The content introduces BatteryML, an open-source platform addressing challenges in battery degradation modeling. It discusses the importance of predicting battery performance degradation, the complexities of lithium-ion batteries, challenges faced by machine learning experts and battery researchers, and the contributions of BatteryML in unifying data processing and model implementation. The content also delves into data extraction, key metrics, quotations supporting the core message, evaluation of various models for remaining useful life prediction, state of health estimation, state of charge estimation, feature engineering, automatic label annotation, and model development.
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by Han Zhang,Xi... alle arxiv.org 03-26-2024
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