Conformalized Transfer Learning for Li-ion Battery State of Health Forecasting under Manufacturing and Usage Variability
AI 摘要
针对锂电池SOH预测,提出结合领域自适应和不确定性量化的迁移学习框架,提高预测的泛化性和可信度。
主要贡献
- 提出基于MMD的领域自适应迁移学习方法
- 利用Conformal Prediction进行不确定性量化
- 在锂电池SOH预测任务中验证了方法的有效性
方法论
使用LSTM模型,通过MMD进行领域自适应,CP进行不确定性量化,实现跨异构电池的SOH预测。
原文摘要
Accurate forecasting of state-of-health (SOH) is essential for ensuring safe and reliable operation of lithium-ion cells. However, existing models calibrated on laboratory tests at specific conditions often fail to generalize to new cells that differ due to small manufacturing variations or operate under different conditions. To address this challenge, an uncertainty-aware transfer learning framework is proposed, combining a Long Short-Term Memory (LSTM) model with domain adaptation via Maximum Mean Discrepancy (MMD) and uncertainty quantification through Conformal Prediction (CP). The LSTM model is trained on a virtual battery dataset designed to capture real-world variability in electrode manufacturing and operating conditions. MMD aligns latent feature distributions between simulated and target domains to mitigate domain shift, while CP provides calibrated, distribution-free prediction intervals. This framework improves both the generalization and trustworthiness of SOH forecasts across heterogeneous cells.