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On the fundamental diagram and driving behavior modeling of heterogeneous traffic flow using UAV-based data

机译:基于UAV的数据的异构交通流的基本图和驾驶行为建模

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A significant difference in the behavior of heterogeneous and undisciplined traffic streams is observed when compared with the conventional traffic flow. Most of the existing traffic flow models are developed considering the traffic stream with strict lane discipline. Several studies from South Asian countries have reported high heterogeneity in the traffic stream with weak or no lane discipline.This study, for the first time, develops fundamental traffic flow diagrams for the heterogeneous and undisciplined traffic stream by analyzing traffic videos captured using Unmanned Aerial Vehicle (UAV) in Karachi, Pakistan. UAV-based speed-density data is modeled using a weighted least-square regression technique, and stochastic fundamental diagrams (FDs) are developed to represent the entire range of speed-density data. The stochastic FDs are used to determine the 85th percentile speeds to implement speed limits on major urban arterials. The multi-modal FDs show a significant difference in the behavior of different modes in the traffic stream. The aggressive behavior of motorbike riders, which put them at a higher risk of accidents, highlights the need for policy measures to enforce discipline in the traffic stream.The main contribution of this study is the utilization of a UAV-based geospatial analysis technique for accurate extraction of longitudinal and lateral distances between vehicles to determine the relationship between macroscopic and microscopic parameters of traffic flow. This study shows that lateral gaps between vehicles are inversely related to traffic density. The longitudinal gaps observed for local heterogeneous traffic show a significant difference with the longitudinal gaps estimated using a standard car-following model. The macroscopic and microscopic models for heterogeneous and undisciplined traffic flow presented in this study could be useful in developing novel traffic flow models and calibrating the existing microscopic/ macroscopic traffic flow models for the traffic streams with similar heterogeneity and lane behavior.
机译:与传统交通流量相比,观察到异构和未痛地交通流量的行为的显着差异。考虑到严格的车道纪律的交通流量,开发了大多数现有的交通流量模型。南亚国家的几项研究报告了具有弱势或没有车道纪律的交通流量中的高异质性。这项研究首次开发了通过使用无人机飞行器捕获的交通视频来开发异构和未纪念的交通流量的基本交通流量图(UAV)在巴基斯坦卡拉奇。基于UAV的速度密度数据使用加权最小二乘回归技术进行建模,并且开发了随机基本图(FDS)以表示整个速度密度数据范围。随机FDS用于确定第85百分位速度,以实现主要城市动脉的速度限制。多模态fds显示了交通流量中不同模式的行为的显着差异。将它们处于较高风险的摩托车骑手的积极行为突出了需要政策措施,在交通流量中实施纪律。本研究的主要贡献是利用基于UV的地理空间分析技术的准确贡献车辆之间的纵向和横向距离的提取,以确定交通流量的宏观和微观参数之间的关系。该研究表明,车辆之间的横向间隙与交通密度相反。局部异构流量观察到的纵向间隙显示出具有使用标准汽车之后模型估计的纵向间隙的显着差异。本研究中介绍的异构和无纪录的业务流程的宏观和微观模型可用于开发新颖的交通流量模型,并校准具有相似异质性和车道行为的交通流量的现有的微观/宏观交通流量模型。

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