Considering demographics of other involved drivers in predicting the highest driver injury severity in multi-vehicle crashes on rural two-lane roads in California

IF 2.4 3区 工程技术 Q3 TRANSPORTATION
Md Julfiker Hossain, J. Ivan, Shanshan Zhao, Kai Wang, Sadia Sharmin, N. Ravishanker, Eric D. Jackson
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引用次数: 8

Abstract

Abstract The injury severity of a driver in a crash is significantly related to the driver’s age and gender and vehicle characteristics. Previous studies have used only information about the most severely injured driver to represent the crash severity, ignoring other drivers involved in the crash, which can also be important to explain the crash severity. This study uses demographic information of all drivers involved in a multi-vehicle crash to predict the injury severity of the most severely injured driver using a partial proportional odds model. Models incorporating demographic information and vehicle characteristics of all drivers and vehicles involved in a crash were compared with models considering only information about the most severely injured driver in terms of significance of factors and prediction accuracy. The results indicate that although young drivers are likely to have lower levels of injury severity compared to working-age drivers, injury severity increases if the proportion of young drivers increases in a multi-vehicle crash. Drivers indicated to be not at fault frequently were more severely injured than drivers at fault. Finally, the inclusion of all drivers’ demographic information shows an improvement in the prediction accuracy of crash severity of the most severely injured driver.
考虑其他涉及司机的人口统计数据,以预测加州农村双车道道路上多车碰撞中最高的司机伤害严重程度
摘要碰撞事故中驾驶员的损伤严重程度与驾驶员的年龄、性别和车辆特征显著相关。以前的研究只使用受伤最严重的驾驶员的信息来表示碰撞的严重程度,而忽略了涉及碰撞的其他驾驶员,这对于解释碰撞的严重程度也很重要。本研究使用涉及多车碰撞的所有驾驶员的人口统计信息,使用部分比例赔率模型来预测受伤最严重的驾驶员的伤害严重程度。将包含所有驾驶员和碰撞车辆的人口统计信息和车辆特征的模型与仅考虑受伤最严重驾驶员信息的模型在因素的显著性和预测准确性方面进行了比较。研究结果表明,尽管与工作年龄的司机相比,年轻司机的伤害严重程度可能较低,但如果年轻司机在多车碰撞中所占比例增加,伤害严重程度就会增加。被指无过错的司机往往比有过错的司机受伤更严重。最后,纳入所有驾驶员的人口统计信息表明,对最严重受伤驾驶员的碰撞严重程度的预测精度有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.00
自引率
15.40%
发文量
38
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