使用机器学习的锂离子电池电极健康诊断

Suhak Lee, Youngki Kim
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引用次数: 11

摘要

了解电池的诊断信息,最大限度地利用电池,避免对电池进行不利甚至危险的操作。提出了基于模型的方法来识别锂离子(Li-ion)电池的健康状态(SOH)相关参数;然而,求解基于优化的参数识别的高计算成本使得这些方法难以在机载应用中实现。为了解决这个问题,本文提出了一种基于机器学习的方法,使用神经网络(NN)模型来识别锂离子电池的电极级退化。为了诊断电极级降解(即每个电极的活性物质损失(LAM)和锂库存损失(LLI)),从增量容量(IC)曲线和差分电压(DV)曲线中提取电化学特征。利用所提出的电化学特征训练的神经网络模型在准确识别每种降解模式方面显示出强大的潜力:所有降解模式的RMSE都小于0.1。
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Li-ion Battery Electrode Health Diagnostics using Machine Learning
Diagnostic information of a battery allows for its maximum utilization while avoiding unfavorable or even dangerous operations. Model-based approaches have been proposed to identify the state of health (SOH) related parameters in lithium-ion (Li-ion) batteries; however, high computational cost for solving optimization-based parameter identification makes these approaches difficult to be implemented in onboard applications. To address this issue, this paper proposes a machine learning-based approach using a neural network (NN) model for identifying electrode-level degradation of Li-ion batteries. For the diagnosis of electrode-level degradation (i.e., loss of active material (LAM) for each electrode and loss of lithium inventory (LLI)), electrochemical features are extracted from both incremental capacity (IC) curve and differential voltage (DV) curve. The developed NN model trained with the proposed electrochemical features shows strong potential in identifying each degradation mode accurately: the RMSE of all degradation modes is less than 0.1.
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