Domina Ádám, Tihanyi Viktor
Department of Automotive Technologies, Budapest University of Technology and Economics, 1111 Budapest, Hungary.
Sensors (Basel). 2022 Aug 3;22(15):5807. doi: 10.3390/s22155807.
In this paper, a linear time-varying model predictive controller (LTV-MPC) is proposed for automated vehicle path-following applications. In the field of path following, the application of nonlinear MPCs is becoming more common; however, the major disadvantage of this algorithm is the high computational cost. During this research, the authors propose two methods to reduce the nonlinear terms: one is a novel method to define the path-following problem by transforming the path according to the actual state of the vehicle, while the other one is the application of a successive linearization technique to generate the state-space representation of the vehicle used for state prediction by the MPC. Furthermore, the dynamic effect of the steering system is examined as well by modeling the steering dynamics with a first-order lag. Using the proposed method, the necessary segment of the predefined path is transformed, the linearized model of the vehicle is calculated, and the optimal steering control vector is calculated for a finite horizon at every timestep. The longitudinal dynamics of the vehicle are controlled separately from the lateral dynamics by a PI cruise controller. The performance of the controller is evaluated and the effect of the steering model is examined as well.
本文针对自动驾驶车辆路径跟踪应用提出了一种线性时变模型预测控制器(LTV-MPC)。在路径跟踪领域,非线性MPC的应用越来越普遍;然而,该算法的主要缺点是计算成本高。在本研究中,作者提出了两种减少非线性项的方法:一种是通过根据车辆的实际状态变换路径来定义路径跟踪问题的新方法,另一种是应用逐次线性化技术来生成用于MPC状态预测的车辆状态空间表示。此外,还通过用一阶滞后对转向动力学进行建模来研究转向系统的动态效应。使用所提出的方法,对预定义路径的必要段进行变换,计算车辆的线性化模型,并在每个时间步为有限时域计算最优转向控制向量。车辆的纵向动力学由PI巡航控制器与横向动力学分开控制。对控制器的性能进行了评估,并研究了转向模型的效果。