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Examining driver injury severity outcomes in rural non-interstate roadway crashes using a hierarchical ordered logit model

机译:使用分层有序logit模型检查农村非州际道路交通事故中驾驶员伤害的严重程度结果

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Rural non-interstate crashes induce a significant amount of severe injuries and fatalities. Examination of such injury patterns and the associated contributing factors is of practical importance. Taking into account the ordinal nature of injury severity levels and the hierarchical feature of crash data, this study employs a hierarchical ordered logit model to examine the significant factors in predicting driver injury severities in rural non-interstate crashes based on two-year New Mexico crash records. Bayesian inference is utilized in model estimation procedure and 95% Bayesian Credible Interval (BCI) is applied to testing variable significance. An ordinaryordered logit model omitting the between-crash variance effect is evaluated as well for model performance comparison. Results indicate that the model employed in this study outperforms ordinary ordered logit model in model fit and parameter estimation. Variables regarding crash features, environment conditions, and driver and vehicle characteristics are found to have significant influence on the predictions of driver injury severities in rural non-interstate crashes. Factors such as road segments far from intersection, wet road surface condition, collision with animals, heavy vehicle drivers, male drivers and driver seatbelt used tend to induce less severe driver injury outcomes than the factors such as multiple-vehicle crashes, severe vehicle damage in a crash, motorcyclists, females, senior drivers, driver with alcohol or drug impairment, and other major collision types. Research limitations regarding crash data and model assumptions are also discussed. Overall, this research provides reasonable results and insight in developing effective road safety measures for crash injury severity reduction and prevention. (C) 2016 Elsevier Ltd. All rights reserved.
机译:农村非州际撞车事故导致大量严重的人身伤亡。检查这种伤害模式和相关的影响因素具有实际意义。考虑到伤害严重程度的序数性质和碰撞数据的分层特征,本研究采用分层有序logit模型,以基于两年的新墨西哥州撞车事故,研究预测农村非州际碰撞中驾驶员伤害严重性的重要因素记录。在模型估计过程中利用贝叶斯推断,并使用95%贝叶斯可信区间(BCI)来检验变量的重要性。还评估了忽略碰撞间方差效应的普通有序logit模型,以进行模型性能比较。结果表明,在模型拟合和参数估计中,本研究中使用的模型优于常规有序logit模型。发现有关碰撞特征,环境条件以及驾驶员和车辆特性的变量对农村非州际碰撞中驾驶员伤害严重程度的预测具有重大影响。诸如远离交叉路口的路段,潮湿的路面状况,与动物的碰撞,重型车辆驾驶员,男性驾驶员和驾驶员安全带等因素往往比诸如多车碰撞,严重车辆损坏等因素引起的驾驶员伤害后果更轻。撞车,摩托车手,女性,高级驾驶员,患有酒精或毒品损害的驾驶员以及其他主要碰撞类型。还讨论了有关碰撞数据和模型假设的研究局限性。总体而言,这项研究为开发有效的道路安全措施以减少和预防碰撞伤害提供了合理的结果和见识。 (C)2016 Elsevier Ltd.保留所有权利。

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