TY - JOUR
T1 - A Flexible deep convolutional neural network coupled with progressive training framework for online capacity estimation of lithium-ion batteries
AU - Xue, Qiao
AU - Li, Junqiu
AU - Xiao, Yansheng
AU - Chai, Zhixiong
AU - Liu, Ziming
AU - Chen, Jianwen
N1 - Publisher Copyright:
© 2023
PY - 2023/4/15
Y1 - 2023/4/15
N2 - Machine learning-based methods have shown great application prospects on the capacity estimation of lithium-ion battery. However, most of extant approaches require complete charging and discharging profiles that rarely occurs in practical applications to extract health features matched by the cycling capacity. To address this limitation, this paper directly intercepted partial charging voltage segments from raw charging curves, evading complicated manual features extraction. A progressive training framework is proposed and integrated with the deep convolutional neural network to build the online capacity estimator. Three battery aging datasets involving 28 cells cyclic aging data are exploited for model training and validation. Thereinto, the source dataset and target dataset-1 are used to train the model parameters progressively, and the target dataset-2 is applied to validate model performance. Experimental results show that the deep convolutional neural network coupled with progressive training framework can significantly enhance the capacity estimation accuracy and reduce retraining time compared with the ordinary convolutional neural network. The comparison results of different machine learning algorithms demonstrate that the proposed method possesses high estimation precision with a maximum relative error of only 3.4% on the target dataset, which can be easily extended to different types of battery capacity estimation.
AB - Machine learning-based methods have shown great application prospects on the capacity estimation of lithium-ion battery. However, most of extant approaches require complete charging and discharging profiles that rarely occurs in practical applications to extract health features matched by the cycling capacity. To address this limitation, this paper directly intercepted partial charging voltage segments from raw charging curves, evading complicated manual features extraction. A progressive training framework is proposed and integrated with the deep convolutional neural network to build the online capacity estimator. Three battery aging datasets involving 28 cells cyclic aging data are exploited for model training and validation. Thereinto, the source dataset and target dataset-1 are used to train the model parameters progressively, and the target dataset-2 is applied to validate model performance. Experimental results show that the deep convolutional neural network coupled with progressive training framework can significantly enhance the capacity estimation accuracy and reduce retraining time compared with the ordinary convolutional neural network. The comparison results of different machine learning algorithms demonstrate that the proposed method possesses high estimation precision with a maximum relative error of only 3.4% on the target dataset, which can be easily extended to different types of battery capacity estimation.
KW - Capacity estimation
KW - Charging voltage segment
KW - Deep convolutional neural network
KW - Lithium-ion battery
KW - Progressive training framework
UR - http://www.scopus.com/inward/record.url?scp=85148685267&partnerID=8YFLogxK
U2 - 10.1016/j.jclepro.2023.136575
DO - 10.1016/j.jclepro.2023.136575
M3 - Article
AN - SCOPUS:85148685267
SN - 0959-6526
VL - 397
JO - Journal of Cleaner Production
JF - Journal of Cleaner Production
M1 - 136575
ER -