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Modeling car-following behavior on urban expressways in Shanghai: A naturalistic driving study

机译:上海城市高速公路上的跟车行为建模:自然驾驶研究

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摘要

Although car-following behavior is the core component of microscopic traffic simulation, intelligent transportation systems, and advanced driver assistance systems, the adequacy of the existing car-following models for Chinese drivers has not been investigated with real-world data yet. To address this gap, five representative car-following models were calibrated and evaluated for Shanghai drivers, using 2100 urban-expressway car-following periods extracted from the 161,055 km of driving data collected in the Shanghai Naturalistic Driving Study (SH-NDS). The models were calibrated for each of the 42 subject drivers, and their capabilities of predicting the drivers’ car-following behavior were evaluated.The results show that the intelligent driver model (IDM) has good transferability to model traffic situations not presented in calibration, and it performs best among the evaluated models. Compared to the Wiedemann 99 model used by VISSIM®, the IDM is easier to calibrate and demonstrates a better and more stable performance. These advantages justify its suitability for microscopic traffic simulation tools in Shanghai and likely in other regions of China. Additionally, considerable behavioral differences among different drivers were found, which demonstrates a need for archetypes of a variety of drivers to build a traffic mix in simulation. By comparing calibrated and observed values of the IDM parameters, this study found that (1) interpretable calibrated model parameters are linked with corresponding observable parameters in real world, but they are not necessarily numerically equivalent; and (2) parameters that can be measured in reality also need to be calibrated if better trajectory reproducing capability are to be achieved.
机译:尽管跟车行为是微观交通模拟,智能交通系统和高级驾驶员辅助系统的核心组成部分,但尚未使用现实世界的数据来研究现有针对中国驾驶员的跟车模型的适用性。为了解决这一差距,使用从上海自然驾驶研究(SH-NDS)中收集的161,055公里的驾驶数据中提取的2100个城市高速公路的汽车跟踪周期,对上海驾驶员进行了五个代表性的汽车跟踪模型的评估。该模型针对42个主题驾驶员进行了校准,并评估了其预测驾驶员跟车行为的能力。结果表明,智能驾驶员模型(IDM)具有良好的可移植性,可以对标定中未出现的交通状况进行建模,在评估模型中表现最佳。与VISSIM®使用的Wiedemann 99模型相比,IDM易于校准,并具有更好,更稳定的性能。这些优势证明了其适用于上海以及中国其他地区的微观交通模拟工具的合理性。此外,在不同的驱动程序之间发现了相当大的行为差异,这表明需要各种驱动程序的原型来在仿真中构建流量混合。通过比较IDM参数的校准值和观察值,该研究发现:(1)可解释的校准模型参数与现实世界中相应的可观察参数相关联,但不一定在数值上等效; (2)如果要获得更好的轨迹再现能力,还需要校准实际上可以测量的参数。

著录项

  • 来源
    《Transportation research》 |2018年第8期|425-445|共21页
  • 作者单位

    Key Laboratory of Road and Traffic Engineering, Ministry of Education,School of Transportation Engineering, Tongji University;

    Key Laboratory of Road and Traffic Engineering, Ministry of Education,School of Transportation Engineering, Tongji University;

    Lyles School of Civil Engineering, Purdue University;

    Key Laboratory of Road and Traffic Engineering, Ministry of Education,School of Transportation Engineering, Tongji University;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Car-following model; Naturalistic driving study; Calibration and validation; Urban expressway;

    机译:跟车模型;自然驾驶研究;标定与验证;城市高速公路;

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