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State-of-Health Estimation of Lithium-Ion Batteries Using Incremental Capacity Analysis Based on Voltage–Capacity Model

机译:基于电压 - 容量模型的增量容量分析,锂离子电池的健康状态估算

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摘要

State of health (SOH) is critical to evaluate the life expectancy of lithium-ion battery (LIB), thus should be estimated accurately in practical applications. This article proposes a computationally efficient model-based method for SOH estimation of LIB. A revised Lorentzian function-based voltage-capacity (VC) (RL-VC) model is exploited to accurately capture the voltage plateaus of LIB which reflect the material-level phase transition phenomenon. A full set of new features of interest (FOIs) is extracted by simply fitting the RL-VC model leveraging data collected from the constant-current charging process. Correlation analysis is then performed for the captured FOIs, based on which linear models are calibrated to estimate the battery SOH. The proposed method is validated with experimental data from different battery chemistries. The results show that the extracted FOIs have high linearities with the battery capacity, suggesting a good potential for SOH estimation and better feasibility over traditionally used methods. The proposed method shows a high accuracy for battery SOH estimation and an expected robust performance against the initial aging status and practical cycling condition.
机译:健康状况(SOH)对于评估锂离子电池(LIB)的预期寿命至关重要,因此应该在实际应用中准确估算。本文提出了一种用于LIB的SOH估计的基于计算的基于模型的方法。利用修订的Lorentzian函数基电压 - 容量(VC)(RL-VC)模型,以精确地捕获反映材料水平相变现象的LIB的电压平台。通过简单地拟合从恒流充电过程收集的RL-VC模型来提取感兴趣的兴趣(FOIS)的全套新功能。然后基于捕获的FOIS对捕获的FOI进行相关性分析,基于哪个线性模型被校准以估计电池SOH。所提出的方法用来自不同电池化学物质的实验数据验证。结果表明,提取的FOIS具有电池容量的高线性,表明SOH估计的良好潜力和对传统使用的方法的更好可行性。所提出的方法显示了电池SOH估计的高精度和针对初始老化状态和实际循环条件的预期鲁棒性能。

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