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Human-Like Lane Change Decision Model for Autonomous Vehicles that Considers the Risk Perception of Drivers in Mixed Traffic

机译:考虑混合驾驶中驾驶员风险感知的自动驾驶类人车道变更决策模型

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摘要

Determining an appropriate time to execute a lane change is a critical issue for the development of Autonomous Vehicles (AVs).However, few studies have considered the rear and the front vehicle-driver’s risk perception while developing a human-like lane-change decision model. This paper aims to develop a lane-change decision model for AVs and to identify a two level threshold that conforms to a driver’s perception of the ability to safely change lanes with a rear vehicle approaching fast. Based on the signal detection theory and extreme moment trials on a real highway, two thresholds of safe lane change were determined with consideration of risk perception of the rear and the subject vehicle drivers, respectively. The rear vehicle’s Minimum Safe Deceleration (MSD) during the lane change maneuver of the subject vehicle was selected as the lane change safety indicator, and was calculated using the proposed human-like lane-change decision model. The results showed that, compared with the driver in the front extreme moment trial, the driver in the rear extreme moment trial is more conservative during the lane change process. To meet the safety expectations of the subject and rear vehicle drivers, the primary and secondary safe thresholds were determined to be 0.85 m/s and 1.76 m/s , respectively. The decision model can help make AVs safer and more polite during lane changes, as it not only improves acceptance of the intelligent driving system, but also further ensures the rear vehicle’s driver’s safety.
机译:确定合适的执行车道变更时间是自动驾驶汽车发展的关键问题,然而,很少有研究在开发类似人的车道变更决策模型时考虑后方和前方驾驶员的风险感知。本文旨在开发一种用于自动驾驶汽车的车道变更决策模型,并确定一个符合驾驶员对后车快速驶近时安全变更车道能力的认识的两级阈值。基于信号检测理论和在真实高速公路上的极限力矩试验,分别考虑了后方和目标车辆驾驶员的风险感知,确定了安全车道变更的两个阈值。选择目标车辆在换道时的后方车辆的最小安全减速度(MSD)作为换道安全指标,并使用拟议的类似人的换道决策模型进行计算。结果表明,与前极端时刻试验中的驾驶员相比,后极端时刻试验中的驾驶员在换道过程中更为保守。为了满足目标驾驶员和后方车辆驾驶员的安全期望,主要和次要安全阈值分别确定为0.85 m / s和1.76 m / s。决策模型不仅可以提高对智能驾驶系统的接受度,而且可以进一步确保后方车辆驾驶员的安全,从而有助于在改变车道时使自动驾驶汽车更安全,更礼貌。

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