基于深度残差网络的不同尺度信息融合锂离子电池预测方法

Yafei Zhu, Xiang Li, Wei Zhang
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引用次数: 1

摘要

目前,基于深度学习的预测方法已经在能源、交通、航空航天等诸多工业领域得到了成功的发展和应用。锂离子电池的预测是反映能源系统健康状态的重要指标,是近几十年来研究的热点问题。本文提出了一种新的电池预测方法。该架构融合了传统的深度神经网络和CNN模型,并将特征图分成两个分支进行单独计算。为了追求更好的预测效果,在预测模型中还使用了残差网络。残差块由连接各分支输入输出的隐藏层实现,提高了模型的泛化能力。该方法对CALCE锂离子数据集进行了一步预测。实验结果表明,该方法具有较好的预测效果。因此,对锂离子电池寿命进行预测具有重要意义,成为基于深度学习的锂离子电池寿命预测方法的新基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Residual Net-Based Prognosis Method for Lithium-ion Batteries with Information Fusion from Different Scales
Nowadays, prognosis methods based on deep learning have been successfully developed and applied in many industrial fields, such as energy, transportation, aero-space engineering etc. Lithium-ion battery prognosis is very important to indicate the health states of the energy system, which has been a hot topic in the past decades. In this paper, a new method is proposed for battery prognosis. The proposed architecture integrates the traditional DNN and CNN models, and divides the feature graph into two branches for separate computation. Residual network is also used in the prediction model for pursuing better effects. Residual block is implemented by a hidden layer connecting each branch’s inputs and outputs, which improves the model’s generalization ability. The proposed method takes up one-step prediction for CALCE lithium-ion data set. Experimental results show that the proposed method has a better prediction effect. Therefore, it is of great significance to predict the life of lithiumion batteries and become a new basis for a deep learning-based method to predict the life of lithium-ion batteries.
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