Xia Qiu, Chen Long, Xu Xing, Cai Yingfeng, Jiang Haobin, Pan Guangxiang
School of Automotive and Traffic Engineering, Jiangsu University, Zhenjiang, China.
School of Mechanical and Electrical Engineering, Chunzhou University, Chuzhou, China.
Sci Prog. 2020 Jul-Sep;103(3):36850420934274. doi: 10.1177/0036850420934274.
Accurate and real-time position of preview point is significant to trajectory tracking control of vision-guided intelligent vehicle. The unavoidable delay of road automatic identification system weakens trajectory tracking control performance, and even deteriorates the vehicle stability. Therefore, a compensator for the delay of road automatic identification system was proposed which combines the current statistical model and adaptive Kalman predictor to estimate the state of preview point position. The trajectory tracking sliding mode controller of intelligent vehicle is established through a 2-degrees of freedom vehicle dynamic model and motion model by using MATLAB/Simulink and CarSim. The trajectory tracking performance under 20-100 ms delay is analyzed. The simulation results show that the trajectory tracking performance of intelligent vehicle will be affected by the delay of road automatic identification system, reducing tracking accuracy. And when the delay is too large, it will deteriorate the vehicle stability and safety. In addition, the simulation results also verify the effectiveness of current statistical-adaptive Kalman predictor compensator at different delays.
预览点的精确实时位置对于视觉引导智能车辆的轨迹跟踪控制具有重要意义。道路自动识别系统不可避免的延迟会削弱轨迹跟踪控制性能,甚至会降低车辆稳定性。因此,提出了一种道路自动识别系统延迟补偿器,该补偿器结合当前统计模型和自适应卡尔曼预测器来估计预览点位置状态。利用MATLAB/Simulink和CarSim,通过二自由度车辆动力学模型和运动模型建立了智能车辆的轨迹跟踪滑模控制器。分析了20 - 100 ms延迟下的轨迹跟踪性能。仿真结果表明,智能车辆的轨迹跟踪性能会受到道路自动识别系统延迟的影响,降低跟踪精度。当延迟过大时,会降低车辆稳定性和安全性。此外,仿真结果还验证了当前统计 - 自适应卡尔曼预测器补偿器在不同延迟情况下的有效性。