现代制造工程 ›› 2025, Vol. 542 ›› Issue (11): 48-56.doi: 10.16731/j.cnki.1671-3133.2025.11.007

• 车辆工程制造技术 • 上一篇    下一篇

基于视觉的局部优化模糊PID控制策略*

陈哲明, 刘岩松, 杨鑫, 刘国栋   

  1. 重庆理工大学车辆工程学院,重庆 400000
  • 收稿日期:2025-01-15 出版日期:2025-11-18 发布日期:2025-11-27
  • 通讯作者: 刘岩松,硕士研究生,主要研究方向为视觉融合、线控底盘和智能悬架。E-mail:2809686296@qq.com
  • 作者简介:陈哲明,博士,教授,主要研究方向为车辆系统动力学及控制研究、汽车线控底盘控制。E-mail:84134694@qq.com
  • 基金资助:
    *重庆市教育委员会科学技术研究计划青年项目资助项目(KJQN202101143)

Vision-information-based local optimization fuzzy PID control strategy

CHEN Zheming, LIU Yansong, YANG Xin, LIU Guodong   

  1. School of Vehicle Engineering, Chongqing University of Technology, Chongqing 400000, China
  • Received:2025-01-15 Online:2025-11-18 Published:2025-11-27

摘要: 传统悬架系统需要在车辆受到道路激励后起减振作用,存在不能主动提前适应路况变化与悬架执行器动作时滞的缺点,为此设计了一种基于视觉的局部优化模糊PID控制策略。首先,建立视觉识别模块、道路激励模块和通信平台;然后,基于以上信息识别、传输与融合路面,设计了基于视觉的局部优化模糊PID控制策略;最后,利用仿真模型,在由C级、D级路面及单减速带、多减速带组合的4种不同路面激励下分别对车辆的不同控制策略进行验证,结果表明,基于视觉的局部优化模糊PID控制策略相较于被动悬架、PID控制策略和模糊PID控制策略,车身垂向加速度在单减速带C级路面激励下分别降低了32.4 %、23.4 %和11.7 %;在单减速带D级路面激励下分别降低了32.4 %、21.9 %和8.1 %;在多减速带C级路面激励下分别降低了32.2 %、23.4 %和10.8 %;在多减速带D级路面激励下分别降低了31.0 %、21.4 %和7.4 %。

关键词: 视觉信息, 随机路面激励模型, 视觉信息调节控制

Abstract: Traditional suspension systems can only mitigate vibrations after the vehicle receives road excitation, suffering from the drawbacks of an inability to proactively adapt to road condition changes in advance and time delays in the actuation of suspension actuators. To address these issues, a vision-based locally optimized fuzzy PID control strategy is proposed. Firstly, a visual recognition module, a road excitation module, and a communication platform are established. Subsequently, leveraging the information from road surface identification, transmission, and fusion, a vision-based locally optimized fuzzy PID control strategy is designed. Finally, through simulation modeling, the performance of different vehicle control strategies is validated under four distinct road excitation scenarios, including Class C and Class D road surfaces, as well as combinations of single and multiple speed bumps. The results demonstrate that, compared to passive suspension, PID control, and fuzzy PID control strategies, the proposed vision-based locally optimized fuzzy PID control strategy reduces the vertical acceleration RMS of the vehicle body by 32.4 %, 23.4 %, and 11.7 %, respectively, under Class C road excitation with a single speed bump; by 32.4 %, 21.9 %, and 8.1 %, respectively, under Class D road excitation with a single speed bump; by 32.2 %, 23.4 %, and 10.8 %, respectively, under Class C road excitation with multiple speed bumps; and by 31.0 %, 21.4 %, and 7.4 %, respectively, under Class D road excitation with multiple speed bumps.

Key words: visual information, stochastic pavement excitation model, visual information regulation and control

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