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A Bayesian Network model for contextual versus non-contextual driving behavior assessment

机译:用于上下文和非上下文驾驶行为评估的贝叶斯网络模型

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Driving behavior is generally considered to be one of the most important factors in crash occurrence. This paper aims to evaluate the benefits of utilizing context-relevant information in the driving behavior assessment process (i.e. contextual driving behavior assessment approach). We use a Bayesian Network (BN) model that investigates the relationships between GPS driving observations, individual driving behavior, individual driving risks, and individual crash frequency. In contrast to prior studies without context information (i.e. non-contextual approach), the data used in the BN approach is a combination of contextual features in the surrounding environment that may contribute to crash risk, such as road conditions surrounding the vehicle of interest and dynamic traffic flow information, as well as the non-contextual data such as instantaneous driving speed and the acceleration/deceleration of a vehicle. An information-aggregation mechanism is developed to aggregates massive amounts of vehicle GPS data points, kinematic events and context information into drivel-level data. With the proposed model, driving behavior risks for drivers is assessed and the relationship between contextual driving behavior and crash occurrence is established. The analysis results in the case study section show that the contextual model has significantly better performance than the non-contextual model, and that drivers who drive at a speed faster than others or much slower than the speed limit at the ramp, and with more rapid acceleration or deceleration on freeways are more likely to be involved in crash events. In addition, younger drivers, and female drivers with higher VMT are found to have higher crash risk. (C) 2017 Elsevier Ltd. All rights reserved.
机译:驾驶行为通常被认为是发生碰撞的最重要因素之一。本文旨在评估在驾驶行为评估过程中使用上下文相关信息的好处(即上下文驾驶行为评估方法)。我们使用贝叶斯网络(BN)模型来调查GPS驾驶观测,个人驾驶行为,个人驾驶风险和个人碰撞频率之间的关系。与没有上下文信息(即非上下文方法)的先前研究相比,BN方法中使用的数据是周围环境中上下文特征的组合,可能会导致碰撞风险,例如目标车辆周围的路况和动态交通流信息以及非上下文数据(例如瞬时行驶速度和车辆的加/减速)。开发了一种信息汇总机制,以将大量的车辆GPS数据点,运动事件和上下文信息汇总到驱动级别的数据中。利用提出的模型,评估了驾驶员的驾驶行为风险,并建立了上下文驾驶行为与碰撞发生之间的关系。案例研究部分的分析结果表明,与非上下文模型相比,上下文模型具有明显更好的性能,并且驾驶员以比其他人更快的速度或比坡道上的速度限制慢得多的速度驾驶,并且速度更快高速公路上的加速或减速更容易发生碰撞事件。此外,发现年轻驾驶员和具有较高VMT的女性驾驶员的碰撞风险更高。 (C)2017 Elsevier Ltd.保留所有权利。

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