Lin Chenhui, Li Boyuan, Siampis Efstathios, Longo Stefano, Velenis Efstathios
Advanced Vehicle Engineering Centre, Cranfield University, Bedford MK43 0AL, UK.
Research Center for Intelligent Transportation, Zhejiang Lab, Hangzhou 311121, China.
Sensors (Basel). 2024 Feb 28;24(5):1566. doi: 10.3390/s24051566.
This paper presents the development of path-tracking control strategies for an over-actuated autonomous electric vehicle. The vehicle platform is equipped with four-wheel steering (4WS) as well as torque vectoring (TV) capabilities, which enable the control of vehicle dynamics to be enhanced. A nonlinear model predictive controller is proposed taking into account the nonlinearities in vehicle dynamics at the limits of handling as well as the crucial actuator constraints. Controllers with different actuation formulations are presented and compared to study the path-tracking performance of the vehicle with different levels of actuation. The controllers are implemented in a high-fidelity simulation environment considering scenarios of vehicle handling limits. According to the simulation results, the vehicle achieves the best overall path-tracking performance with combined 4WS and TV, which illustrates that the over-actuation topology can enhance the path-tracking performance during conditions under the limits of handling. In addition, the performance of the over-actuation controller is further assessed with different sampling times as well as prediction horizons in order to investigate the effect of such parameters on the control performance, and its capability for real-time execution. In the end, the over-actuation control strategy is implemented on a target machine for real-time validation. The control formulation proposed in this paper is proven to be compatible with different levels of actuation, and it is also demonstrated in this work that it is possible to include the particular over-actuation formulation and specific nonlinear vehicle dynamics in real-time operation, with the sampling time and prediction time providing a compromise between path-tracking performance and computational time.
本文介绍了一种过驱动自主电动汽车路径跟踪控制策略的发展。该车辆平台配备了四轮转向(4WS)以及扭矩矢量控制(TV)功能,这使得车辆动力学控制得以增强。考虑到车辆在操控极限时动力学的非线性以及关键的执行器约束,提出了一种非线性模型预测控制器。给出并比较了具有不同驱动方式的控制器,以研究车辆在不同驱动水平下的路径跟踪性能。在考虑车辆操控极限场景的高保真仿真环境中实现了这些控制器。根据仿真结果,车辆在4WS和TV相结合的情况下实现了最佳的整体路径跟踪性能,这表明过驱动拓扑结构可以在操控极限条件下提高路径跟踪性能。此外,还针对不同的采样时间和预测时域对过驱动控制器的性能进行了进一步评估,以研究这些参数对控制性能的影响及其实时执行能力。最后,在目标机器上实现了过驱动控制策略以进行实时验证。本文提出的控制方式被证明与不同水平的驱动兼容,并且在这项工作中还表明,在实时运行中纳入特定的过驱动方式和特定的非线性车辆动力学是可能的,采样时间和预测时间在路径跟踪性能和计算时间之间提供了一种折衷。