State-of-Charge Estimation of Li-ion Battery at Variable Ambient Temperature with Gated Recurrent Unit Network

M. Hannan, D. N. How, M. Mansor, M. Lipu, P. Ker, K. Muttaqi
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引用次数: 7

Abstract

The state of charge (SOC) is a crucial indicator of a Li-ion battery management system (BMS). A BMS with a good SOC assessment can dramatically improve the lifespan of the battery and ensure the safety of the end-user. With deep learning making tremendous strides in many other fields, this study aims to provide an empirical evaluation of commonly used deep learning methods on the task of SOC estimation. We propose the use of two-hidden-layer gated recurrent units (GRU) to estimate the SOC at various ambient temperatures. In this work, we conducted two experiment setups to showcase the capability of the proposed GRU model. In the first setup, the GRU was trained on the DST, BJDST and US06 drive cycle and evaluated the FUDS drive cycle upon convergence. The same procedure was repeated with the second setup except the GRU was trained on the DST, BJDST and FUDS drive cycle and evaluated on the US06 drive cycle. In both experiment setups, the proposed GRU was evaluated on a novel drive cycle that it has not encountered during the training phase. We show that a two-hidden-layer GRU with appropriate hyperparameter combination and training methodology can reliably estimate the SOC of novel drive cycles at various ambient temperatures in comparison with other deep learning methods such as simple recurrent network (SRNN), Long Short-Term Memory (LSTM), 1D Residual Network (Resnet), 1D Visual Geometry Group Network (VGG) and the Multilayer Perceptron (MLP). The proposed GRU achieves 2.3% RMSE on the FUDS drive cycle and 1.2% RMSE on the US06 drive cycle outperforming all other models.
基于门控循环单元网络的变环境温度下锂离子电池充电状态估计
充电状态(SOC)是锂离子电池管理系统(BMS)的一个重要指标。具有良好SOC评估的BMS可以显着提高电池的使用寿命并确保最终用户的安全。随着深度学习在许多其他领域取得巨大进展,本研究旨在对常用的深度学习方法在SOC估计任务上进行实证评估。我们建议使用两隐层门控循环单元(GRU)来估计不同环境温度下的SOC。在这项工作中,我们进行了两个实验设置来展示所提出的GRU模型的能力。在第一个设置中,GRU在DST, BJDST和US06驱动周期上进行训练,并在收敛时评估FUDS驱动周期。除了GRU在DST、BJDST和FUDS驱动循环上进行训练,并在US06驱动循环上进行评估外,在第二次设置中重复相同的步骤。在这两个实验设置中,所提出的GRU在一个新的驱动循环中进行了评估,该驱动循环在训练阶段没有遇到过。研究表明,与其他深度学习方法(如简单循环网络(SRNN)、长短期记忆(LSTM)、一维残差网络(Resnet)、一维视觉几何群网络(VGG)和多层感知器(MLP))相比,具有适当超参数组合和训练方法的两隐层GRU可以在不同环境温度下可靠地估计新驱动循环的SOC。建议的GRU在FUDS驱动周期中达到2.3%的RMSE,在US06驱动周期中达到1.2%的RMSE,优于所有其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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