Zhao Junyang, Yan Xingxu, Zhou Zhaofa, Zhang Zhili
Missile Engineering College, Rocket Force University of Engineering, Xi'an, 710025, China.
Sci Rep. 2025 Aug 26;15(1):31514. doi: 10.1038/s41598-025-15382-1.
Rapid advancements in autonomous driving technology have highlighted the challenges of ensuring vehicle safety and driving efficiency in complex dynamic traffic environments. Current approaches typically define potential risks as safety constraints for compliance and use them in trajectory planning. However, the risks predefined in these constraints are often fixed, reducing driving efficiency. To address this limitation, we proposed a dynamic risk-information-driven adaptive trajectory planning method for autonomous vehicles (AVs). This study dynamically adjusted safety constraints using risk assessment results to improve driving efficiency without compromising safety. Firstly, considering the influence of vehicle suspension characteristics on driving safety, collision, and instability risk assessment indices were designed using a three-way-coupled dynamic model to assess driving safety risks. Next, we used the safety risk assessment module to evaluate specific potential risks and adaptively adjusted the safety constraints for constraint-based adaptive trajectory planning. Furthermore, considering trajectory traversal constraints, trajectory selection and optimization were performed on pre-planned trajectories using the cost function to determine the optimal driving trajectory. Lane-changing trajectory planning experiments showed that the method adaptively adjusts safety constraints based on risk assessment results. Under the premise of ensuring driving safety, driving efficiency improved by 55.9% in the preset instability constraint scenario and 27.86% in the preset collision constraint scenario.
自动驾驶技术的快速发展凸显了在复杂动态交通环境中确保车辆安全和驾驶效率的挑战。当前方法通常将潜在风险定义为合规的安全约束条件,并将其用于轨迹规划。然而,这些约束条件中预先定义的风险往往是固定的,降低了驾驶效率。为了解决这一局限性,我们提出了一种用于自动驾驶车辆(AV)的动态风险信息驱动的自适应轨迹规划方法。本研究利用风险评估结果动态调整安全约束条件,以在不影响安全性的前提下提高驾驶效率。首先,考虑车辆悬架特性对驾驶安全的影响,使用三向耦合动态模型设计碰撞和不稳定风险评估指标,以评估驾驶安全风险。接下来,我们使用安全风险评估模块评估特定的潜在风险,并对基于约束的自适应轨迹规划的安全约束条件进行自适应调整。此外,考虑轨迹遍历约束,使用成本函数对预先规划的轨迹进行轨迹选择和优化,以确定最优驾驶轨迹。变道轨迹规划实验表明,该方法根据风险评估结果自适应调整安全约束条件。在确保驾驶安全的前提下,在预设不稳定约束场景下驾驶效率提高了55.9%,在预设碰撞约束场景下提高了27.86%。