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A Case for Online Traffic Simulation: Systematic Procedure to Calibrate Car-Following Models Using Vehicle Data

机译:在线交通仿真的案例:使用车辆数据校准跟车模型的系统程序

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Online microsimulation modeling is a congestion mitigation strategy that is gaining traction in the transportation sector. The key limitations to the deployment of this strategy are the availability of data for model calibration and the existence of vetted and transparent methodologies to calibrate models using trajectory-level data. The promise of connected vehicle (CV) data is a solution to the former problem. In this paper, a sample from the second Strategic Highway Research Program's Naturalistic Driving Study (NDS) is used as a surrogate for CV data. A systematic procedure for car-following model (CFM) calibration using trajectory-level data is presented. A case study was developed to illustrate the importance of calibrating microsimulation models using current traffic data. Four CFMs are calibrated and validated using high and low speed trips. Results indicate that behavior varies with speed and better calibration results are achieved when segmenting the data. Finally, validation efforts indicate that calibrated model parameters outperform literature parameters; this underscores the importance of calibrating models with appropriate data.
机译:在线微仿真建模是一种缓解拥堵的策略,在交通运输领域越来越受关注。部署此策略的主要限制是模型校准数据的可用性以及使用轨迹级数据校准模型的经过审查的透明方法的存在。联网汽车(CV)数据的承诺是对前一个问题的解决方案。在本文中,第二个战略公路研究计划的自然驾驶研究(NDS)的样本用作CV数据的替代。提出了使用轨迹级数据进行汽车跟踪模型(CFM)校准的系统程序。进行了案例研究,以说明使用当前交通数据校准微仿真模型的重要性。使用高速和低速行程对四个CFM进行校准和验证。结果表明,行为随速度而变化,并且在分割数据时可获得更好的校准结果。最后,验证工作表明校准后的模型参数优于文献参数。这强调了使用适当数据校准模型的重要性。

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