Hybrid approach of iterative updating for lithium-ion battery remaining useful life estimation

Yuchen Song, Chen Yang, Tao Wang, Datong Liu, Yu Peng
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引用次数: 1

Abstract

Remaining Useful Life (RUL) prediction plays a critical part in many battery-powered applications. Statistical filter, i.e., particle filter (PF) is widely used to predict RUL with various models as well as its uncertainty representation. However, PF commonly used suffers from the lack of poor adaption of long-term prediction and iterative prediction. This disadvantage may further reduce the RUL estimation performance. To overcome this difficulty, this paper proposes a hybrid approach with dynamic updating for lithium-ion battery RUL estimation. The estimation results based on data-driven model of long-term degradation trend estimation are used as the observation value for regularized PF (RPF) to obtain the optimal estimation. Moreover, this optimized estimation value is utilized as the update online input to dynamically train the data-driven model, to improve the iterative predicting capability. The proposed approach comprises two ideas: (i) a dynamic updating strategy to predict the capacity of Li-ion battery and (ii) a modified combination of regularized particle filter and ND-AR (Nonlinear Degradation-AutoRegressive) model for accurate and stable RUL estimation. Experiment results suggest that the proposed approach, as a dynamic updating method combined with data-driven and empirical models, achieves better performance on both estimation accuracy and uncertainty representation.
锂离子电池剩余使用寿命估算迭代更新的混合方法
剩余使用寿命(RUL)预测在许多电池供电的应用中起着至关重要的作用。统计滤波即粒子滤波(PF)被广泛用于各种模型的RUL预测及其不确定性表示。然而,常用的预测因子缺乏对长期预测和迭代预测的较差的适应性。这个缺点可能会进一步降低RUL估计的性能。为了克服这一困难,本文提出了一种基于动态更新的锂离子电池RUL估计混合方法。将基于长期退化趋势估计的数据驱动模型的估计结果作为正则化PF (RPF)的观测值,得到最优估计。利用优化后的估定值作为更新在线输入,对数据驱动模型进行动态训练,提高迭代预测能力。提出的方法包括两个思路:(i)动态更新策略来预测锂离子电池的容量;(ii)改进的正则化粒子滤波和ND-AR(非线性退化-自回归)模型的组合,用于准确和稳定的RUL估计。实验结果表明,该方法作为一种数据驱动和经验模型相结合的动态更新方法,在估计精度和不确定性表示方面都取得了较好的效果。
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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