Article, 2024

Identification of the aging state of lithium-ion batteries via temporal convolution network and self-attention mechanism

Journal of Energy Storage, ISSN 2352-152X, Volume 84, 10.1016/j.est.2024.110999

Contributors

Ke L. [1] [2] Fang L. [1] Meng J. 0000-0003-3490-5089 (Corresponding author) [3] Peng J. 0000-0002-7372-796X [4] Wu J. 0000-0003-3320-3704 [5] Lin M. 0000-0001-6637-2702 (Corresponding author) [1] [2] Stroe D.-I. 0000-0002-2938-8921 [6]

Affiliations

  1. [1] Chinese Academy of Sciences
  2. [NORA names: China; Asia, East];
  3. [2] Fujian Normal University
  4. [NORA names: China; Asia, East];
  5. [3] Xi'an Jiaotong University
  6. [NORA names: China; Asia, East];
  7. [4] Nanjing Institute of Technology
  8. [NORA names: China; Asia, East];
  9. [5] Hefei University of Technology
  10. [NORA names: China; Asia, East];

Abstract

Deep learning methods have been widely used for battery aging state estimation with either manual or automatic features, while the contribution of multi-source features is rarely considered. To solve this problem, a hybrid method is proposed to combine the manual and automatic features based on a temporal convolution network (TCN) and a self-attention mechanism (SA). Specifically, the local voltage, capacity, and incremental capacity are manually extracted as battery aging features. Then, for extracting automatic features, TCN employs dilated convolution to capture the capacity regeneration phenomenon during battery degradation. Considering the contribution of multi-source features, we use SA to fuse the obtained manual and automatic features. Finally, the available capacity and remaining useful life of the battery are predicted using a fully connected neural network on one dataset from our lab, the Oxford University dataset, and the MIT University dataset. The experimental results show that the proposed method exhibits a high accuracy of aging state identification.

Keywords

Capacity, Lithium-ion batteries, Remaining useful life, Self-attention, Temporal convolution network

Funders

  • Ministry of Education of the People's Republic of China
  • Shanxi Provincial Key Research and Development Project
  • Natural Science Foundation of Fujian Province
  • National Natural Science Foundation of China

Data Provider: Elsevier