Insight into individual driving behavior and habits is essential in traffic operation, safety, and energy management. With Connected Vehicle (CV) technology aiming to address all three of these, the identification of driving patterns is a necessary component in the design of personalized Advanced Driver Assistance Systems (ADAS) for CVs. Our study aims to address this need by taking a unique approach to analyzing bidirectional (i.e. longitudinal and lateral) control features of drivers, using a simple rule-based classification process to group their driving behaviors and habits. We have analyzed high resolution driving data from the real-world CV-testbed, Safety Pilot Model Deployment, in Ann Arbor, Michigan, to identify diverse driving behavior on freeway, arterial, and ramp road types. Using three vehicular features known as jerk, leading headway, and yaw rate, driving characteristics are classified into two groups (Safe Driving and Hostile Driving) on short-term classification, and drivers habits are categorized into three classes (Calm Driver, Rational Driver, and Aggressive Driver). Proposed classification models are tested on unclassified datasets to validate the model conviction regarding speeding and steep acceleration. Through the proposed method, behavior classification has been successfully identified about 90 percent of speeding and similar level of acute acceleration instances. In addition, our study advances an ADAS interface that interacts with drivers in real-time in order to transform information about driving behaviors and habits into feedback to individual drivers. We propose an adaptive and flexible classification approach to identify both short-term and long-term driving behavior from naturalistic driving data to identify and, eventually, communicate adverse driving behavioral patterns.
翻译:在交通业务、安全和能源管理中,必须深入了解个人驾驶行为和习惯。由于连接车辆(CV)技术旨在解决所有这三种问题,因此识别驾驶模式是设计个人化高级司机协助系统(ADAS)为CV设计中的必要组成部分。我们的研究旨在通过采用独特的方法,分析驾驶员的双向(即长视和横向)控制特征,利用简单的基于规则的分类程序,将驾驶员的驾驶行为和习惯归类为三类。我们分析了来自现实世界CV测试床、安全试点模型部署、在密歇根州安阿伯尔的Ann Arbor的高分辨率驱动数据,以确定高速公路、动脉型和坡道道路类型上的各种驾驶行为。我们的研究旨在解决这一需要,采用独特的方法,分析驾驶员的双向(即长视和横向)控制特征,利用简单的分类,利用简单的分类,将驾驶习惯分为三个类别(Calmrial Driver、逻辑驱动师和反向驱动力驱动师),我们的拟议分类模型在不定期的加速和加速性动作上都测试了一种不固定的动态,在快速的动作上,在加速和快速分析中,在快速分析中也测试了一种关于加速和快速分析。</s>