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首页> 外文期刊>IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems >Optimizing Discharge Efficiency of Reconfigurable Battery With Deep Reinforcement Learning
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Optimizing Discharge Efficiency of Reconfigurable Battery With Deep Reinforcement Learning

机译:深增强学习优化可重新配置电池的放电效率

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Cell imbalance in a multicell battery occurs over time due to varying operating environments. This imbalance leads to overall inefficiency in battery discharging due to the relatively weak cells in the battery. Reconfiguring the cells in the battery is one option for addressing the problem, but relevant circuits may lead to severe safety issues. In this article, we aim to optimize the discharge efficiency of a multicell battery using safety-supplemented hardware. To this end, we first design a cell string-level reconfiguration scheme that is safe in hardware operations and also provides scalability due to the low switching complexity. Second, we propose a machine learning-based run-time switch control that considers various battery-related factors, such as the state of charge, state of health, temperature, and current distributions. Specifically, by exploiting the deep reinforcement learning (DRL) technique, we train the complex relationship among the battery factors and derive the best switch configuration in run-time. We implemented a hardware prototype, validated its functionalities, and evaluated the efficacy of the DRL-based control policy. The experimental results showed that the proposed scheme, along with the optimization method, improves the discharge efficiency of multicell batteries. In particular, the discharge efficiency gain is maximized when the cells constituting the battery are unevenly distributed in terms of cell health and exposed temperature.
机译:由于不同的操作环境,多电池电池中的电池不平衡发生。由于电池中相对较弱的电池,这种不平衡导致电池放电的总体低效率。重新配置电池中的单元是解决问题的一种选择,但相关电路可能导致严重的安全问题。在本文中,我们的目的是使用安全补充硬件来优化多电池电池的放电效率。为此,我们首先设计一种在硬件操作中安全的单元格级重新配置方案,并且由于低切换复杂性而提供可扩展性。其次,我们提出了一种基于机器学习的运行时交换机控制,其考虑各种与电池相关的因素,例如充电状态,健康状况,温度和电流分布。具体而言,通过利用深度加强学习(DRL)技术,我们在电池因子之间培训复杂的关系,并在运行时导出最佳的开关配置。我们实现了硬件原型,验证了其功能,并评估了基于DRL的控制策略的功效。实验结果表明,该方案以及优化方法提高了多电池电池的放电效率。特别地,当构成电池的细胞在细胞健康和暴露温度方面不均匀地分布时,放电效率增益最大化。

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