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Small-Sample Battery Capacity Prediction Using a Multi-Feature Transfer Learning Framework

Xiaoming Lu, Xianbin Yang, Xinhong Wang, Yu Shi, Jing Wang, Yiwen Yao, Xuefeng Gao, Haicheng Xie, Siyan Chen

2025Batteries9 citationsDOIOpen Access PDF

Abstract

The accurate prediction of lithium-ion battery capacity is crucial for the safe and efficient operation of battery systems. Although data-driven approaches have demonstrated effectiveness in lifetime prediction, the acquisition of lifecycle data for long-life lithium batteries remains a significant challenge, limiting prediction accuracy. Additionally, the varying degradation trends under different operating conditions further hinder the generalizability of existing methods. To address these challenges, we propose a Multi-feature Transfer Learning Framework (MF-TLF) for predicting battery capacity in small-sample scenarios across diverse operating conditions (different temperatures and C-rates). First, we introduce a multi-feature analysis method to extract comprehensive features that characterize battery aging. Second, we develop a transfer learning-based data-driven framework, which leverages pre-trained models trained on large datasets to achieve a strong prediction performance in data-scarce scenarios. Finally, the proposed method is validated using both experimental and open-access datasets. When trained on a small sample dataset, the predicted RMSE error consistently stays within 0.05 Ah. The experimental results highlight the effectiveness of MF-TLF in achieving high prediction accuracy, even with limited data.

Topics & Concepts

Generalizability theoryComputer scienceTransfer of learningBattery (electricity)Feature (linguistics)Sample (material)Machine learningSample size determinationLimitingMean squared errorPredictive modellingArtificial intelligenceBattery capacityData miningPower (physics)StatisticsEngineeringMathematicsQuantum mechanicsMechanical engineeringPhilosophyChromatographyLinguisticsChemistryPhysicsAdvanced Battery Technologies ResearchAdvancements in Battery MaterialsAdvanced Battery Materials and Technologies
Small-Sample Battery Capacity Prediction Using a Multi-Feature Transfer Learning Framework | Litcius