Zou Teng'an, You Yulong, Meng Hao, Chang Yukang
College of Intelligent Science, National University of Defense Technology, Changsha 410073, China.
College of Automation Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing 211106, China.
Biomimetics (Basel). 2022 Dec 12;7(4):238. doi: 10.3390/biomimetics7040238.
For the multi-objective control problem of tracking effect and vehicle stability in the path tracking process of six-wheel distributed unmanned vehicles, a control strategy based on hierarchical control (HC) theory is proposed. A hierarchical kinematic model is designed considering the structural advantages of independent steering and independent driving of the unmanned vehicle, and this model is applied to the path tracking strategy. The strategy is divided into two levels of control. The upper level of control is to use the upper-level kinematic model as the prediction model of model predictive control (MPC), and to convert the solution problem of future control increments into the optimal solution problem of quadratic programming by setting the optimal objective function and constraints. The lower level of control is to map the optimal control quantities obtained from the upper level control to the six-wheel speeds and the four-wheel turning angles through the lower-level kinematics, and to design the six-wheel torque distribution rules based on deterministic torque and stability-based slip rate control for executing the control requirements of the upper level controller to prevent the unmanned vehicle from generating sideslip and precisely generating transverse moment to ensure the stable driving of the unmanned vehicle. Experiments were conducted on the Trucksim/Simulink simulation platform for a variety of road conditions, and the results showed that hierarchical control improved the accuracy of tracking the desired path and the driving stability on complex road surfaces more than MPC.
针对六轮分布式无人车辆路径跟踪过程中的跟踪效果与车辆稳定性多目标控制问题,提出一种基于分层控制(HC)理论的控制策略。考虑到无人车辆独立转向和独立驱动的结构优势,设计了一种分层运动学模型,并将其应用于路径跟踪策略。该策略分为两级控制。上层控制是以上层运动学模型作为模型预测控制(MPC)的预测模型,通过设置最优目标函数和约束条件,将未来控制增量的求解问题转化为二次规划的最优解问题。下层控制是通过下层运动学将上层控制得到的最优控制量映射到六轮速度和四轮转向角上,并基于确定性扭矩和基于稳定性的滑移率控制设计六轮扭矩分配规则,以执行上层控制器的控制要求,防止无人车辆产生侧滑并精确产生横向力矩,确保无人车辆稳定行驶。在Trucksim/Simulink仿真平台上针对多种路况进行了实验,结果表明,分层控制比MPC在跟踪期望路径的精度和复杂路面上的行驶稳定性方面有更大提升。