曲线两阶段避障轨迹规划与轨迹跟踪控制研究

Baolong Hou, Qinyu Sun, Yingshi Guo
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引用次数: 0

摘要

现有的避障轨迹规划和轨迹跟踪控制算法存在耗时长、动态交通环境下故障率高、弯道轨迹跟踪精度不足等局限性。基于上述问题,本文设计了一种基于非线性优化理论的两阶段避障轨迹规划算法。在第一阶段 Part-NLP,只考虑安全避障,建立点质量模型和线性化约束,快速求解初始轨迹。在第二阶段 Full-NLP 中,综合考虑平滑软约束,通过建立行驶走廊和轻量级迭代框架来优化初始轨迹。在控制模块,本文选用线性二次方形式横向轨迹跟踪控制器,通过多肉植物算法对参数进行优化。联合仿真结果表明,在弯曲道路的动态交通环境中,所提出的两阶段规划器能准确规划安全平稳的避障轨迹,与传统的 NLP 算法相比,耗时明显减少。控制策略可以精确跟踪规划轨迹,横向误差控制在正负 0.1 m 以内,航向误差控制在正负 0.15 rad 以内,速度跟踪误差控制在正负 0.15 m/s 以内,车辆偏航角误差控制在正负 0.04 rad 以内;硬件在环测试结果表明,控制器可以实现实时、精确的轨迹跟踪。
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Research on two stage obstacle-avoidance trajectory planning and trajectory tracking control in curves
The existing obstacle-avoidance trajectory planning and trajectory tracking control algorithms have limitations such as long-time consumption, high failure rate in dynamic traffic environments, and insufficient trajectory tracking accuracy in curved roads. Based on the above problems, this paper designs a two stage obstacle-avoidance trajectory planner based on nonlinear optimization theory. In first stage Part-NLP, only considering the safety obstacle avoidance, a point mass model and linearization constraints are established to quickly solve the initial trajectory. In the second stage Full-NLP, considering smooth soft constraints comprehensively, the initial trajectory is optimized by establishing driving corridors and a lightweight iterative framework. In control module, this paper selects a linear quadratic form lateral trajectory tracking controller, and the parameters were optimized through the carnivorous plant algorithm. The joint simulation results show that in dynamic traffic environment of curved roads, the two stage planner proposed can accurately plan safe and smooth obstacle avoidance trajectories, and there is a significant reduction in time consumption compared to traditional NLP algorithms. The control strategy can accurately track the planned trajectories, with lateral error controlled within plus or minus 0.1 m, heading error controlled within plus or minus 0.15 rad, speed tracking error controlled within plus or minus 0.15 m/s, and vehicle yaw angle error controlled within plus or minus 0.04 rad; the hardware-in-loop test results indicate that the controller can achieve real-time and accurate trajectory tracking.
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来源期刊
CiteScore
4.40
自引率
17.60%
发文量
263
审稿时长
3.5 months
期刊介绍: The Journal of Automobile Engineering is an established, high quality multi-disciplinary journal which publishes the very best peer-reviewed science and engineering in the field.
期刊最新文献
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