Chen Cong, Zhang Guohui, Tian Zong, Bogus Susan M, Yang Yin
Department of Civil Engineering, University of New Mexico, Albuquerque, NM 87131, USA.
Department of Civil Engineering, University of New Mexico, Albuquerque, NM 87131, USA.
Accid Anal Prev. 2015 Dec;85:186-98. doi: 10.1016/j.aap.2015.09.005. Epub 2015 Oct 8.
Traffic crashes occurring on rural roadways induce more severe injuries and fatalities than those in urban areas, especially when there are trucks involved. Truck drivers are found to suffer higher potential of crash injuries compared with other occupational labors. Besides, unobserved heterogeneity in crash data analysis is a critical issue that needs to be carefully addressed. In this study, a hierarchical Bayesian random intercept model decomposing cross-level interaction effects as unobserved heterogeneity is developed to examine the posterior probabilities of truck driver injuries in rural truck-involved crashes. The interaction effects contributing to truck driver injury outcomes are investigated based on two-year rural truck-involved crashes in New Mexico from 2010 to 2011. The analysis results indicate that the cross-level interaction effects play an important role in predicting truck driver injury severities, and the proposed model produces comparable performance with the traditional random intercept model and the mixed logit model even after penalization by high model complexity. It is revealed that factors including road grade, number of vehicles involved in a crash, maximum vehicle damage in a crash, vehicle actions, driver age, seatbelt use, and driver under alcohol or drug influence, as well as a portion of their cross-level interaction effects with other variables are significantly associated with truck driver incapacitating injuries and fatalities. These findings are helpful to understand the respective or joint impacts of these attributes on truck driver injury patterns in rural truck-involved crashes.
与城市道路相比,乡村道路上发生的交通事故会导致更严重的伤亡,尤其是涉及卡车的事故。研究发现,与其他职业劳动者相比,卡车司机遭遇碰撞受伤的可能性更高。此外,碰撞数据分析中未观察到的异质性是一个需要谨慎处理的关键问题。在本研究中,我们开发了一种分层贝叶斯随机截距模型,将跨层次交互效应分解为未观察到的异质性,以检验乡村涉及卡车的碰撞事故中卡车司机受伤的后验概率。基于2010年至2011年新墨西哥州为期两年的乡村涉及卡车的碰撞事故,对导致卡车司机受伤结果的交互效应进行了研究。分析结果表明,跨层次交互效应在预测卡车司机受伤严重程度方面起着重要作用,并且即使在因模型复杂度高而受到惩罚后,所提出的模型与传统随机截距模型和混合logit模型仍具有相当的性能。研究发现,包括道路坡度、碰撞事故中涉及的车辆数量、碰撞事故中的最大车辆损坏程度、车辆行为、司机年龄、安全带使用情况以及受酒精或药物影响的司机等因素,以及它们与其他变量的部分跨层次交互效应,都与卡车司机的致残性伤害和死亡显著相关。这些发现有助于理解这些属性对乡村涉及卡车的碰撞事故中卡车司机受伤模式的各自或联合影响。