicle Identification (AVI) technology. Since the long roads contain a large number of scanners, the AVI sample size tends to reduce and, as such, computing the distribution for the total road travel time becomes difficult. In this work, we introduce a probabilistic framework that extends the deterministic travel time progression method to dependent random variables and enables the off-line estimation of road travel time distributions. In the proposed method, the accuracy of the estimation does not depend on the size of the sample over the entire corridor, but only on the amount of historical data that is available for each link. In practice, the system is also robust to small link samples and can be used to detect outliers within the AVI data. (C) 2015 Elsevier Ltd. All rights reserved.
机译:行驶时间已被确定为评估运输系统性能的重要变量。基于行驶时间的预测,道路使用者可以在选择路线和出发时间时做出最佳决策。为了充分利用提供实时的不同类型信息的高级数据收集方法,本文旨在使用自动车辆识别(AVI)技术估算长途行驶时间的新颖方法。由于漫长的道路包含大量扫描仪,因此AVI样本大小趋于减小,因此,很难计算出道路总行驶时间的分布。在这项工作中,我们引入了一个概率框架,该框架将确定性旅行时间进行方法扩展到因变量,并使离线估计道路旅行时间分布成为可能。在提出的方法中,估计的准确性不取决于整个通道上样本的大小,而仅取决于每个链接可用的历史数据量。在实践中,该系统还对小型链接样本具有鲁棒性,可用于检测AVI数据中的异常值。 (C)2015 Elsevier Ltd.保留所有权利。

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