Lateral stability regulation of intelligent electric vehicle based on model predictive control

Cong Li;Yun Feng Xie;Gang Wang;Xian Feng Zeng;Hui Jing
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引用次数: 7

Abstract

Purpose - This paper studies the lateral stability regulation of intelligent electric vehicle (EV) based on model predictive control (MPC) algorithm. Design/methodology/approach - Firstly, the bicycle model is adopted in the system modelling process. To improve the accuracy, the lateral stiffness of front and rear tire is estimated using the real-time yaw rate acceleration and lateral acceleration of the vehicle based on the vehicle dynamics. Then the constraint of input and output in the model predictive controller is designed. Soft constraints on the lateral speed of the vehicle are designed to guarantee the solved persistent feasibility and enforce the vehicle's sideslip angle within a safety range. Findings - The simulation results show that the proposed lateral stability controller based on the MPC algorithm can improve the handling and stability performance of the vehicle under complex working conditions. Originality/value - The MPC schema and the objective function are established. The integrated active front steering/direct yaw moments control strategy is simultaneously adopted in the model. The vehicle's sideslip angle is chosen as the constraint and is controlled in stable range. The online estimation of tire stiffness is performed. The vehicle's lateral acceleration and the yaw rate acceleration are modelled into the two-degree-of-freedom equation to solve the tire cornering stiffness in real time. This can ensure the accuracy of model.
基于模型预测控制的智能电动汽车横向稳定性调节
目的——本文研究了基于模型预测控制(MPC)算法的智能电动汽车(EV)的横向稳定性调节。设计/方法/方法-首先,在系统建模过程中采用自行车模型。为了提高精度,基于车辆动力学,使用车辆的实时横摆角速度加速度和横向加速度来估计前后轮胎的横向刚度。然后设计了模型预测控制器的输入和输出约束。设计了对车辆横向速度的软约束,以确保解决的持久可行性,并使车辆的侧滑角在安全范围内。研究结果-仿真结果表明,所提出的基于MPC算法的横向稳定性控制器可以提高车辆在复杂工况下的操纵性和稳定性。独创性/价值-建立了MPC模式和目标函数。该模型同时采用了集成的主动前转向/直接横摆力矩控制策略。选择车辆的侧滑角作为约束,并将其控制在稳定范围内。进行轮胎刚度的在线估计。将车辆的横向加速度和横摆角速度加速度建模为两自由度方程,实时求解轮胎转弯刚度。这样可以保证模型的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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