化学工程2026,Vol.54Issue(4):21-27,7.DOI:10.3969/j.issn.1005-9954.2026.04.004
基于时间卷积网络模型的锂离子电池健康状态估计
Lithium-ion battery state of health estimation based on temporal convolutional network
摘要
Abstract
With the rapid development of electric vehicles and energy storage systems,the estimation of state of health SOH of lithium-ion batteries becomes one of the key technologies to ensure system safety and reliability.However,the nonlinearity and complexity of battery degradation process make it difficult for traditional assessment methods to meet the requirements of high accuracy and real-time performance.Therefore,a battery SOH estimation method based on TCN(temporal convolutional network)and multi-health feature extraction was proposed.This method first extracted eight health features related to time,energy,capacity and incremental capacity from the battery's charge-discharge data.Then,grey relational analysis was used to evaluate the correlation between each feature and SOH,and those with correlation coefficients greater than 0.7 were selected as inputs for the model.Finally,the TCN model was employed to capture the causal relationship between the selected features and battery SOH,enabling accurate SOH estimation of battery.The experimental results show that the mean absolute error and root mean square error of this method on four batteries are all within 2%,and the maximum absolute error is less than 0.05,demonstrating high SOH accuracy and robustness.关键词
锂离子电池/健康状态/时间卷积网络Key words
lithium-ion battery/state of health/temporal convolutional network分类
信息技术与安全科学引用本文复制引用
陶冶,陈彦桥,王献文,王础,张平,余佩雯,郁亚娟,苏岳锋..基于时间卷积网络模型的锂离子电池健康状态估计[J].化学工程,2026,54(4):21-27,7.基金项目
国家自然科学基金资助项目(52074037) (52074037)
国家能源集团新能源技术研究院有限公司技术服务项目(XNYY-ZC-2024-31) (XNYY-ZC-2024-31)