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Driving risk assessment using cluster analysis based on naturalistic driving data

机译:使用基于自然驾驶数据的聚类分析进行驾驶风险评估

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In addition to the real traffic accident data, naturalistic driving data can allow researchers gain insights into the factors that cause risk/hazard situations. This paper considers a comprehensive naturalistic driving experiment to collect detailed driving data on actual Chinese roads. Using acquired real-world driving data, a near-crash database is built, which contains vehicle status, potential crash object, driving environment and road type, and weather condition. K-means cluster analysis is applied to classify the near-crash cases into different driving risk levels using braking process features, namely maximum deceleration, average deceleration and percentage reduction in the vehicle kinetic energy. The results indicate that the velocity when braking and triggering factors have strong relationship with the driving risk level involved in near-crash cases.
机译:除了真实的交通事故数据之外,自然驾驶数据还可以使研究人员深入了解导致风险/危险情况的因素。本文考虑了一个全面的自然主义驾驶实验,以收集实际中国道路上的详细驾驶数据。利用获取的现实驾驶数据,建立了一个近碰撞数据库,该数据库包含车辆状态,潜在的碰撞对象,行驶环境和道路类型以及天气状况。使用K均值聚类分析,通过制动过程特征(即最大减速度,平均减速度和车辆动能减少百分比)将近碰撞情况分类为不同的驾驶风险等级。结果表明,制动时的速度和触发因素与接近碰撞情况下的驾驶风险水平有很强的关系。

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