Modeling and Analysis of Microscopic Risk Avoidance Behavior of Homogeneous Driver Groups Under Risk Scenarios

Lili Zheng, Yanlin Li, T. Ding, Yuying Wang, Fanyun Meng
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Abstract

To cope with the increasing number of road traffic crashes, it is critical to develop a driver assistance system that can provide early warning for vehicle collisions and control the vehicle at critical moments. However, to achieve this function, the driver assistance system must proactively understand drivers’ preferences and predict their risk avoidance behavior in risk scenarios, an area that currently lacks sufficient research. To address this issue, this study proposes a method for modeling microscopic risk avoidance behavior for homogeneous groups of drivers. Firstly, the risk field theory is established to achieve the basic driving risk assessment. Subsequently, a macro–micro collision-tendency probability calculation model is constructed to correct the basic driving risk values and obtain more accurate risk assessment results. Finally, a risk avoidance behavior model is developed by combining drivers’ risk response behavior and the psychology of desired speed pursuit. This study uses natural driving data for model validation. The results imply that the risk assessment indicator proposed in this study can reflect the driving risk under different risk phases. The risk avoidance behavior model accurately identifies vehicle acceleration fluctuations and matches drivers’ avoidance motivation in risk scenarios. In addition, the model parameters calibration results reveal significant differences among different driving groups; for example, risk perception and desired speed. This study aims to deepen researchers’ understanding of drivers’ risk avoidance behavior for designing driver assistance systems and road safety management.
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风险情景下同质驾驶员群体微观风险规避行为的建模与分析
为了应对日益增多的道路交通事故,开发一种能够提供车辆碰撞预警并在关键时刻控制车辆的驾驶辅助系统至关重要。然而,要实现这一功能,驾驶员辅助系统必须主动了解驾驶员的偏好,并预测他们在风险情景下的避险行为,而这一领域目前还缺乏足够的研究。针对这一问题,本研究提出了一种针对同质驾驶员群体的微观风险规避行为建模方法。首先,建立风险场理论,实现基本的驾驶风险评估。随后,构建宏观-微观碰撞倾向概率计算模型,修正基本驾驶风险值,获得更准确的风险评估结果。最后,结合驾驶员的风险反应行为和追求理想速度的心理,建立了风险规避行为模型。本研究使用自然驾驶数据进行模型验证。结果表明,本研究提出的风险评估指标能够反映不同风险阶段下的驾驶风险。风险规避行为模型能准确识别车辆加速度波动,并与风险情景下驾驶员的规避动机相匹配。此外,模型参数标定结果显示不同驾驶群体之间存在显著差异,例如风险感知和期望速度。这项研究旨在加深研究人员对驾驶员风险规避行为的理解,以设计驾驶员辅助系统和进行道路安全管理。
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