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Examination of driver injury severity in freeway single-vehicle crashes using a mixed logit model with heterogeneity-in-means

机译:使用具有异质性的混合Logit模型,使用混合登记模型检查高速公路单车崩溃的驾驶员伤害严重程度

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The study presented in this paper thoroughly investigated factors influencing driver injury severity in freeway single-vehicle crashes. Crash data from 2013 to 2017 for freeways in Heilongjiang Province, China was used. Elements of driver characteristics, environmental factors, roadway attributes and crash characteristics were considered. A heterogeneity-in-means mixed logit model was developed as an alternative to the frequently used multinomial logit model and mixed logit model to fully account for unobserved heterogeneity, particularly the heterogeneity resulting from driver characteristics. Results indicated that the mixed logit model with heterogeneity-in-means can provide a superior goodness-of-fit and offer more insights into factors of driver injury severities. By allowing means of random parameters in mixed logit model to be estimated functions of driver characteristics, a more general model structure for deeply tracking unobserved heterogeneity was constructed, and thereby the interactive effects between driver characteristics and other factors on driver injury severity were uncovered, such as: (1) female and senior drivers, darkness without lighting, collision with barriers or piers, lane-changing or merging maneuvers tend to increase the injury severity of drivers; (2) an experienced driver was associated with low probability of severe injuries: (3) low visibility could reduce injury severity, especially for experienced drivers; (4) a concrete barrier could aggravate the injury severity for senior drivers in particular. This study provided an insightful knowledge of mechanism of driver injury severity in single-vehicle crashes, and should be beneficial to develop corresponding effective countermeasures for protect drivers from being severely injured. (C) 2019 Elsevier B.V. All rights reserved.
机译:本文介绍了本文彻底调查的因素,影响高速公路单车崩溃的驾驶员伤害严重程度。中国2013年至2017年从2013年到2017年在黑龙江省的高速公路中使用。考虑了驾驶员特征,环境因素,道路属性和碰撞特征的要素。非均质性混合的Logit模型被开发为常用的多项式Lo​​git模型和混合Logit模型的替代方案,以完全占据不观察到的异质性,特别是由驾驶员特性产生的异质性。结果表明,具有异质性的混合Logit模型可以提供优异的适合性,并为驾驶员伤害严重程度提供更多的见解。通过允许混合Logit模型中的随机参数的方法来估计驾驶员特性的估计功能,构建了一种更普通跟踪不观察到的异质性的型号结构,从而揭示了驾驶员特性与驾驶员损伤严重程度上的其他因素之间的交互效果。 AS:(1)女性和高级司机,无光度的黑暗,与障碍物或码头的碰撞,车道变化或合并机动往往会增加司机的伤害严重程度; (2)经验丰富的司机与严重伤害的低概率有关:(3)低知名度可能会减少伤害严重程度,特别是对于经验丰富的司机; (4)具体障碍可以特别为高级司机加重伤害严重程度。本研究提供了对单车祸中驾驶员伤害严重程度的洞察力知识,并且应该有利于制定相应的有效对策,以保护司机免受严重受伤。 (c)2019 Elsevier B.v.保留所有权利。

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