Time-to-Collision-Aware Lane-Change Strategy Based on Potential Field and Cubic Polynomial for Autonomous Vehicles

Pengfei Lin, E. Javanmardi, Ye Tao, Vishal Chauhan, Jin Nakazato, Manabu Tsukada
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Abstract

Making safe and successful lane changes (LCs) is one of the many vitally important functions of autonomous vehicles (AVs) that are needed to ensure safe driving on expressways. Recently, the simplicity and real-time performance of the potential field (PF) method have been leveraged to design decision and planning modules for AVs. However, the LC trajectory planned by the PF method is usually lengthy and takes the ego vehicle laterally parallel and close to the obstacle vehicle, which creates a dangerous situation if the obstacle vehicle suddenly steers. To mitigate this risk, we propose a time-to-collision-aware LC (TTCA-LC) strategy based on the PF and cubic polynomial in which the TTC constraint is imposed in the optimized curve fitting. The proposed approach is evaluated using MATLAB/Simulink under high-speed conditions in a comparative driving scenario. The simulation results indicate that the TTCA-LC method performs better than the conventional PF-based LC (CPF-LC) method in generating shorter, safer, and smoother trajectories. The length of the LC trajectory is shortened by over 27.1%, and the curvature is reduced by approximately 56.1% compared with the CPF-LC method.
基于势场和三次多项式的自动驾驶汽车碰撞时间感知变道策略
安全、成功地变道(lc)是自动驾驶汽车(AVs)的众多至关重要的功能之一,它需要确保在高速公路上的安全驾驶。近年来,势场法的简单性和实时性被广泛应用于自动驾驶汽车决策和规划模块的设计。然而,用PF方法规划的LC轨迹通常很长,并且自我车辆横向平行并靠近障碍车辆,如果障碍车辆突然转向,会造成危险的情况。为了降低这种风险,我们提出了一种基于PF和三次多项式的碰撞时间感知LC (TTCA-LC)策略,其中在优化曲线拟合中施加TTC约束。利用MATLAB/Simulink对该方法进行了高速工况下的对比驾驶测试。仿真结果表明,TTCA-LC方法在生成更短、更安全、更平滑的轨迹方面优于传统的基于pf的LC (CPF-LC)方法。与CPF-LC方法相比,LC轨迹长度缩短了27.1%以上,曲率减小了约56.1%。
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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