用于自动清扫车的 CL-FDAPF 轨迹规划器和 FO-LADRC 运动控制器

Dequan Zeng, Yiming Hu, Tianfu Ai, Chengcheng Liang, Yiquan Yu, Zhiqiang Jiang
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引用次数: 0

摘要

针对不确定性干扰,提出了一种用于自主清扫车的闭环前向仿真滤波双层人工势场(CL-FDAPF)轨迹规划器和一阶线性主动干扰抑制控制(FO-LADRC)运动控制器,以保证规划的实时性和安全性。首先,这里采用了由传统势能成本层和安全水平层组成的双层人工势能场,以保持规划实时性、满足安全限制和操作要求,并针对车辆动态约束进行了均值滤波和闭环正演仿真的后处理。其次,由于系统状态观测存在不可避免的不确定性和不可避免的环境干扰,自主清扫车无法建立精确的数学模型,因此值得开发具有适应不确定性能力的主动干扰抑制控制策略。第三,设计了几个典型场景,以验证所提算法的实时性和可靠性。结果表明,CL-FDAPF 计划器具有很高的实时性和稳定性,在 1000 次循环中,峰值时间小于 0.045 秒,平均时间约为 0.02 秒;FO-LADRC 控制器在轮距和转向比不确定的情况下都具有鲁棒性,因为与现有的两种方法相比,FO-LADRC 具有更小的横向误差。
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CL-FDAPF trajectory planner and FO-LADRC motion controller for autonomous sweeper vehicle
Aiming at keeping safe in time and addressing disturbance of uncertainty, an closed loop forward simulation filtering double-layer artificial potential field (CL-FDAPF) trajectory planner and first order linear active disturbance rejective control (FO-LADRC) motion controller are proposed for autonomous sweeper vehicle. Firstly, the double-layer artificial potential field, which consists of traditional potential cost layer and safe level layer, is adopted here to keep planning realtime, meet safe limitations and satisfy operational requirements, and the postprocessing of mean filtering and closed loop forward simulation is for vehicle dynamic constraints. Secondly, it is worth developing active disturbance rejection control strategy, which has the ability to accommodate uncertainty, since an accurate mathematical model of autonomous sweeper vehicle is unavailable as there being inevitable uncertainties in the system state observation and unavoidable environmental disturbances. Thirdly, several typical scenarios are designed in order to verify the real-time and reliability of the proposed algorithm. The results illustrate that the CL-FDAPF planner has highly real-time and stability as the peak time less than 0.045 s and mean time being about 0.02 s in 1000 cycles, and FO-LADRC controller has robust both at uncertainty of wheelbase and steering ratio, since the FO-LADRC have smaller lateral errors compared with two existing methods.
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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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