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Data-Driven Predictive Torque Coordination Control during Mode Transition Process of Hybrid Electric Vehicles

机译:混合动力汽车模式转换过程中数据驱动的预测扭矩协调控制

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Torque coordination control significantly affects the mode transition quality during the mode transition dynamic process of hybrid electric vehicles (HEV). Most of the existing torque coordination control methods are based on the mechanism model, whose control effect heavily depends on the modeling accuracy of the HEV powertrain. However, the powertrain structure is so complex, that it is difficult to establish its precise mechanism model. In this paper, a torque coordination control strategy using the data-driven predictive control (DDPC) technique is proposed to overcome the shortcomings of mechanism model-based control methods for a clutch-enabled HEV. The proposed control strategy is only based on the measured input-output data in the HEV powertrain, and no mechanism model is needed. The conflicting control requirements of comfortability and economy are included in the cost function. The actual physical constraints of actuators are also explicitly taken into account in the solving process of the data-driven predictive controller. The co-simulation results in Cruise and Simulink validate the effectiveness of the proposed control strategy and demonstrate that the DDPC method can achieve less vehicle jerk, faster mode transition and smaller clutch frictional losses compared with the traditional model predictive control (MPC) method.
机译:在混合动力汽车(HEV)的模式过渡动态过程中,扭矩协调控制会显着影响模式过渡质量。现有的大多数转矩协调控制方法都是基于机构模型,其控制效果在很大程度上取决于HEV动力总成的建模精度。然而,动力总成结构是如此复杂,以至于难以建立其精确的机构模型。本文提出了一种基于数据驱动预测控制(DDPC)技术的扭矩协调控制策略,以克服基于机械模型的离合器式混合动力汽车控制方法的缺陷。所提出的控制策略仅基于混合动力汽车动力总成中测得的输入输出数据,不需要任何机理模型。成本函数中包含了舒适性和经济性相互矛盾的控制要求。在数据驱动的预测控制器的求解过程中,也明确考虑了执行器的实际物理约束。 Cruise和Simulink中的联合仿真结果验证了所提出的控制策略的有效性,并证明与传统的模型预测控制(MPC)方法相比,DDPC方法可实现更少的车辆晃动,更快的模式转换和更小的离合器摩擦损失。

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