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首页> 外文期刊>Journal of advanced transportation >Quantification of Rear-End Crash Risk and Analysis of Its Influencing Factors Based on a New Surrogate Safety Measure
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Quantification of Rear-End Crash Risk and Analysis of Its Influencing Factors Based on a New Surrogate Safety Measure

机译:基于新的代理安全措施的追溯碰撞风险和影响因素分析

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Traditional surrogate measures of safety (SMoS) cannot fully consider the crash mechanism or fail to reflect the crash probability and crash severity at the same time. In addition, driving risks are constantly changing with driver’s personal driving characteristics and environmental factors. Considering the heterogeneity of drivers, to study the impact of behavioral characteristics and environmental characteristics on the rear-end crash risk is essential to ensure driving safety. In this study, 16,905 car-following events were identified and extracted from Shanghai Naturalistic Driving Study (SH-NDS). A new SMoS, named rear-end crash risk index (RCRI), was then proposed to quantify rear-end crash risk. Based on this measure, a risk comparative analysis was conducted to investigate the impact of factors from different facets in terms of weather, temporal variables, and traffic conditions. Then, a mixed-effects linear regression model was applied to clarify the relationship between rear-end crash risk and its influencing factors. Results show that RCRI can reflect the dynamic changes of rear-end crash risk and can be applied to any car-following scenarios. The comparative analysis indicates that high traffic density, workdays, and morning peaks lead to higher risks. Moreover, results from the mixed-effects linear regression model suggest that driving characteristics, traffic density, day-of-week (workday vs. holiday), and time-of-day (peak hours vs. off-peak hours) had significant effects on driving risks. This study provides a new surrogate safety measure that can better identify rear-end crash risks in a more reliable way and can be applied to real-time crash risk prediction in driver assistance systems. In addition, the results of this study can be used to provide a theoretical basis for the formulation of traffic management strategies to improve driving safety.
机译:传统的替代替代措施的安全(SMOS)无法充分考虑碰撞机制或者在同时反映碰撞概率和崩溃严重程度。此外,驾驶风险与驾驶员的个人驾驶特征和环境因素不断变化。考虑到司机的异质性,研究行为特征和环境特征对后端碰撞风险的影响对于确保驾驶安全至关重要。在这项研究中,从上海自然主义驾驶研究(SH-NDS)确定并提取了16,905名车次事件。然后提出了一个名为后端崩溃风险指数(RCRI)的新SMOS,以量化后端碰撞风险。基于该措施,进行了风险比较分析,以调查在天气,时间变量和交通状况方面的不同方面的因素的影响。然后,应用混合效应线性回归模型来阐明后端碰撞风险与其影响因素之间的关系。结果表明,RCRI可以反映后端碰撞风险的动态变化,可以应用于任何汽车之后的场景。比较分析表明,高流量密度,工作日和早晨峰值导致较高的风险。此外,混合效应线性回归模型的结果表明,驾驶特性,交通密度,周日(工作日与假期)以及一天时间(峰值小时与偏心时间)具有显着影响关于驾驶风险。本研究提供了一种新的代理安全措施,可以更好地以更可靠的方式识别后端崩溃风险,并且可以应用于驾驶员辅助系统中的实时碰撞风险预测。此外,本研究的结果可用于为制定交通管理策略来提供理论依据,以提高驾驶安全性。

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