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A Generic physics-informed machine learning framework for battery remaining useful life prediction using small early-stage lifecycle data

Author

Listed:
  • Deng, Weikun
  • Le, Hung
  • Nguyen, Khanh T.P.
  • Gogu, Christian
  • Medjaher, Kamal
  • Morio, Jérôme
  • Wu, Dazhong

Abstract

Predicting the remaining useful life (RUL) of fast-charging lithium-ion batteries using early-stage lifecycle data is remains challenging due to limited run-to-failure data and lack of knowledge on battery degradation mechanisms. To address this issue, a generic Physics-Informed Machine Learning (PIML) framework is developed. The PIML framework consists of two parallel branches: a physics-informed (PI) branch and a data-driven branch. The PI branch is a neural network stacked by the linear projection layers with embedded physics knowledge, while the data-driven branch is a task-specific machine-learning model. In addition, a three-step training strategy is introduced, including (1) Training the data-driven branch, (2) Training the PI branch for aligning physical consistency without updating the hyperparameters in the data-driven branch, and (3) Fine-tuning both branches simultaneously to achieve optimal performance. To validate this framework, a physics-based model that represents the growth of solid electrolyte interphase (SEI) and a dilated convolutional neural network are implemented in the PI and data-driven branches, respectively. The solid electrolyte interphase-informed dilated convolutional neural network (SEI-DCN) model is demonstrated on the Stanford–MIT–Toyota-battery dataset. Using only four lifecycle data, the SEI-DCN model achieves very high prediction accuracy compared to standard dilated CNNs and other state-of-the-art models under various testing conditions and lifetime ranges. Moreover, the framework is generalizable to different physics-based battery degradation models.

Suggested Citation

  • Deng, Weikun & Le, Hung & Nguyen, Khanh T.P. & Gogu, Christian & Medjaher, Kamal & Morio, Jérôme & Wu, Dazhong, 2025. "A Generic physics-informed machine learning framework for battery remaining useful life prediction using small early-stage lifecycle data," Applied Energy, Elsevier, vol. 384(C).
  • Handle: RePEc:eee:appene:v:384:y:2025:i:c:s0306261925000443
    DOI: 10.1016/j.apenergy.2025.125314
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