锂(药物)
希尔伯特-黄变换
分解
期限(时间)
离子
短时记忆
材料科学
模式(计算机接口)
计算机科学
人工智能
化学
心理学
物理
人工神经网络
有机化学
电信
白噪声
量子力学
精神科
循环神经网络
操作系统
作者
Tiezhou Wu,K. T. Cheng,Jun‐Gill Kang,R. Liu
标识
DOI:10.1002/ente.202301033
摘要
The prediction of remaining useful life (RUL) for lithium‐ion batteries is a critical component of electric vehicle battery management systems. However, during the aging process, batteries exhibit an overall declining trend in capacity curves, coupled with capacity regeneration and localized fluctuations. Directly modeling this degradation trend based on the original capacity curve proves challenging, leading to reduced accuracy in RUL prediction. This article introduces a hybrid method to enhance the precision of battery RUL prediction. Utilizing the ensemble empirical mode decomposition technique, the battery's capacity degradation sequence is decomposed into intrinsic mode functions (IMFs) with varying degrees of fluctuations, along with a residue that characterizes the battery's overall declining trend. Subsequently, deep belief networks and long short‐term memory networks are established to predict the residue and IMFs separately. The combined results from these models yield the final battery RUL prediction. Finally, the effectiveness of this approach is validated on the NASA battery dataset, with diverse training periods and prediction time steps. Experimental results demonstrate that the root mean square error of predictions for all four batteries remains below 2%.
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