Abstract
Early battery life prediction models are most useful for R&D if they help us understand the early changes in battery electrochemical response that correspond with long-term degradation and failure. Linear regression models such as Fused lasso and Partial Least Squares can fit coefficients directly to high-dimensional electrochemical data like capacity-voltage and ..delta..V-state-of-charge, i.e., Q(V) and ..delta..V(SOC) curves, learning coefficients that can be physically interpreted. We leverage the ISU-ILCC battery aging data set to learn high-dimensional coefficients for early battery life prediction from traditional slow-rate capacity check data, demonstrating learning on Q(V), dQ.dV-1, and ..delta..V(SOC) curves. A thorough study on the dependence of coefficient values on train/test size and data preprocessing methods is made, demonstrating the reliability of high-dimensional regression approaches unless very small amounts of data are used for model training. For this data set, coefficients from Q(V) and dQ.dV-1 models highlight changes in electrode stoichiometry due to lithium loss, while ..delta..V(SOC) coefficients highlight changes in positive electrode diffusivity due to particle cracking as well as electrode stoichiometry shifts. By directly interpreting the coefficients of a regression model, we make physical insights into battery degradation mechanisms without requiring the assumptions of traditional battery data analysis methods.
| Original language | American English |
|---|---|
| Number of pages | 11 |
| Journal | Journal of the Electrochemical Society |
| Volume | 172 |
| Issue number | 4 |
| DOIs | |
| State | Published - 2025 |
NLR Publication Number
- NREL/JA-5700-92272
Keywords
- battery
- battery lifetime
- explainable AI
- machine-learning