Implementation of MPC-Based Trajectory Tracking Considering Different Fidelity Vehicle Models

Shuping Chen, Huiyan Chen, D. Negrut
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引用次数: 9

Abstract

In order to investigate how model fidelity in the formulation of model predictive control(MPC) algorithm affects the path tracking performance, a bicycle model and an 8 degrees of freedom(DOF) vehicle model, as well as a 14-DOF vehicle model were employed to implement the MPC-based path tracking controller considering the constraints of input limit and output admissibility by using a lower fidelity vehicle model to control a higher fidelity vehicle model. In the MPC controller, the nonlinear vehicle model was linearized and discretized for state prediction and vehicle heading angle, lateral position and longitudinal position were chosen as objectives in the cost function. The wheel step steering and sine wave steering responses between the developed vehicle models and the Carsim model were compared for validation before implementing the model predictive path tracking control. The simulation results of trajectory tracking considering an 8-shaped curved reference path were presented and compared when the prediction model and the plant were changed. The results show that the trajectory tracking errors are small and the tracking performances of the proposed controller considering different complexity vehicle models are good in the curved road environment. Additionally, the MPC-based controller formulated with a high-fidelity model performs better than that with a low-fidelity model in the trajectory tracking.
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考虑不同保真度车辆模型的mpc轨迹跟踪实现
为了研究模型预测控制(MPC)算法中模型保真度对路径跟踪性能的影响,采用自行车模型、8自由度(DOF)车辆模型和14自由度(DOF)车辆模型,采用低保真度车辆模型控制高保真度车辆模型,考虑输入限制和输出允许约束,实现了基于MPC的路径跟踪控制器。在MPC控制器中,对非线性车辆模型进行线性化和离散化以进行状态预测,并在代价函数中选择车辆航向角、横向位置和纵向位置作为目标。在实现模型预测路径跟踪控制之前,将所开发的车辆模型与Carsim模型之间的车轮阶跃转向和正弦波转向响应进行了比较验证。给出了考虑8形曲线参考路径的轨迹跟踪仿真结果,并比较了预测模型和目标改变时的轨迹跟踪仿真结果。结果表明,该控制器在考虑不同复杂度车辆模型的情况下,轨迹跟踪误差较小,在弯曲道路环境下具有良好的跟踪性能。此外,采用高保真度模型构建的基于mpc的控制器在轨迹跟踪方面优于采用低保真度模型构建的控制器。
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2437
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