锂离子电池健康状态评估的生成对抗网络

Zhuang Ye, Jianbo Yu, Pu Yang, Shang Yue, Ruixu Zhou, Mingyan Ma
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摘要

在电池管理系统中,健康状态(SOH)估计对于预测电池容量具有重要意义。大多数现有的方法需要足够的标记数据来获得精确的结果。然而,在工业应用中,收集足够的电池老化数据是困难和昂贵的。为此,本文提出了一种生成模型来解决电池的数据扩充和SOH估计问题。首先,提出了一种条件生成对抗网络,用于数据增强。其次,利用混合特征发生器卷积长短期记忆(CLSTM)对真实信号进行重构;第三,利用基于lstm的SOH估计器学习原始信号和人工生成信号的退化状态。最后,对电池测试进行SOH估计,验证了所提方法的有效性。实验结果表明,该模型能够有效地实现电池的数据增强和SOH估计。
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Generative Adversarial Network for State of Health Estimation of Lithium-ion Batteries
State of health (SOH) estimation is significant to predict the capacity of battery in the battery management systems. The most existing methods require sufficient labeled data to obtain the precise results. However, in the industrial application, it is difficult and costly to collect sufficient battery aging data. Thus, this paper proposed a generative model to tackle the data augmentation and SOH estimation of battery. Firstly, a conditional generative adversarial network is developed for data augmentation. Secondly, a hybrid feature generator, i.e., convolutional long short-term memory (CLSTM) is employed to reconstruct the real signals. Thirdly, a LSTM-based SOH estimator is employed to learn the degradation trance of the original and the artificially generated signals. Finally, a SOH estimation of battery testing is performed to verify the effectiveness of the proposed method. The experimental results indicate that the model can effectively implement data augmentation and SOH estimation of battery.
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