School of Civil Engineering and Transportation, South China University of Technology, Guangzhou, Guangdong, 510641, PR China; Department of Electrical Engineering, The Hong Kong Polytechnic University, Hong Kong Special Administrative Region, PR China.
Department of Electrical Engineering, The Hong Kong Polytechnic University, Hong Kong Special Administrative Region, PR China.
Accid Anal Prev. 2019 Jun;127:87-95. doi: 10.1016/j.aap.2019.02.029. Epub 2019 Mar 4.
This study develops a Bayesian spatial generalized ordered logit model with conditional autoregressive priors to examine severity of freeway crashes. Our model can simultaneously account for the ordered nature in discrete crash severity levels and the spatial correlation among adjacent crashes without fixing the thresholds between crash severity levels. The crash data from Kaiyang Freeway, China in 2014 are collected for the analysis, where crash severity levels are defined considering the combination of injury severity, financial loss, and numbers of injuries and deaths. We calibrate the proposed spatial model and compare it with a traditional generalized ordered logit model via Bayesian inference. The superiority of the spatial model is indicated by its better model fit and the statistical significance of the spatial term. Estimation results show that driver type, season, traffic volume and composition, response time for emergency medical services, and crash type have significant effects on crash severity propensity. In addition, vehicle type, season, time of day, weather condition, vertical grade, bridge, traffic volume and composition, and crash type have significant impacts on the threshold between median and severe crash levels. The average marginal effects of the contributing factors on each crash severity level are also calculated. Based on the estimation results, several countermeasures regarding driver education, traffic rule enforcement, vehicle and roadway engineering, and emergency services are proposed to mitigate freeway crash severity.
本研究开发了一种带有条件自回归先验的贝叶斯空间广义有序逻辑模型,以检验高速公路碰撞的严重程度。我们的模型可以同时考虑到离散碰撞严重程度水平的有序性质和相邻碰撞之间的空间相关性,而无需固定碰撞严重程度水平之间的阈值。我们收集了 2014 年中国凯阳高速公路的碰撞数据进行分析,其中碰撞严重程度水平是根据伤害严重程度、经济损失以及受伤和死亡人数的组合来定义的。我们对提出的空间模型进行校准,并通过贝叶斯推断将其与传统的广义有序逻辑模型进行比较。空间模型的优越性体现在其更好的模型拟合度和空间项的统计显著性上。估计结果表明,驾驶员类型、季节、交通量和组成、紧急医疗服务的响应时间以及碰撞类型对碰撞严重倾向有显著影响。此外,车辆类型、季节、一天中的时间、天气状况、垂直坡度、桥梁、交通量和组成以及碰撞类型对中度和严重碰撞水平之间的阈值有显著影响。还计算了各影响因素对每个碰撞严重程度水平的平均边际效应。基于估计结果,提出了一些针对驾驶员教育、交通规则执行、车辆和道路工程以及应急服务的对策,以减轻高速公路碰撞的严重程度。