Speeding has been acknowledged as a critical determinant in increasing the risk of crashes and their resulting injury severities. This paper demonstrates that severe speeding-related crashes within the state of Pennsylvania have a spatial clustering trend, where four crash datasets are extracted from four hotspot districts. Two log-likelihood ratio (LR) tests were conducted to determine whether speeding-related crashes classified by hotspot districts should be modeled separately. The results suggest that separate modeling is necessary. To capture the unobserved heterogeneity, four correlated random parameter order models with heterogeneity in means are employed to explore the factors contributing to crash severity involving at least one vehicle speeding. Overall, the findings exhibit that some indicators are observed to be spatial instability, including hit pedestrian crashes, head-on crashes, speed limits, work zones, light conditions (dark), rural areas, older drivers, running stop signs, and running red lights. Moreover, drunk driving, exceeding the speed limit, and being unbelted present relative spatial stability in four district models. This paper provides insights into preventing speeding-related crashes and potentially facilitating the development of corresponding crash injury mitigation policies.
翻译:超速被认为是增加事故风险及其导致的伤害严重性的关键因素。本文证明了宾夕法尼亚州内严重超速相关事故存在空间聚集趋势,其中提取了来自四个热点区域的四个事故数据集。进行了两次对数似然比(LR)检验,以确定是否应分别对按热点区域分类的超速相关事故进行建模。结果表明,需要进行分开的建模。为捕捉未观察到的异质性,采用了具有均值异质性的四个相关随机参数排序模型来探讨至少涉及一辆车超速的事故严重程度的影响因素。总的来说,结果表明,一些指标呈现出空间不稳定性,包括撞人事故,正面碰撞,限速,工作区域,照明条件(黑暗),农村地区,老年驾驶员,闯停车标志和闯红灯。此外,醉酒驾驶、超速行驶和未系安全带在四个区域模型中相对空间稳定。本文为预防超速相关事故提供了洞见,可能有助于制定相应的事故伤害减轻政策。