Pulsar Informatics, Inc., United States.
Sleep and Performance Research Center, Washington State University, United States.
Accid Anal Prev. 2019 May;126:142-145. doi: 10.1016/j.aap.2018.03.004. Epub 2018 Apr 3.
Fatigue causes decrements in vigilant attention and reaction time and is a major safety hazard in the trucking industry. There is a need to quantify the relationship between driver fatigue and safety in terms of operationally relevant measures. Hard-braking events are a suitable measure for this purpose as they are relatively easily observed and are correlated with collisions and near-crashes. We developed an analytic approach that predicts driver fatigue based on a biomathematical model and then estimates hard-braking events as a function of predicted fatigue, controlling for time of day to account for systematic variations in exposure (traffic density). The analysis used de-identified data from a previously published, naturalistic field study of 106 U.S. commercial motor vehicle (CMV) drivers. Data analyzed included drivers' official duty logs, sleep patterns measured around the clock using wrist actigraphy, and continuous recording of vehicle data to capture hard-braking events. The curve relating predicted fatigue to hard-braking events showed that the frequency of hard-braking events increased as predicted fatigue levels worsened. For each increment on the fatigue scale, the frequency of hard-braking events increased by 7.8%. The results provide proof of concept for a novel approach that predicts fatigue based on drivers' sleep patterns and estimates driving performance in terms of an operational metric related to safety. The approach can be translated to practice by CMV operators to achieve a fatigue risk profile specific to their own settings, in order to support data-driven decisions about fatigue countermeasures that cost-effectively deliver quantifiable operational benefits.
疲劳会降低警觉性注意力和反应时间,是卡车运输行业的主要安全隐患。需要用操作性相关措施来量化驾驶员疲劳与安全之间的关系。急刹车事件是一种合适的衡量标准,因为它们相对容易观察,并且与碰撞和险些碰撞有关。我们开发了一种分析方法,该方法基于生物数学模型预测驾驶员疲劳,然后根据预测的疲劳程度估计急刹车事件,同时控制一天中的时间,以考虑暴露(交通密度)的系统变化。该分析使用了之前发表的一项自然主义实地研究中 106 名美国商用机动车(CMV)驾驶员的匿名数据。分析的数据包括驾驶员的官方值班日志、使用腕部动作记录仪全天候测量的睡眠模式,以及连续记录车辆数据以捕捉急刹车事件。预测疲劳与急刹车事件之间的关系曲线表明,随着预测疲劳水平的恶化,急刹车事件的频率增加。在疲劳量表上每增加一个等级,急刹车事件的频率就会增加 7.8%。研究结果为一种基于驾驶员睡眠模式预测疲劳并根据与安全相关的操作指标估计驾驶性能的新方法提供了概念验证。CMV 运营商可以将该方法转化为实践,为其自身环境制定特定的疲劳风险概况,以支持针对疲劳对策的基于数据的决策,这些对策可以有效地提供可量化的运营效益。