Model and Parameter Adaptive MPC Path Tracking Control Study of Rear-Wheel-Steering Agricultural Machinery

Meng Wang, Changhe Niu, Zifan Wang, Yongxin Jiang, Jianming Jian, Xiuying Tang
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Abstract

To further enhance the precision and the adaptability of path tracking control, and considering that most of the research is focused on front-wheel steering, an adaptive parametric model predictive control (MPC) was proposed for rear-wheel-steering agricultural machinery. Firstly, the kinematic and dynamic models of rear-wheel-steering agricultural machinery were established. Secondly, the influence laws of curvature and velocity on the prediction horizon Np, control horizon Nc, and preview value Npre were obtained by simulating and analyzing the factors influencing the MPC tracking effect. The results revealed that raising Npre can improve curve tracking performance. Np was correlated negatively with the curvature change, whereas Nc and Npre were positively connected. Np, Nc, and Npre were correlated positively with the velocity change. Then, the parameters for self-adaptation of Np, Nc, and Npre were accomplished via fuzzy control (FC), and particle swarm optimization (PSO) was utilized to optimize the three parameters to determine the optimal parameter combination. Finally, simulation and comparative analysis were conducted to assess the tracking effects of the manual tuning MPC, the FC_MPC, and the PSO_MPC under U-shaped and complex curve paths. The results indicated that there was no significant difference and all three methods achieved better tracking effects under no disturbance, with the mean absolute value of lateral error ≤0.18 cm, standard deviation ≤0.37 cm, maximum deviation of U-shaped path <2.38 cm, and maximum deviation of complex curve path <3.15 cm. The mean absolute value of heading error was ≤0.0096 rad, the standard deviation was ≤0.0091 rad, and the maximum deviation was <0.0325 rad, indicating that manual tuning can find optimal parameters, but with high uncertainty and low efficiency. However, FC_MPC and PSO_MPC have better adaptability and tracking performance compared to the manual tuning MPC with fixed horizons under variable-speed disturbance and are more able to meet the actual needs of agricultural machinery operations.
后轮转向农业机械的模型和参数自适应 MPC 路径跟踪控制研究
为了进一步提高路径跟踪控制的精度和适应性,考虑到大多数研究都集中在前轮转向方面,提出了一种适用于后轮转向农业机械的自适应参数模型预测控制(MPC)。首先,建立了后轮转向农业机械的运动学和动力学模型。其次,通过模拟和分析影响 MPC 跟踪效果的因素,得出了曲率和速度对预测范围 Np、控制范围 Nc 和预览值 Npre 的影响规律。结果表明,提高 Npre 可以改善曲线跟踪性能。Np 与曲率变化呈负相关,而 Nc 和 Npre 则呈正相关。Np、Nc 和 Npre 与速度变化呈正相关。然后,通过模糊控制(FC)实现了 Np、Nc 和 Npre 的自适应参数,并利用粒子群优化(PSO)对这三个参数进行优化,以确定最佳参数组合。最后,进行了仿真和比较分析,以评估手动调整 MPC、FC_MPC 和 PSO_MPC 在 U 形和复杂曲线路径下的跟踪效果。结果表明,三种方法在无干扰情况下均取得了较好的跟踪效果,横向误差绝对值均值≤0.18 cm,标准偏差≤0.37 cm,U 形路径最大偏差<2.38 cm,复曲线路径最大偏差<3.15 cm。航向误差绝对值均值≤0.0096rad,标准偏差≤0.0091rad,最大偏差<0.0325rad,说明人工调谐可以找到最优参数,但不确定性大,效率低。但在变速扰动下,FC_MPC 和 PSO_MPC 与人工调谐 MPC 相比,具有更好的适应性和跟踪性能,更能满足农机作业的实际需要。
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