As a key indicator of unsafe driving, driving volatility characterizes the variations in microscopic driving decisions. This study characterizes volatility in longitudinal and lateral driving decisions and examines the links between driving volatility in time to collision and crash injury severity. By using a unique real-world naturalistic driving database from the 2nd Strategic Highway Research Program (SHRP), a test set of 671 crash events featuring around 0.2 million temporal samples of real world driving are analyzed. Based on different driving performance measures, 16 different volatility indices are created. To explore the relationships between crash-injury severity outcomes and driving volatility, the volatility indices are then linked with individual crash events including information on crash severity, drivers' pre crash maneuvers and behaviors, secondary tasks and durations, and other factors. As driving volatility prior to crash involvement can have different components, an indepth analysis is conducted using the aggregate as well as segmented (based on time to collision) real world driving data. To account for the issues of observed and unobserved heterogeneity, fixed and random parameter logit models with heterogeneity in parameter means and variances are estimated. The empirical results offer important insights regarding how driving volatility in time to collision relates to crash severity outcomes. Overall, statistically significant positive correlations are found between the aggregate (as well as segmented) volatility measures and crash severity outcomes. The findings suggest that greater driving volatility (both in longitudinal and lateral direction) in time to collision increases the likelihood of police reportable or most severe crash events... ...
翻译:作为不安全驾驶的一个关键指标,驾驶的波动性是微型驾驶决定变化的特征。本研究将纵向和横向驾驶决定的波动性定性为纵向和横向驾驶决定的波动性,并审查碰撞和碰撞伤害严重程度之间驱动性波动之间的联系。利用第二个战略高速公路研究方案(SHRP)的一个独特的真实的自然自然驱动数据库,对一套671起碰撞事件进行了测试,其中包括大约20万个时间样本的20万次真实世界驾驶物,根据不同的驾驶性业绩衡量标准,产生了16个不同的波动性指数。为了探讨碰撞伤害性严重性结果与驱动力波动之间的关系,随后将波动性指数与个别碰撞事件事件联系起来,包括关于碰撞严重性、驾驶者前的动作和行为、次要任务和期限以及其他因素的信息。鉴于碰撞前的波动性变化性可能具有不同的构成部分,因此,利用总和(基于碰撞时间的间隔)真实世界驱动力数据来进行深入分析。考虑到观察到的和无法观测到的异常性、固定性和随机性参数的log性逻辑性模型与参数的高度性和差异性,然后将估算出关于撞击性变化性最强烈的概率性统计结果。