Time headway distribution analysis of naturalistic road users based on aerial datasets

Ruilin Yu;Yuxin Zhang;Luyao Wang;Xinyi Du
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Abstract

Purpose - Time headway (THW) is an essential parameter in traffic safety and is used as a typical control variable by many vehicle control algorithms, especially in safety-critical ADAS and automated driving systems. However, due to the randomness of human drivers, THW cannot be accurately represented, affecting scholars' more profound research. Design/methodology/approach - In this work, two data sets are used as the experimental data to calculate the goodness-of-fit of 18 commonly used distribution models of THW to select the best distribution model. Subsequently, the characteristic parameters of traffic flow are extracted from the data set, and three variables with higher importance are extracted using the random forest model. Combining the best distribution model parameters of the data set, this study obtained a distribution model with adaptive parameters, and its performance and applicability are verified. Findings - In this work, two data sets are used as the experimental data to calculate the goodness-of-fit of 18 commonly used distribution models of THW to select the best distribution model. Subsequently, the characteristic parameters of traffic flow are extracted from the data set, and three variables with higher importance are extracted using the random forest model. Combining the best distribution model parameters of the data set, this study obtained a distribution model with adaptive parameters, and its performance and applicability are verified. Originality/value - The results show that the proposed model has a 62.7% performance improvement over the distribution model with fixed parameters. Moreover, the parameter function of the distribution model can be regarded as a quantitative analysis of the degree of influence of the traffic flow state on THW.
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基于航空数据集的自然道路使用者车头时距分布分析
目的-车头时距(THW)是交通安全中的一个重要参数,被许多车辆控制算法用作典型的控制变量,尤其是在安全关键型ADAS和自动驾驶系统中。然而,由于人类驱动因素的随机性,THW无法准确地表示,影响了学者们更深入的研究。设计/方法/方法——在这项工作中,使用两个数据集作为实验数据,计算THW 18个常用分布模型的拟合优度,以选择最佳分布模型。随后,从数据集中提取交通流的特征参数,并使用随机森林模型提取三个重要度较高的变量。本研究结合数据集的最佳分布模型参数,获得了一个具有自适应参数的分布模型,并验证了其性能和适用性。研究结果——在这项工作中,使用两个数据集作为实验数据,计算THW 18个常用分布模型的拟合优度,以选择最佳分布模型。随后,从数据集中提取交通流的特征参数,并使用随机森林模型提取三个重要度较高的变量。本研究结合数据集的最佳分布模型参数,获得了一个具有自适应参数的分布模型,并验证了其性能和适用性。原创性/价值-结果表明,与固定参数的分布模型相比,所提出的模型的性能提高了62.7%。此外,分布模型的参数函数可以看作是交通流状态对THW影响程度的定量分析。
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Front Cover Contents Advancements and Prospects in Multisensor Fusion for Autonomous Driving Extracting Networkwide Road Segment Location, Direction, and Turning Movement Rules From Global Positioning System Vehicle Trajectory Data for Macrosimulation Decision Making and Control of Autonomous Vehicles Under the Condition of Front Vehicle Sideslip
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