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基于风险图的高速公路车辆预警方法:通过全球视角的驾驶风险特征化提高交通安全。

A freeway vehicle early warning method based on risk map: Enhancing traffic safety through global perspective characterization of driving risk.

机构信息

School of Transportation, Southeast University, Nanjing, Jiangsu Province 211189, China; Institute on Internet of Mobility, Southeast University and University of Wisconsin-Madison, Southeast University, Nanjing, Jiangsu Province 211189, China; Jiangsu Province Collaborative Innovation Center of Modern Urban Traffic Technologies, Southeast University, Nanjing, Jiangsu 211189, China.

School of Transportation, Southeast University, Nanjing, Jiangsu Province 211189, China; Institute on Internet of Mobility, Southeast University and University of Wisconsin-Madison, Southeast University, Nanjing, Jiangsu Province 211189, China; Jiangsu Province Collaborative Innovation Center of Modern Urban Traffic Technologies, Southeast University, Nanjing, Jiangsu 211189, China.

出版信息

Accid Anal Prev. 2024 Aug;203:107611. doi: 10.1016/j.aap.2024.107611. Epub 2024 May 10.

Abstract

In the era of rapid advancements in intelligent transportation, utilizing vehicle operating data to evaluate the risk of freeway vehicles and study on vehicle early warning methods not only lays a theoretical foundation for improving the active safety of vehicles, but also provides the technical support for reducing accident rate. This paper proposes a freeway vehicle early warning method based on risk map to enhance vehicle safety. Firstly, Modified Time-to-Collision (MTTC), a two-dimensional indicator that describes the risk of inter-vehicle travel, is used as an indicator of road traffic risk. This paper designs a transformation function to probabilistically transform MTTC into Risk Indicators (RI). The single-vehicle risk map is generated based on the mapping relationship between the risk values and the corresponding roadway segments. These single-vehicle risk maps of all vehicles on the road are superimposed to construct the risk map, which is used to describe the risk distribution in the freeway. Then, a vehicle early warning framework is built based on the risk map. The risk values in the risk map are compared with predefined early warning thresholds to alert the vehicle when it enters a high-risk state. Finally, VISSIM is used to carry out simulation experiments. The experiment simulates a freeway accident stopping situation. This scenario includes sub-scenarios such as unplanned stopping and lane-changing, continuous lane-changing, and adjacent lane overtaking. We analyze the risk map and vehicle warning results in different sub-scenarios, evaluate the risk changes of the vehicles before and after receiving the warning, and compare the warning results of the method in this paper with other alternative methods. The method is applied to 17 vehicles in the simulation to adjust their motion states. The results show that the total warning time is reduced by 29.6% and 73.3% of vehicles change lanes away from the accident vehicle. The overall results validate the effectiveness of the vehicle early warning method based on risk map proposed in this paper.

摘要

在智能交通飞速发展的时代,利用车辆运行数据评估高速公路车辆风险并研究车辆预警方法,不仅为提高车辆主动安全性奠定了理论基础,也为降低事故率提供了技术支撑。本文提出了一种基于风险图的高速公路车辆预警方法,以提高车辆安全性。首先,将描述车辆间行驶风险的二维指标 Modified Time-to-Collision (MTTC) 用作道路交通事故风险指标。本文设计了一个转换函数,将 MTTC 概率转换为风险指标 (RI)。根据风险值与相应路段之间的映射关系,生成单车风险图。将道路上所有车辆的单车风险图叠加,构建风险图,用于描述高速公路的风险分布。然后,基于风险图构建车辆预警框架。将风险图中的风险值与预定义的预警阈值进行比较,当车辆进入高风险状态时发出预警。最后,使用 VISSIM 进行仿真实验。实验模拟了高速公路事故停车情况。该场景包括计划外停车和变道、连续变道、相邻车道超车等子场景。我们分析了不同子场景下的风险图和车辆预警结果,评估了车辆在接收到预警前后的风险变化,并将本文方法的预警结果与其他替代方法进行了比较。该方法应用于模拟中的 17 辆车,调整其运动状态。结果表明,总预警时间减少了 29.6%,73.3%的车辆从事故车辆变道离开。整体结果验证了本文提出的基于风险图的车辆预警方法的有效性。

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