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A Data-driven Control Strategy for Trip Length-Conscious Power Management of Plug-in Hybrid Electric Vehicles

机译:插入式混合动力电动汽车跳闸长度有意识式电力管理的数据驱动控制策略

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This paper presents a novel data-driven control strategy for the computationally efficient power management of plug-in hybrid electric vehicles (PHEVs). The proposed method relies on a set of real-time control policies trained through a linear regression process based on a large set of optimal powertrain decisions obtained from dynamic programming. The control policies receive the real-time powertrain system information such as the demanded propulsion force, vehicle speed, battery state-of-charge, etc. to compute the required torque values for the engine and the electric drivetrain system. The proposed controller makes near-optimal decisions when it is evaluated for the same test conditions as trained. When the test and training settings are different, however, the controller decisions deviate from optimality. We show that this deviation can be mitigated by including future drive cycle information such as trip length in the control computations.
机译:本文提出了一种新的数据驱动控制策略,用于电插入式混合动力电动车(PHEV)的计算高效电源管理。所提出的方法依赖于通过基于从动态编程获得的大量最佳动力总成决定的线性回归过程训练的一组实时控制策略。控制策略接收实时动力总成系统信息,例如所需的推进力,车速,电池充电等等,以计算发动机和电动驱动器系统的所需扭矩值。当评估与培训的相同的测试条件评估时,所提出的控制器在近似最佳决策。然而,当测试和训练设置不同时,控制器决策偏离最优性。我们表明可以通过包括控制计算中的诸如跳闸长度的未来驱动周期信息来减轻这种偏差。

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