Collaborative Sciences Center for Road Safety, School of Urban and Regional Planning, Florida Atlantic University, 777 Glades Road, SO 376, Boca Raton, 33431, FL, United States.
Department of Civil and Environmental Engineering, Florida International University, 10555 West Flagler Street, EC 3680, Miami, 33174, FL, United States.
Accid Anal Prev. 2018 Sep;118:166-177. doi: 10.1016/j.aap.2018.02.014. Epub 2018 Feb 22.
The objective of this study was to investigate the relationship between bicycle crash frequency and their contributing factors at the census block group level in Florida, USA. Crashes aggregated over the census block groups tend to be clustered (i.e., spatially dependent) rather than randomly distributed. To account for the effect of spatial dependence across the census block groups, the class of conditional autoregressive (CAR) models were employed within the hierarchical Bayesian framework. Based on four years (2011-2014) of crash data, total and fatal-and-severe injury bicycle crash frequencies were modeled as a function of a large number of variables representing demographic and socio-economic characteristics, roadway infrastructure and traffic characteristics, and bicycle activity characteristics. This study explored and compared the performance of two CAR models, namely the Besag's model and the Leroux's model, in crash prediction. The Besag's models, which differ from the Leroux's models by the structure of how spatial autocorrelation are specified in the models, were found to fit the data better. A 95% Bayesian credible interval was selected to identify the variables that had credible impact on bicycle crashes. A total of 21 variables were found to be credible in the total crash model, while 18 variables were found to be credible in the fatal-and-severe injury crash model. Population, daily vehicle miles traveled, age cohorts, household automobile ownership, density of urban roads by functional class, bicycle trip miles, and bicycle trip intensity had positive effects in both the total and fatal-and-severe crash models. Educational attainment variables, truck percentage, and density of rural roads by functional class were found to be negatively associated with both total and fatal-and-severe bicycle crash frequencies.
本研究旨在探讨美国佛罗里达州自行车碰撞频率及其致因在普查区块组水平上的关系。普查区块组内的碰撞往往呈聚集(即空间相关)分布,而不是随机分布。为了说明普查区块组之间空间相关性的影响,在层次贝叶斯框架内采用条件自回归(CAR)模型类。基于四年(2011-2014 年)的碰撞数据,将总碰撞和致命/重伤自行车碰撞频率建模为代表人口统计学和社会经济特征、道路基础设施和交通特征以及自行车活动特征的大量变量的函数。本研究探讨并比较了两种 CAR 模型(Besag 模型和 Leroux 模型)在碰撞预测中的性能。Besag 模型与 Leroux 模型的不同之处在于模型中指定空间自相关结构的方式,发现前者更适合数据。选择 95%贝叶斯可信区间来识别对自行车碰撞有可信影响的变量。在总碰撞模型中发现有 21 个变量是可信的,而在致命/重伤碰撞模型中发现有 18 个变量是可信的。人口、每日车辆行驶里程、年龄组、家庭汽车拥有量、按功能类别划分的城市道路密度、自行车出行里程和自行车出行强度对总碰撞和致命/重伤碰撞模型都有正向影响。教育程度变量、卡车比例和按功能类别划分的农村道路密度与总碰撞和致命/重伤自行车碰撞频率呈负相关。