Effectiveness of the Autonomous Braking and Evasive Steering System OPREVU-AES in Simulated Vehicle-to-Pedestrian Collisions

Ángel Losada, Francisco Javier Páez, Francisco Luque, Luca Piovano
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Abstract

This paper proposes a combined system (OPREVU-AES) that integrates optimized AEB and Automatic Emergency Steering (AES) to generate evasive maneuvers, and it provides an assessment of its effectiveness when compared to a commercial AEB system. The optimized AEB system regulates the braking response through a collision prediction model. OPREVU is a research project in which INSIA-UPM and CEDINT-UPM cooperate to improve driving assistance systems and to characterize pedestrians’ behavior through virtual reality (VR) techniques. The kinematic and dynamic analysis of OPREVU-AES is conducted using CarSim© software v2020.1. The avoidance trajectories are predefined for speeds above 40 km/h, which controls the speed and lateral stability during the overtaking and lane re-entry process. In addition, the decision algorithm integrates information from the lane and the blind spot detectors. The effectiveness evaluation is based on the reconstruction of a sample of vehicle-to-pedestrian crashes (INSIA-UPM database), using PCCrash© software v. 2013, and it considers the probability of head injury severity (ISP) as an indicator. The incorporation of AEB can avoid 53.8% of accidents, with an additional 2.5–3.5% avoided by incorporating automatic steering. By increasing the lateral activation range, the total avoidance rate is increased to 61.8–69.8%. The average ISP reduction is 65%, with significant reductions achieved in most cases where avoidance is not possible.
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自动制动与避碰转向系统OPREVU-AES在模拟车人碰撞中的有效性
本文提出了一种组合系统(OPREVU-AES),该系统集成了优化的AEB和自动紧急转向(AES)来产生规避机动,并将其与商用AEB系统进行了比较,评估了其有效性。优化后的AEB系统通过碰撞预测模型调节制动响应。OPREVU是INSIA-UPM和CEDINT-UPM合作的一个研究项目,旨在改进驾驶辅助系统,并通过虚拟现实(VR)技术表征行人的行为。使用CarSim©软件v2020.1对OPREVU-AES进行运动学和动力学分析。避让轨迹是为超过40公里/小时的速度预先设定的,它可以控制超车和重新进入车道过程中的速度和横向稳定性。此外,该决策算法还集成了车道和盲点检测器的信息。有效性评估基于车辆与行人碰撞样本(inisa - upm数据库)的重建,使用PCCrash©软件v. 2013,并考虑头部损伤严重程度(ISP)的概率作为指标。安装AEB可避免53.8%的事故,安装自动转向可避免2.5-3.5%的事故。通过增加横向激活范围,总回避率提高到61.8-69.8%。ISP平均减少65%,在大多数不可能避免的情况下实现了显着减少。
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