Remaining useful life prediction of lithium-ion battery based on auto-regression and particle filter

Jie Lin, Minghua Wei
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引用次数: 8

Abstract

PurposeWith the rapid development and stable operated application of lithium-ion batteries used in uninterruptible power supply (UPS), the prediction of remaining useful life (RUL) for lithium-ion battery played an important role. More and more researchers paid more attentions on the reliability and safety for lithium-ion batteries based on prediction of RUL. The purpose of this paper is to predict the life of lithium-ion battery based on auto regression and particle filter method.Design/methodology/approachIn this paper, a simple and effective RUL prediction method based on the combination method of auto-regression (AR) time-series model and particle filter (PF) was proposed for lithium-ion battery. The proposed method deformed the double-exponential empirical degradation model and reduced the number of parameters for such model to improve the efficiency of training. By using the PF algorithm to track the process of lithium-ion battery capacity decline and modified observations of the state space equations, the proposed PF + AR model fully considered the declined process of batteries to meet more accurate prediction of RUL.FindingsExperiments on CALCE dataset have fully compared the conventional PF algorithm and the AR + PF algorithm both on original exponential empirical degradation model and the deformed double-exponential one. Experimental results have shown that the proposed PF + AR method improved the prediction accuracy, decreases the error rate and reduces the uncertainty ranges of RUL, which was more suitable for the deformed double-exponential empirical degradation model.Originality/valueIn the running of UPS device based on lithium-ion battery, the proposed AR + PF combination algorithm will quickly, accurately and robustly predict the RUL of lithium-ion batteries, which had a strong application value in the stable operation of laboratory and other application scenarios.
基于自回归和粒子滤波的锂离子电池剩余使用寿命预测
目的随着锂离子电池在不间断电源(UPS)中的快速发展和稳定运行的应用,锂离子电池剩余使用寿命(RUL)的预测发挥了重要作用。基于RUL预测的锂离子电池的可靠性和安全性越来越受到研究者的关注。本文的目的是基于自回归和粒子滤波方法对锂离子电池的寿命进行预测。基于自回归(AR)时间序列模型和粒子滤波(PF)相结合的方法,提出了一种简单有效的锂离子电池RUL预测方法。该方法对双指数经验退化模型进行变形,减少了模型的参数个数,提高了训练效率。利用PF算法跟踪锂离子电池容量下降过程,并对状态空间方程的观测值进行修正,提出的PF + AR模型充分考虑了电池容量下降过程,满足更准确的RUL预测。在CALCE数据集上的实验充分比较了传统PF算法和AR + PF算法在原始指数经验退化模型和变形双指数经验退化模型上的差异。实验结果表明,提出的PF + AR方法提高了预测精度,降低了错误率,减小了RUL的不确定范围,更适合于变形双指数经验退化模型。在基于锂离子电池的UPS设备运行中,本文提出的AR + PF组合算法能够快速、准确、稳健地预测锂离子电池的RUL,在实验室稳定运行等应用场景中具有较强的应用价值。
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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