Online Estimation of Lithium-Ion Battery Capacity Using Deep Convolutional Neural Networks

Sheng Shen, Mohammadkazem Sadoughi, Xiangyi Chen, Mingyi Hong, Chao Hu
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引用次数: 12

Abstract

Over the past two decades, safety and reliability of lithium-ion (Li-ion) rechargeable batteries have been receiving a considerable amount of attention from both industry and academia. To guarantee safe and reliable operation of a Li-ion battery pack and build failure resilience in the pack, battery management systems (BMSs) should possess the capability to monitor, in real time, the state of health (SOH) of the individual cells in the pack. This paper presents a deep learning method, named deep convolutional neural networks, for cell-level SOH assessment based on the capacity, voltage, and current measurements during a charge cycle. The unique features of deep convolutional neural networks include the local connectivity and shared weights, which enable the model to estimate battery capacity accurately using the measurements during charge. To our knowledge, this is the first attempt to apply deep learning to online SOH assessment of Li-ion battery. 10-year daily cycling data from implantable Li-ion cells are used to verify the performance of the proposed method. Compared with traditional machine learning methods such as relevance vector machine and shallow neural networks, the proposed method is demonstrated to produce higher accuracy and robustness in capacity estimation.
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基于深度卷积神经网络的锂离子电池容量在线估计
在过去的二十年里,锂离子(Li-ion)可充电电池的安全性和可靠性受到了工业界和学术界的广泛关注。为了保证锂离子电池组的安全可靠运行,并在电池组中建立故障恢复能力,电池管理系统(bms)应该具有实时监测电池组中单个电池的健康状态(SOH)的能力。本文提出了一种深度学习方法,称为深度卷积神经网络,用于基于充电周期中容量、电压和电流测量的电池级SOH评估。深度卷积神经网络的独特特征包括局部连通性和共享权重,这使得模型能够使用充电期间的测量数据准确估计电池容量。据我们所知,这是首次尝试将深度学习应用于锂离子电池的SOH在线评估。利用植入式锂离子电池10年的每日循环数据来验证所提出方法的性能。与传统的机器学习方法(如相关向量机和浅神经网络)相比,该方法在容量估计方面具有更高的准确性和鲁棒性。
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