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Bi-level Energy Management of Plug-in Hybrid Electric Vehicles for Fuel Economy and Battery Lifetime with Intelligent State-of-charge Reference

机译:用于燃料经济性的插入式混合动力电动汽车的双级能量管理和智能指控的电池寿命

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This paper proposes a bi-level energy management strategy of plug-in hybrid electric vehicles with intelligent state-of-charge (SOC) reference for satisfactory fuel economy and battery lifetime. In the upper layer, Q-learning algorithm is delegated to generate the SOC reference before departure, by taking the model nonlinearities and physical constraints into account while paying less computing labor. In the lower layer, with the short-term drive velocity accurately predicted by the radial basis function neural network, the model predictive control (MPC) controller is designed to online distribute the system power flows and track the SOC reference for the superior fuel economy and battery lifetime extension. Moreover, the terminal SOC constraints are transferred as soft ones by the relaxation operations to guarantee the solving feasibility and smooth tracking effects. Finally, the simulations are carried out to validate the effectiveness of the proposed strategy, which shows the considerable improvements in fuel economy and battery lifetime extension compared with the charge-depleting and charge sustaining method. More importantly, the great robustness of the proposed approach is verified under the cases of inaccurately pre-known drive information, indicating the favorable adaptability for practical application.
机译:本文提出了一种具有智能充电状态(SOC)参考的插入式混合动力电动汽车的双级能源管理策略,用于令人满意的燃油经济性和电池寿命。在上层,通过在支付更少计算劳动的同时考虑模型非线性和物理限制,委派Q学习算法以在出发之前生成SOC参考。在下层中,随着径向基函数神经网络精确预测的短期驱动速度,模型预测控制(MPC)控制器被设计为在线分布系统功率流程并跟踪SOC参考以获得优越的燃料经济性电池寿命延伸。此外,终端SOC约束通过松弛操作将作为柔和的SOC约束传送,以保证求解可行性和平滑的跟踪效果。最后,进行了模拟以验证所提出的策略的有效性,该策略显示出与电荷消耗和电荷维持方法相比的燃料经济性和电池寿命扩展的相当大改善。更重要的是,在不准确的预先知道的驱动信息的情况下,验证了所提出的方法的巨大稳健性,表明了对实际应用的有利适应性。

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