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A Comparative Study on Drivers’ Stop/Go Behavior at Signalized Intersections Based on Decision Tree Classification Model

机译:基于决策树分类模型的信号交叉口司机停止/去行为的比较研究

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The stop/go decisions at signalized intersections are closely related to driving speed during signal change intervals. The speed during stop/go decision-making has a significant influence on the dilemma area, resulting in changes of stop/go decisions and high complexity of the decision-making process. Considering that traffic delays and vehicle exhaust pollution are mainly caused by queuing at intersections, the stop-line passing speed during the signal change interval will affect both vehicle operation safety and the atmospheric environment. This paper presents a comparative study on drivers’ stop/go behaviors when facing a transition signal period consisting of 3?s green flashing light (FG) and 3?s yellow light (Y) at rural high-speed intersections and urban intersections. For this study, 1,459 high-quality vehicle trajectories of five intersections in Shanghai during the transition signal period were collected. Of these five intersections, three are high-speed intersections with a speed limit of 80?km/h, and the other two are urban intersections with a speed limit of 50?km/h. Trajectory data of these vehicle samples were statistically analyzed to investigate the general characteristics of potential influencing factors, including the instantaneous speed and the distance to the intersection at the start of FG, the vehicle type, and so on. Decision Tree Classification (DTC) models are developed to reveal the relationship between the drivers’ stop/go decisions and these possible influencing factors. The results indicate that the instantaneous speed of FG onset, the distance to the intersection at the start of FG, and the vehicle type are the most important predictors for both types of intersections. Besides, a DTC model can offer a simple way of modeling drivers’ stopping decision behavior and produce good results for urban intersections.
机译:信号交叉点的停止/去决定与信号变化间隔期间的驾驶速度密切相关。停止/去决策期间的速度对困境区域产生了重大影响,导致停止/去决策的变化和决策过程的高复杂性。考虑到交通延误和车辆排气污染主要是由于在交叉路口排队而导致的,信号变化间隔期间的止动线通过速度会影响车辆运行安全和大气环境。本文在面对农村高速交叉路口和城市交叉路口组成的过渡信号时段,介绍了司机停止/去行为的比较研究。对于本研究,收集了在过渡信号期间上海的五个交叉口的1,459辆高质量车辆轨迹。在这五个十字路口中,三个是高速交叉口,速度限制为80?Km / h,另外两个是城市交叉口,速度限制为50?km / h。这些车辆样品的轨迹数据在统计上分析,以研究潜在影响因素的一般特征,包括瞬时速度和与FG的开头的距离,车辆类型等。开发了决策树分类(DTC)模型以揭示司机停止/去决策与这些可能的影响因素之间的关系。结果表明,FG发作的瞬时速度,FG的开始时与交叉点的距离,以及车辆类型是两种类型的交叉点的最重要的预测因子。此外,DTC模型可以提供一种简单的方式来建模驱动程序停止决策行为,并对城市交叉路口产生良好的效果。

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