改进汽车跟随模型,捕捉雾天条件下未观察到的驾驶员异质性和跟随距离特征

IF 3.6 2区 工程技术 Q2 TRANSPORTATION Transportmetrica A-Transport Science Pub Date : 2024-01-02 DOI:10.1080/23249935.2022.2048917
Yan Huang , Xuedong Yan , Xiaomeng Li , Ke Duan , Andry Rakotonirainy , Zhijun Gao
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引用次数: 0

摘要

本文旨在开发一种改进的雾相关智能驾驶模型(FIDM),通过考虑雾条件下未观察到的驾驶员异质性,再现驾驶员的跟车行为特征。实验采用多用户驾驶模拟器,在不同的雾和限速条件下对由九辆车组成的车队进行了测试。实验结果表明,随着雾密度的降低,未观察到的驾驶员异质性(驾驶员内部异质性和驾驶员之间异质性的组合)呈上升趋势。平均跟车距离随着雾密度的降低和限速的增加而增加。提出了两个指标来验证 FIDM 的性能。结果表明,与目前流行的汽车跟随模型相比,FIDM 在再现未观察到的驾驶员异质性和平均跟随距离方面表现更好。这项研究有助于改进汽车跟随模型,从而更好地理解雾天条件下的交通流现象。
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Improving car-following model to capture unobserved driver heterogeneity and following distance features in fog condition

The paper aims to develop an improved Fog-related Intelligent Driver Model (FIDM) that reproduces drivers’ car-following behaviour features by taking into account unobserved driver heterogeneity in fog condition. A multi-user driving simulator experiment was performed, and a vehicle fleet consisting of nine vehicles was tested in different fog and speed limits conditions. The experimental results showed that the unobserved driver heterogeneity (the combination of intra-driver heterogeneity and inter-driver heterogeneity) tended to increase as the fog density decreased. The average following distance tended to increase with the decrease of fog density and increase of speed limit. Two indexes were proposed to verify the performance of the FIDM. The results showed that FIDM performed better in reproducing unobserved driver heterogeneity and average following distance compared to the current popular car-following models. This study contributes to an improved car-following model for better understanding traffic flow phenomena under foggy conditions.

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来源期刊
Transportmetrica A-Transport Science
Transportmetrica A-Transport Science TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
8.10
自引率
12.10%
发文量
55
期刊介绍: Transportmetrica A provides a forum for original discourse in transport science. The international journal''s focus is on the scientific approach to transport research methodology and empirical analysis of moving people and goods. Papers related to all aspects of transportation are welcome. A rigorous peer review that involves editor screening and anonymous refereeing for submitted articles facilitates quality output.
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