Predicting battery lifetime under varying usage conditions from early aging data
Abstract
Accurate battery lifetime prediction is important for maintenance, warranties, and cell design. However, manufacturing variability and usage-dependent degradation make life prediction challenging. Here, we investigate new features derived from capacity-voltage data in early life to predict the lifetime of cells cycled under varying charge rates, discharge rates, and depths of discharge. The early-life features capture a cell's state of health and the change rate of component-level degradation modes. Using a newly generated dataset from 225 nickel-manganese-cobalt/graphite lithium-ion cells aged under a wide range of conditions, we demonstrate a lifetime prediction of in-distribution cells with 15.1% mean absolute percentage error (MAPE). A hierarchical Bayesian model shows improved performance on extrapolation, achieving 21.8% MAPE for out-of-distribution cells. Our approach highlights the importance of using domain knowledge of battery degradation to inform feature engineering and model construction. Further, a new publicly available battery lifelong aging dataset is provided.
- Publication:
-
Cell Reports Physical Science
- Pub Date:
- April 2024
- DOI:
- 10.1016/j.xcrp.2024.101891
- arXiv:
- arXiv:2307.08382
- Bibcode:
- 2024CRPS....501891L
- Keywords:
-
- lithium-ion;
- battery;
- aging;
- hierarchical;
- machine learning;
- early prediction;
- lifetime;
- open data;
- Computer Science - Machine Learning;
- Statistics - Machine Learning
- E-Print:
- Cell Reports Physical Science. 5(4), 101891. 2024