Optimizing Discharge Efficiency of Reconfigurable Battery With Deep Reinforcement Learning

被引:4
|
作者
Jeon, Seunghyeok [1 ]
Kim, Jiwon [1 ]
Ahn, Junick [1 ]
Cha, Hojung [1 ]
机构
[1] Yonsei Univ, Dept Comp Sci, Seoul 03722, South Korea
基金
新加坡国家研究基金会;
关键词
Deep reinforcement learning (DRL); reconfigurable battery; switch control policy; CHARGE ESTIMATION; ION; STATE; MODELS; LIFE;
D O I
10.1109/TCAD.2020.3012230
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
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.
引用
收藏
页码:3893 / 3905
页数:13
相关论文
共 50 条
  • [31] A Reinforcement Learning controller optimizing costs and battery State of Health in smart grids
    Mussi, Marco
    Pellegrino, Luigi
    Pindaro, Oscar Francesco
    Restelli, Marcello
    Trovo, Francesco
    JOURNAL OF ENERGY STORAGE, 2024, 82
  • [32] Ageing-aware battery discharge prediction with deep learning
    Biggio, Luca
    Bendinelli, Tommaso
    Kulkarni, Chetan
    Fink, Olga
    APPLIED ENERGY, 2023, 346
  • [33] Optimizing deep-space DTN congestion control via deep reinforcement learning
    Yang, Lei
    Fraire, Juan A.
    Zhao, Kanglian
    Wang, Ruhai
    Li, Wenfeng
    Yang, Hong
    COMPUTER NETWORKS, 2024, 255
  • [34] Optimizing the hyper-parameters of deep reinforcement learning for building control
    Li, Shuhao
    Su, Shu
    Lin, Xiaorui
    BUILDING SIMULATION, 2025,
  • [35] Exploration of Optimizing Advertising Design Using CAD and Deep Reinforcement Learning
    Ma C.
    Sun D.
    Gan Y.
    Guo X.
    Computer-Aided Design and Applications, 2024, 21 (S23): : 191 - 206
  • [36] Interpretable Deep Reinforcement Learning for Optimizing Heterogeneous Energy Storage Systems
    Xiong, Luolin
    Tang, Yang
    Liu, Chensheng
    Mao, Shuai
    Meng, Ke
    Dong, Zhaoyang
    Qian, Feng
    IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS I-REGULAR PAPERS, 2024, 71 (02) : 910 - 921
  • [37] Blockchain-Based Deep Reinforcement Learning System for Optimizing Healthcare
    Ali, Tariq Emad
    Ali, Faten Imad
    Abdala, Mohammed A.
    Godor, Gyozo
    Zoltan, Alwahab Dhulfiqar
    INFOCOMMUNICATIONS JOURNAL, 2024, 16 (03): : 89 - 99
  • [38] Optimizing Federated Learning With Deep Reinforcement Learning for Digital Twin Empowered Industrial IoT
    Yang, Wei
    Xiang, Wei
    Yang, Yuan
    Cheng, Peng
    IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2023, 19 (02) : 1884 - 1893
  • [39] A Hybrid Multi-Task Learning Approach for Optimizing Deep Reinforcement Learning Agents
    Varghese, Nelson Vithayathil
    Mahmoud, Qusay H.
    IEEE ACCESS, 2021, 9 : 44681 - 44703
  • [40] An active equalization method for redundant battery based on deep reinforcement learning
    Lu, Chenlei
    Chen, Jianlong
    Chen, Cong
    Huang, Yin
    Xuan, Dongji
    MEASUREMENT, 2023, 210