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Bridging lab to industry: Deep learning cuts testing time for lithium metal battery health models

  • Quanqing Yu
  • , Can Wang
  • , Jianming Li
  • , Liubin Fan
  • , Shizhuo Liu
  • , Rui Xiong*
  • *此作品的通讯作者
  • School of Mechatronics Engineering, Harbin Institute of Technology
  • School of Automotive Engineering, Harbin Institute of Technology Weihai
  • Beijing Institute of Technology
  • The University of Hong Kong
  • College of Electrical and Electronic Engineering

科研成果: 期刊稿件文章同行评审

摘要

Reliable state of health estimation is vital for lithium metal batteries, yet existing approaches are constrained by high data demands and costly testing, limiting their scalability from laboratory to industry. Here, we present a transferable state of health modeling framework based on a stacking autoencoder-fully connected network. By integrating ensemble learning with hierarchical autoencoder representations, the framework automatically derives health indicators from as few as 21 or even 6 relaxation voltage points, eliminating the need for handcrafted features. Coupled with a lightweight predictor, it achieves accurate state of health estimation with a mean absolute error of 0.56 % and a root mean square error of 0.74 %. Beyond accuracy, the framework demonstrates strong adaptability across capacity scales and inter-manufacturer formulation-process variations: when transferring from 3.8 mAh laboratory cells to 19.9 Ah industrial batteries, estimation errors are reduced by up to 67.12 % (Mean Absolute Error) and 63.52 % (Root Mean Squared Error). This work provides a scalable and cost-effective pathway for rapid state of health model deployment, supporting efficient and safe industrial application of lithium metal batteries.

源语言英语
文章编号104748
期刊Energy Storage Materials
83
DOI
出版状态已出版 - 12月 2025
已对外发布

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