基于分布式模型预测控制的协同自适应巡航控制的汽车跟随稳定性改进

Yiping Wang, Shixuan Wang, Chuqi Su, Xueyun Li, Qianwen Zhang, Zhentao Zhang, Mohan Tian
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摘要

为解决协同自适应巡航控制(CACC)中车辆跟车距离波动较大的问题,提出了分布式模型预测控制(DMPC)策略。采用分层控制的思想来控制 CACC 系统。控制器分为上层控制器和下层控制器。上层控制器根据排队状态计算车辆的预期加速度,下层控制器根据预期加速度控制车辆的油门和制动系统压力。首先,建立车辆排队的纵向动态模型。其次,根据控制目标设计目标函数,使排线获得当前的最优控制量。同时,利用鲁棒设计提高控制器性能,并通过参考轨迹的优化和可行域的扩展来提高控制器的稳定性。因此,可以提高汽车跟随稳定性。然后,基于反向发动机模型和反向制动模型设计了下部控制器。最后,通过 Carsim 和 MATLAB/Simulink 的协同仿真验证了所设计控制策略的有效性。结果表明,DMPC 可以降低车辆跟车距离误差的峰值、标准偏差和均方根,并提高跟车稳定性。
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Car-following stability improvement of cooperative adaptive cruise control based on distributed model predictive control
To solve the problem of large fluctuation of vehicle following distance in cooperative adaptive cruise control (CACC), a distributed model predictive control (DMPC) strategy is proposed. The idea of hierarchical control is performed to control the CACC system. The controller is divided into an upper controller and a lower controller. The upper controller calculates the expected acceleration of the vehicle according to the platooning state, and the lower controller controls the throttle and braking system pressure of the vehicle according to the expected acceleration. Firstly, the longitudinal dynamic model of vehicle platooning is established. Secondly, the objective function is designed according to the control objectives, so that the platooning can obtain the optimal control quantity at the current time. Meanwhile, the robust design is used to improve the controller performance, and the optimization of reference trajectory and the extension of feasible domain are used to improve the stability of the controller. Car-following Stability therefore can be improved. Then the lower controller is designed based on a reverse engine model and a reverse braking model. Finally, the effectiveness of the designed control strategy is verified by the co-simulation of Carsim and MATLAB/Simulink. The results show that DMPC can reduce the peak value, the standard deviation, and the root mean square of vehicle following distance error and improve the following stability.
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