电池(电)
计算机科学
健康状况
深度学习
降级(电信)
估计
人工智能
国家(计算机科学)
人工神经网络
功率(物理)
领域(数学分析)
机器学习
可靠性工程
算法
工程类
数学
电信
系统工程
数学分析
物理
量子力学
作者
Jiahuan Lu,Rui Xiong,Jinpeng Tian,Chenxu Wang,Fengchun Sun
标识
DOI:10.1038/s41467-023-38458-w
摘要
State of health is a critical state which evaluates the degradation level of batteries. However, it cannot be measured directly but requires estimation. While accurate state of health estimation has progressed markedly, the time- and resource-consuming degradation experiments to generate target battery labels hinder the development of state of health estimation methods. In this article, we design a deep-learning framework to enable the estimation of battery state of health in the absence of target battery labels. This framework integrates a swarm of deep neural networks equipped with domain adaptation to produce accurate estimation. We employ 65 commercial batteries from 5 different manufacturers to generate 71,588 samples for cross-validation. The validation results indicate that the proposed framework can ensure absolute errors of less than 3% for 89.4% of samples (less than 5% for 98.9% of samples), with a maximum absolute error of less than 8.87% in the absence of target labels. This work emphasizes the power of deep learning in precluding degradation experiments and highlights the promise of rapid development of battery management algorithms for new-generation batteries using only previous experimental data.
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