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Investigation of driver injury severities in rural single-vehicle crashes under rain conditions using mixed logit and latent class models

机译:使用混合Logit模型和隐性模型研究雨天农村单车事故中驾驶员伤害的严重程度

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摘要

Due to limited visibility and low skid resistance on road surface, single-vehicle crashes under rain conditions, especially those occurred in rural areas, are more likely to result in driver incapacitating injuries and fatalities. A three-year crash dataset including all rural single-vehicle crashes under rain conditions from 2012 to 2014 in four South Central states, i.e., Texas, Arkansas, Oklahoma, and Louisiana, are selected in this paper to analyze the impact factors on driver injury severity. The mixed logit model (MLM) and the latent class model (LCM) are developed on the same dataset. Several parsimony indices, e.g., AIC and BIC, and as well as McFadden pseudo r-squared, are calculated for all the models to evaluate their respective performance. Results show that choosing the uniform distribution as the prior for random parameters could better improve the goodness-of-fit of the MLM than using normal and lognormal distributions. In addition, the two-class LCM also shows superiority when compared to three- and four-class LCMs. Finally, a careful comparison between these two models is conducted, and the results indicate that the LCM has a slightly better performance in analyzing the aforementioned dataset in this study. Model estimation results show that curve, on grade, signal control, multiple lanes, pickup, straight, drug/alcohol impaired, and seat belt not used can significantly increase the probability of incapacitating injuries and fatalities for drivers in the two models. On the other hand, wet, male, semi-trailer, and young can significantly decrease the probability of incapacitating injuries and fatalities for drivers. This study provides an insightful understanding of the effects of these attributes on rural single-vehicle crashes under rain conditions and beneficial references for developing effective countermeasures for severe injury prevention.
机译:由于能见度有限且在路面上的防滑性低,在雨天条件下,尤其是在农村地区发生的单车事故更容易导致驾驶员丧失工作能力并造成死亡。本文选择了一个三年的碰撞数据集,包括2012年至2014年在中南部四个州(德克萨斯州,阿肯色州,俄克拉荷马州和路易斯安那州)在降雨条件下的所有农村单车事故,以分析对驾驶员伤害的影响因素严重性。混合logit模型(MLM)和潜在类模型(LCM)在同一数据集上开发。为所有模型计算了几个简约指数,例如AIC和BIC以及McFadden伪r平方,以评估它们各自的性能。结果表明,与使用正态分布和对数正态分布相比,选择均匀分布作为随机参数的先验可以更好地改善MLM的拟合优度。此外,与三级和四级LCM相比,两级LCM也显示出优越性。最后,在这两个模型之间进行了仔细的比较,结果表明,在本研究中,LCM在分析上述数据集方面具有更好的性能。模型估计结果表明,在两个模型中,坡度,信号控制,多车道,上车,直行,药物/酒精受损以及不使用安全带的曲线会显着增加驾驶员丧失致死能力和致死率的可能性。另一方面,潮湿的,男性的,半挂车的和年轻的可以大大降低驾驶员致残和致死的可能性。这项研究提供了对这些属性对雨天下的农村单车事故的影响的深刻理解,并为制定预防严重伤害的有效对策提供了有益的参考。

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