articleNature Machine IntelligenceJan 15, 2025HYBRID OA

Battery lifetime prediction across diverse ageing conditions with inter-cell deep learning

Microsoft Research Asia (China) · Tsinghua University

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Abstract

Abstract Accurately predicting battery lifetime in early cycles holds tremendous value in real-world applications. However, this task poses significant challenges due to diverse factors influencing complex battery capacity degradation, such as cycling protocols, ambient temperatures and electrode materials. Moreover, cycling under specific conditions is both resource-intensive and time-consuming. Existing predictive models, primarily developed and validated within a restricted set of ageing conditions, thus raise doubts regarding their extensive applicability. Here we introduce BatLiNet, a deep learning framework tailored to predict battery lifetime reliably across a variety of ageing conditions. The…

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