TY - JOUR
T1 - A transformer-enhanced framework for lithium-ion battery capacity estimation using limited imaginary impedance feature
AU - Liu, Ruijun
AU - Zhang, Dayu
AU - Wang, Lu
AU - Mi, Chunting Chris
AU - Bauer, Pavol
AU - Qin, Zian
PY - 2025
Y1 - 2025
N2 - Accurate battery capacity estimation is essential for the effective and reliable operation of lithium-ion battery management systems. Battery impedance is a key parameter that encapsulates electrochemical information, closely correlating with the internal states of batteries. This study proposes a novel capacity estimation framework that effectively balances accuracy, efficiency, and practicality. Firstly, a novel feature extraction method is introduced to extract health features from the imaginary impedance at a single frequency. The extracted feature demonstrates a strong and stable correlation with battery degradation under various operation conditions, while significantly reducing data requirements. To address the impact of diverse degradation patterns on estimation accuracy, an initial adjustment method is applied to precisely retrace the relative degradation paths of batteries. The results show that the mean absolute percentage error of battery capacity estimation decreases from 15.65% to 2.87%. Additionally, a transformer-based capacity estimation model is developed, which integrates a feature fusion unit to explicitly eliminate the influence of temperature on model performance. As a result, the model's accuracy improves by over 28% under various thermal conditions.
AB - Accurate battery capacity estimation is essential for the effective and reliable operation of lithium-ion battery management systems. Battery impedance is a key parameter that encapsulates electrochemical information, closely correlating with the internal states of batteries. This study proposes a novel capacity estimation framework that effectively balances accuracy, efficiency, and practicality. Firstly, a novel feature extraction method is introduced to extract health features from the imaginary impedance at a single frequency. The extracted feature demonstrates a strong and stable correlation with battery degradation under various operation conditions, while significantly reducing data requirements. To address the impact of diverse degradation patterns on estimation accuracy, an initial adjustment method is applied to precisely retrace the relative degradation paths of batteries. The results show that the mean absolute percentage error of battery capacity estimation decreases from 15.65% to 2.87%. Additionally, a transformer-based capacity estimation model is developed, which integrates a feature fusion unit to explicitly eliminate the influence of temperature on model performance. As a result, the model's accuracy improves by over 28% under various thermal conditions.
KW - Capacity estimation
KW - Deep learning
KW - Electrochemical impedance spectroscopy
KW - Lithium-ion battery
UR - http://www.scopus.com/inward/record.url?scp=105002922232&partnerID=8YFLogxK
U2 - 10.1016/j.est.2025.116313
DO - 10.1016/j.est.2025.116313
M3 - Article
AN - SCOPUS:105002922232
SN - 2352-152X
VL - 122
JO - Journal of Energy Storage
JF - Journal of Energy Storage
M1 - 116313
ER -