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Deep-Reinforcement-Learning-Based Energy Management Strategy for Supercapacitor Energy Storage Systems in Urban Rail Transit

机译:城市轨道运输中超级电容器储能系统的深加固基于学习的能源管理策略

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摘要

The modeling complexity of the traction power system and variation of traffic conditions bring challenges for the optimization of energy management strategy for supercapacitor energy storage systems in urban rail transit. Therefore, in this paper a deep-reinforcement-learning-based energy management strategy is proposed: the energy management system is modeled as an intelligent agent, the reward function is formulated comprehensively considering the energy-saving and voltage-stabilizing effects of supercapacitor, a traction power system simulator is developed to emulate the environment, and the agent's behavior is improved in each headway through the deep Q-learning algorithm, and converges to the nearly-optimal policy. The proposed strategy is verified through simulation based on the Beijing Subway Batong Line. The study results show that it dynamically adjusts the voltage thresholds so as to better allocate the supercapacitor capacity along the time horizon. The energy-saving and voltage-stabilizing effects are significantly improved compared with the fixed-threshold strategy and genetic optimization, and demonstrating to be in close proximity to the optimal benchmark deduced from dynamic programming.
机译:牵引力系统的建模复杂性及交通状况的变化对城市轨道交通中超级电容器能量存储系统的优化能量管理策略提供了挑战。因此,在本文中,提出了一种深增强基于学习的能源管理策略:能源管理系统被建模为智能代理,综合以来综合奖励功能,考虑超级电容器的节能和电压稳定效果。开发牵引力系统模拟器以仿真环境,并且代理的行为通过深度Q学习算法,并收敛到几乎最佳的政策。通过基于北京地铁Batong线的仿真来验证拟议的策略。研究结果表明,它动态调整电压阈值,以便更好地沿时间范围分配超级电容器容量。与固定阈值策略和遗传优化相比,节能和电压稳定效果显着提高,并展示了从动态编程所推断的最佳基准。

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