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一种基于驾驶安全场的动态避障路径规划方法。

A Dynamic Path-Planning Method for Obstacle Avoidance Based on the Driving Safety Field.

作者信息

Liu Ke, Wang Honglin, Fu Yao, Wen Guanzheng, Wang Binyu

机构信息

State Key Laboratory of Automotive Simulation and Control, Jilin University, Changchun 130022, China.

出版信息

Sensors (Basel). 2023 Nov 14;23(22):9180. doi: 10.3390/s23229180.

Abstract

Establishing an accurate and computationally efficient model for driving risk assessment, considering the influence of vehicle motion state and kinematic characteristics on path planning, is crucial for generating safe, comfortable, and easily trackable obstacle avoidance paths. To address this topic, this paper proposes a novel dual-layered dynamic path-planning method for obstacle avoidance based on the driving safety field (DSF). The contributions of the proposed approach lie in its ability to address the challenges of accurately modeling driving risk, efficient path smoothing and adaptability to vehicle kinematic characteristics, and providing collision-free, curvature-continuous, and adaptable obstacle avoidance paths. In the upper layer, a comprehensive driving safety field is constructed, composed of a potential field generated by static obstacles, a kinetic field generated by dynamic obstacles, a potential field generated by lane boundaries, and a driving field generated by the target position. By analyzing the virtual field forces exerted on the ego vehicle within the comprehensive driving safety field, the resultant force direction is utilized as guidance for the vehicle's forward motion. This generates an initial obstacle avoidance path that satisfies the vehicle's kinematic and dynamic constraints. In the lower layer, the problem of path smoothing is transformed into a standard quadratic programming (QP) form. By optimizing discrete waypoints and fitting polynomial curves, a curvature-continuous and smooth path is obtained. Simulation results demonstrate that our proposed path-planning algorithm outperforms the method based on the improved artificial potential field (APF). It not only generates collision-free and curvature-continuous paths but also significantly reduces parameters such as path curvature (reduced by 62.29% to 87.32%), curvature variation rate, and heading angle (reduced by 34.11% to 72.06%). Furthermore, our algorithm dynamically adjusts the starting position of the obstacle avoidance maneuver based on the vehicle's motion state. As the relative velocity between the ego vehicle and the obstacle vehicle increases, the starting position of the obstacle avoidance path is adjusted accordingly, enabling the proactive avoidance of stationary or moving single and multiple obstacles. The proposed method satisfies the requirements of obstacle avoidance safety, comfort, and stability for intelligent vehicles in complex environments.

摘要

考虑车辆运动状态和运动学特性对路径规划的影响,建立一个准确且计算高效的驾驶风险评估模型,对于生成安全、舒适且易于跟踪的避障路径至关重要。为解决这一问题,本文提出了一种基于驾驶安全场(DSF)的新型双层动态避障路径规划方法。该方法的贡献在于能够应对准确建模驾驶风险、高效路径平滑以及适应车辆运动学特性等挑战,并提供无碰撞、曲率连续且适应性强的避障路径。在上层,构建了一个综合驾驶安全场,它由静态障碍物产生的势场、动态障碍物产生的动力场、车道边界产生的势场以及目标位置产生的驱动场组成。通过分析综合驾驶安全场内施加在自车的虚拟场力,合力方向被用作车辆向前运动的引导。这生成了一条满足车辆运动学和动力学约束的初始避障路径。在下层,路径平滑问题被转化为标准二次规划(QP)形式。通过优化离散航路点并拟合多项式曲线,获得一条曲率连续且平滑的路径。仿真结果表明,我们提出的路径规划算法优于基于改进人工势场(APF)的方法。它不仅生成无碰撞且曲率连续的路径,还显著降低了诸如路径曲率(降低62.29%至87.32%)、曲率变化率和航向角(降低34.11%至72.06%)等参数。此外,我们的算法根据车辆的运动状态动态调整避障动作的起始位置。随着自车与障碍车辆之间的相对速度增加,避障路径的起始位置相应调整,从而能够主动避开静止或移动的单个及多个障碍物。所提出的方法满足了复杂环境下智能车辆避障安全性、舒适性和稳定性的要求。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9bb0/10675226/ec93bbc7c5c4/sensors-23-09180-g001.jpg

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