World Model for Battery Degradation Prediction Under Non-Stationary Aging
arXiv cs.LG / 3/12/2026
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Key Points
- Introduces battery degradation prognosis as a world-model problem that encodes per-cycle voltage, current, and temperature time-series into a latent state and propagates it forward to forecast an 80-cycle future trajectory.
- The training objective incorporates a Single Particle Model (SPM) constraint to inject electrochemical knowledge into the learned dynamics, improving predictions at key degradation phases.
- On the Severson LiFePO4 dataset (138 cells), iterative rollouts halve the trajectory forecast error compared with direct regression using the same encoder.
- The work highlights potential for more accurate remaining-life forecasts under non-stationary aging, with implications for battery management and lifecycle planning.
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