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A Power Management Strategy for Parallel PHEV Using Deep Q-Networks

机译:使用深度Q网络的并行PHEV的电源管理策略

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Fuel economy of a plug-in hybrid electric vehicle depends on a power management according to the driving conditions of the PHEV. A number of power management strategies on PHEV have been studied based on dynamic programming, equivalent consumption minimization strategy and reinforcement learning. Since reinforcement learning provides a methodology for mapping actions from states, reinforcement learning has the advantage that it is easier to apply to real vehicles than other methodologies. In this study, we developed the power management strategy of PHEVs which is efficient and could be implemented on actual PHEVs using deep Q-networks.
机译:插电式混合动力汽车的燃油经济性取决于根据PHEV的行驶条件进行的动力管理。基于动态编程,等效功耗最小化策略和强化学习,已经研究了许多PHEV的电源管理策略。由于强化学习提供了一种从状态映射动作的方法,因此强化学习的优势在于,与其他方法相比,它更容易应用于实际的车辆。在这项研究中,我们开发了插电式混合动力汽车的电源管理策略,该策略高效并且可以在使用深度Q网络的实际插电式混合动力汽车上实施。

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