2023
DOI: 10.1002/advs.202301737
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Battery Charge Curve Prediction via Feature Extraction and Supervised Machine Learning

Abstract: Real‐time onboard state monitoring and estimation of a battery over its lifetime is indispensable for the safe and durable operation of battery‐powered devices. In this study, a methodology to predict the entire constant‐current cycling curve with limited input information that can be collected in a short period of time is developed. A total of 10 066 charge curves of LiNiO2‐based batteries at a constant C‐rate are collected. With the combination of a feature extraction step and a multiple linear regression st… Show more

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Cited by 3 publications
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