Department of Civil and Environmental Engineering, Transportation Informatics Lab, Old Dominion University (ODU), 4635 Hampton Boulevard, Norfolk, VA 23529, USA.
Department of Computational Modeling & Simulation Engineering, Old Dominion University (ODU), 4700 Elkhorn Ave, Norfolk, VA 23529, USA.
Accid Anal Prev. 2022 Jul;172:106687. doi: 10.1016/j.aap.2022.106687. Epub 2022 Apr 27.
Risky driving behaviors such as speeding and failing to signal have been witnessed more frequently during the COVID-19 pandemic, resulting in higher rates of severe crashes. This study aims to investigate how the COVID-19 pandemic impacts the likelihood of severe crashes via changing driving behaviors. Multigroup structural equation modeling (SEM) is used to capture the complex interrelationships between crash injury severity, the context of COVID-19, driving behaviors, and other risk factors for two different groups, i.e., highways and non-highways. The SEM constructs two latent variables, namely aggressiveness and inattentiveness, which are indicated by risk driving behaviors such as speeding, drunk driving, and distraction. One great advantage of SEM is that the measurement of latent variables and interrelationship modeling can be achieved simultaneously in one statistical estimation procedure. Group differences between highways and non-highways are tested using different equality constraints and multigroup SEM with equal regressions can deliver the augmented performance. The smaller severity threshold for the highway group indicates that it is more likely that a crash could involve severe injuries on highways as compared to those on non-highways. Results suggest that aggressiveness and inattentiveness of drivers increased significantly after the outbreak of COVID-19, leading to a higher likelihood of severe crashes. Failing to account for the indirect effect of COVID-19 via changing driving behaviors, the conventional probit model suggests an insignificant impact of COVID-19 on crash severity. Findings of this study provide insights into the effect of changing driving behaviors on safety during disruptive events like COVID-19.
在 COVID-19 大流行期间,人们观察到超速和不打信号灯等危险驾驶行为更为频繁,导致严重碰撞事故的发生率更高。本研究旨在通过改变驾驶行为来调查 COVID-19 大流行如何影响严重碰撞事故的可能性。多组结构方程模型(SEM)用于捕捉事故伤害严重程度、COVID-19 背景、驾驶行为和其他危险因素之间的复杂相互关系,针对高速公路和非高速公路两个不同群体。SEM 构建了两个潜在变量,即攻击性和注意力不集中,由超速、酒后驾车和分心等危险驾驶行为表示。SEM 的一个很大优势是可以在一个统计估计过程中同时实现潜在变量的测量和相互关系建模。使用不同的相等约束和具有相等回归的多组 SEM 来测试高速公路和非高速公路之间的组间差异,可以提高模型的表现。对于高速公路组,严重程度的阈值较小,这表明与非高速公路相比,高速公路上的碰撞更有可能导致严重伤害。结果表明,COVID-19 爆发后,驾驶员的攻击性和注意力不集中显著增加,导致严重碰撞事故的可能性更高。由于未能通过改变驾驶行为来考虑 COVID-19 的间接影响,传统的概率模型表明 COVID-19 对碰撞严重程度的影响并不显著。本研究的结果提供了有关在 COVID-19 等破坏性事件期间,驾驶行为变化对安全的影响的见解。