College of Transportation Engineering, Tongji University, Shanghai, 201804, China; The Key Laboratory of Road and Traffic Engineering, Ministry of Education, Shanghai, 201804, China; National Engineering Laboratory for Integrated Optimization of Road Traffic and Safety Analysis Technologies, 88 Qianrong Rd, Wuxi 214151, China.
College of Transportation Engineering, Tongji University, Shanghai, 201804, China; National Engineering Laboratory for Integrated Optimization of Road Traffic and Safety Analysis Technologies, 88 Qianrong Rd, Wuxi 214151, China.
Accid Anal Prev. 2019 Jul;128:8-16. doi: 10.1016/j.aap.2019.03.009. Epub 2019 Apr 5.
The Manchester Driver Behavior Questionnaire (DBQ) identifies risky driving behaviors resulting from psychological mechanisms. Investigating the relationships between these behaviors and drivers' crash risk can provide a better understanding of the personal factors contributing to the incidence of crashes, allowing the more effective development of safety education and road management countermeasures and interventions. The objectives of this study are therefore: 1) to determine the extent to which driver involvement in both crashes and near crashes (CNCs) is related to self-reported driving behaviors, and 2) to assess the relationship between each type of risky behavior and individual driver CNC risk. Driver and crash data were acquired from the Shanghai Naturalistic Driving Study and included 45 males and 12 females, participants with the mean age of 38.7. A K-mean cluster method was adopted to classify participants into three CNC groups of high-, moderate- and low-risk drivers. Drivers completed the DBQ to self-evaluate the frequency during their daily driving of the questionnaire's 24 risky behaviors. Principal component analysis of the 24 items led to a five-component structure including aggressive violations, ordinary violations, lapses, inattention errors, and inexperience errors. Two logistic regression models were developed to investigate the correlation between the five DBQ components and drivers' CNC levels. Conclusions are as follows: 1) high-risk drivers were significantly more likely to have engaged in inattention errors (e.g., missing a "yield" sign) and ordinary violations (e.g., running a red light) than the other drivers, and, 2) aggressive violations (e.g., racing against others) and ordinary violations were positively related to the probability of being a high- or moderate-risk driver.
曼彻斯特驾驶行为问卷 (DBQ) 识别出由心理机制导致的危险驾驶行为。研究这些行为与驾驶员碰撞风险之间的关系,可以更好地了解导致碰撞发生的个人因素,从而更有效地制定安全教育和道路管理对策和干预措施。因此,本研究的目的是:1)确定驾驶员在碰撞和接近碰撞(CNC)中的参与程度与自我报告的驾驶行为之间的关系,以及 2)评估每种危险行为与个体驾驶员 CNC 风险之间的关系。驾驶员和碰撞数据来自上海自然驾驶研究,包括 45 名男性和 12 名女性,参与者的平均年龄为 38.7 岁。采用 K-均值聚类方法将参与者分为高、中、低风险驾驶员三个 CNC 组。驾驶员完成 DBQ 以自我评估问卷中 24 种危险行为在日常驾驶中的频率。对 24 个项目进行主成分分析,得出包括攻击性违规、普通违规、失误、注意力不集中错误和缺乏经验错误在内的五组件结构。建立了两个逻辑回归模型来研究 DBQ 五个组件与驾驶员 CNC 水平之间的相关性。结论如下:1)高风险驾驶员在注意力不集中错误(例如,错过“让路”标志)和普通违规(例如,闯红灯)方面明显更有可能参与,并且 2)攻击性违规(例如,与他人比赛)和普通违规与成为高风险或中风险驾驶员的概率呈正相关。