Dynamic Planning of Optimally-safe Lane-change Trajectory for Autonomous Driving on Multi-lane Highways Using a Fuzzy Logic based Collision Estimator

Omveer Sharma, N. C. Sahoo, Niladri B. Puhan
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Abstract

The collision avoidance system in an autonomous vehicle, intended to address traffic safety issues, has a crucial function called collision estimation. It accomplishes this by identifying potential dangers and notifying the drivers in advance or by using autonomous control to navigate safely. In this work, a novel approach is proposed for generating and selecting a lane change trajectory for the vehicle in a driving scenario where two vehicles are simultaneously executing lane change processes on highways and approaching the same target lane. Moreover, a novel fuzzy logic estimator based on time-to-collision (TTC) and time-to-gap (TTG) is designed to estimate the collision risk. In the collision avoidance process, the proposed estimator is utilized to determine the risk of a collision with polynomial function-based generation of possible lane change trajectories. The safest lane change trajectory is then provided to the motion controller so that it can navigate the vehicle safely through such a challenging lane change scenario. This work also investigates Stanley and Pure Pursuit controllers to follow the optimized trajectory. The simulation experiment results demonstrate that the proposed approach for dynamic trajectory generation during the lane change process can successfully handle this type of challenging situation and prevent a potential collision. Experimental results also indicate that monitoring the movement of the nearby lane-changing vehicle is crucial for safe lane change execution and that the proposed approach successfully handles the challenging situation preventing potential collision.
基于模糊碰撞估计器的多车道自动驾驶最优安全变道轨迹动态规划
自动驾驶汽车的避碰系统旨在解决交通安全问题,其中有一个关键功能叫做碰撞估计。它通过识别潜在危险并提前通知驾驶员或使用自动控制来安全导航来实现这一目标。在此工作中,提出了一种新的方法,用于在两辆车同时在高速公路上执行变道过程并接近同一目标车道的驾驶场景中,为车辆生成和选择变道轨迹。此外,设计了一种基于碰撞时间(TTC)和间隙时间(TTG)的模糊逻辑估计器来估计碰撞风险。在避碰过程中,利用基于多项式函数的可能变道轨迹生成来确定碰撞风险。然后将最安全的变道轨迹提供给运动控制器,使其能够安全地驾驶车辆通过这种具有挑战性的变道场景。本工作还研究了Stanley和Pure Pursuit控制器遵循优化轨迹的问题。仿真实验结果表明,本文提出的变道过程动态轨迹生成方法能够有效地处理这类复杂情况,防止潜在的碰撞。实验结果还表明,监测附近变道车辆的运动对安全变道执行至关重要,该方法成功地处理了防止潜在碰撞的挑战性情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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