TY - JOUR
T1 - A novel SOH estimation method of sodium-ion batteries based on multi-channel threshold residual network
AU - Fan, Yuqian
AU - Wang, Linbing
AU - Yan, Chong
AU - Liang, Yaqi
AU - Wu, Xiaoying
AU - Ren, Zhiwei
AU - Guo, Xiaojuan
AU - Gao, Guohong
AU - Ling, Chen
N1 - Publisher Copyright:
© 2025 Elsevier Ltd
PY - 2025/10/15
Y1 - 2025/10/15
N2 - Sodium-ion batteries (SiBs) have been widely studied in the field of energy storage due to their abundant resources and high safety. However, their state-of-health (SOH) estimation is not straightforward, due to the complex aging mechanisms and dynamic working conditions. This study proposes an SOH estimation framework based on Multi-channel Threshold Residual Network (MTRN), which combines multi-modal feature selection and threshold selection techniques. The multi-modal feature selection framework is based on an optimization strategy which consists of 3 stages: mutual information filtering, principal component dimensionality reduction, and dynamic adaptive lasso regression. It allows to extract the high contributing health factors from 28 original features and reduces 85 % of the feature dimensions while retaining high correlation features, which solves the problems of feature redundancy and nonlinear correlation. The MTRN architecture incorporates a multi-channel attention mechanism to dynamically assign key information, applies KAN to learn univariate basis functions in order to fit nonlinear degradation, and establishes a threshold residual shrinkage module to distinguish between noise and real degradation trends. On the Dataset A/B, which is a self-built SiB dataset, the RMSE, MAE, and MAXE of MTRN are reduced by 40.28–60.56 % compared with those of the TCN and KAN models. Under extreme noise conditions of 150 mV, the increase of MAE is controlled within 0.85 %. On the Dataset C/D, the MAE values are respectively 0.62 % and 0.73 %, which verifies the high adaptability of the proposed model to the differences in chemical systems. This study provides a high-precision and high-robustness solution for the SOH estimation of SiBs.
AB - Sodium-ion batteries (SiBs) have been widely studied in the field of energy storage due to their abundant resources and high safety. However, their state-of-health (SOH) estimation is not straightforward, due to the complex aging mechanisms and dynamic working conditions. This study proposes an SOH estimation framework based on Multi-channel Threshold Residual Network (MTRN), which combines multi-modal feature selection and threshold selection techniques. The multi-modal feature selection framework is based on an optimization strategy which consists of 3 stages: mutual information filtering, principal component dimensionality reduction, and dynamic adaptive lasso regression. It allows to extract the high contributing health factors from 28 original features and reduces 85 % of the feature dimensions while retaining high correlation features, which solves the problems of feature redundancy and nonlinear correlation. The MTRN architecture incorporates a multi-channel attention mechanism to dynamically assign key information, applies KAN to learn univariate basis functions in order to fit nonlinear degradation, and establishes a threshold residual shrinkage module to distinguish between noise and real degradation trends. On the Dataset A/B, which is a self-built SiB dataset, the RMSE, MAE, and MAXE of MTRN are reduced by 40.28–60.56 % compared with those of the TCN and KAN models. Under extreme noise conditions of 150 mV, the increase of MAE is controlled within 0.85 %. On the Dataset C/D, the MAE values are respectively 0.62 % and 0.73 %, which verifies the high adaptability of the proposed model to the differences in chemical systems. This study provides a high-precision and high-robustness solution for the SOH estimation of SiBs.
KW - Attention mechanism
KW - Energy storage
KW - Feature selection
KW - Sodium-ion batteries
KW - State of health
UR - http://www.scopus.com/pages/publications/105011744371
U2 - 10.1016/j.energy.2025.137744
DO - 10.1016/j.energy.2025.137744
M3 - Article
AN - SCOPUS:105011744371
SN - 0360-5442
VL - 334
JO - Energy
JF - Energy
M1 - 137744
ER -