Department of Civil Engineering, Central Tehran Branch, Islamic Azad University (IAUCTB), Tehran, Iran.
Department of Civil Engineering, Sharif University of Technology, Tehran, Iran.
Accid Anal Prev. 2018 Sep;118:277-288. doi: 10.1016/j.aap.2018.05.003. Epub 2018 Jun 1.
According to crash configuration and pre-crash conditions, traffic crashes are classified into different collision types. Based on the literature, multi-vehicle crashes, such as head-on, rear-end, and angle crashes, are more frequent than single-vehicle crashes, and most often result in serious consequences. From a methodological point of view, the majority of prior studies focused on multivehicle collisions have employed univariate count models to estimate crash counts separately by collision type. However, univariate models fail to account for correlations which may exist between different collision types. Among others, multivariate Poisson lognormal (MVPLN) model with spatial correlation is a promising multivariate specification because it not only allows for unobserved heterogeneity (extra-Poisson variation) and dependencies between collision types, but also spatial correlation between adjacent sites. However, the MVPLN spatial model has rarely been applied in previous research for simultaneously modelling crash counts by collision type. Therefore, this study aims at utilizing a MVPLN spatial model to estimate crash counts for four different multi-vehicle collision types, including head-on, rear-end, angle, and sideswipe collisions. To investigate the performance of the MVPLN spatial model, a two-stage model and a univariate Poisson lognormal model (UNPLN) spatial model were also developed in this study. Detailed information on roadway characteristics, traffic volume, and crash history were collected on 407 homogeneous segments from Malaysian federal roads. The results indicate that the MVPLN spatial model outperforms the other comparing models in terms of goodness-of-fit measures. The results also show that the inclusion of spatial heterogeneity in the multivariate model significantly improves the model fit, as indicated by the Deviance Information Criterion (DIC). The correlation between crash types is high and positive, implying that the occurrence of a specific collision type is highly associated with the occurrence of other crash types on the same road segment. These results support the utilization of the MVPLN spatial model when predicting crash counts by collision manner. In terms of contributing factors, the results show that distinct crash types are attributed to different subsets of explanatory variables.
根据碰撞配置和碰撞前条件,交通事故被分为不同的碰撞类型。根据文献,多车碰撞,如正面碰撞、追尾碰撞和侧面碰撞,比单车碰撞更频繁,而且往往导致更严重的后果。从方法学的角度来看,大多数先前的研究都集中在多车碰撞上,使用单变量计数模型分别按碰撞类型估计碰撞次数。然而,单变量模型无法解释不同碰撞类型之间可能存在的相关性。在其他方面,具有空间相关性的多变量泊松对数正态(MVPLN)模型是一种很有前途的多变量规范,因为它不仅允许存在未观察到的异质性(额外泊松变异)和碰撞类型之间的依赖性,而且还允许相邻地点之间的空间相关性。然而,MVPLN 空间模型在以前的研究中很少用于同时对不同的多车碰撞类型的碰撞次数进行建模。因此,本研究旨在利用 MVPLN 空间模型来估计四种不同的多车碰撞类型(正面碰撞、追尾碰撞、侧面碰撞和擦撞)的碰撞次数。为了研究 MVPLN 空间模型的性能,本研究还开发了两阶段模型和单变量泊松对数正态(UNPLN)空间模型。在马来西亚联邦道路上的 407 个同质路段上收集了详细的道路特征、交通量和碰撞历史信息。结果表明,在拟合优度度量方面,MVPLN 空间模型优于其他比较模型。结果还表明,在多变量模型中纳入空间异质性显著提高了模型拟合度,如差异信息准则(DIC)所示。碰撞类型之间的相关性很高且为正,这表明特定碰撞类型的发生与同一道路段上其他碰撞类型的发生高度相关。这些结果支持在按碰撞方式预测碰撞次数时使用 MVPLN 空间模型。就影响因素而言,结果表明,不同的碰撞类型归因于不同的解释变量子集。