首页> 外文期刊>Traffic Injury Prevention >Proactive crash risk prediction modeling for merging assistance system at interchange merging areas
【24h】

Proactive crash risk prediction modeling for merging assistance system at interchange merging areas

机译:互动崩溃风险预测建模,用于互换合并区域的辅助系统

获取原文
获取原文并翻译 | 示例
           

摘要

Objective: Ramp drivers have to merge into the through traffic in a limited time and space at interchange merging areas. Different merging decisions are made due to drivers' various perception abilities of potential danger, which might significantly increase the crash risk. Driving assistance technology (DA) is expected to be an effective way of mitigating the crash risk. Hence, this paper aims to contribute to the literature by designing a model strategy to predict the crash risk of merging drivers in order to enhance the merging assistance system for crash avoidance. Methods: Unmanned aerial vehicle (UAV) was used to collect individual vehicle data to conduct traffic analysis at the microscopic level. A model strategy was proposed to predict the crash risk of merging vehicles which could make sure that ramp drivers are aware of potential risks in advance. Three models (i.e., binary logistic regression, multinomial logistic regression, and nested logit models) were developed and compared. Results: Target-lane-related and merging-vehicle-related variables were found significant with crash risk, including the speed of the merging vehicle, the speed of lead/lag vehicle in the target lane, the type of lead/lag vehicle in the target lane. Different variables were found to be significant in the proposed models. Conclusions: The results suggest that the nested logit model has the highest prediction accuracy. It is concluded that the merging speed, driving ability (i.e., lane-keeping instability), and the vehicle type in the target lane affect the crash risk. Finally, the implementation of the proposed prediction model for merging assistance system is designed. The findings from this study can have implications for the design of the merging assistance system for helping drivers make safe merging decisions and thus enhancing the safety of the interchange merging area.
机译:目的:斜坡司机必须在交汇处的有限时间和空间中合并到通行交通。由于驾驶员的各种潜在危险的各种感知能力,潜在危险的各种感知能力不同,这可能会显着提高碰撞风险。驾驶辅助技术(DA)预计将是减轻碰撞风险的有效方式。因此,本文通过设计模型策略来预测合并驱动因素的碰撞风险,以提高碰撞急救的合并辅助系统,为文献贡献。方法:无人驾驶飞行器(UAV)用于收集单个车辆数据以在显微级别进行交通分析。提出了一种模型策略,以预测合并车辆的碰撞风险,这可以确保斜坡驱动程序提前了解潜在风险。开发并比较了三种模型(即二进制逻辑回归,多项式逻辑回归和嵌套Logit模型)。结果:针对撞击风险,包括碰撞风险,包括合并车辆的速度,目标车道中的速度/滞后车辆的速度,引线/滞后车辆的速度,延长/滞后车辆中的速度有关目标车道。发现不同的变量在拟议的模型中是显着的。结论:结果表明嵌套的Logit模型具有最高的预测精度。结论是,合并速度,驱动能力(即,保持不稳定性)和目标车道中的车辆类型影响碰撞风险。最后,设计了用于合并辅助系统的建议预测模型的实施。本研究的调查结果可能对设计合并辅助系统的设计有影响,以帮助驾驶员制造安全合并决策,从而提高交换合并区域的安全性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号