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Perspective—Combining Physics and Machine Learning to Predict Battery Lifetime
Author(s) -
Muratahan Aykol,
Chirranjeevi Balaji Gopal,
Abraham Anapolsky,
Patrick Herring,
Bruis van Vlijmen,
Marc D. Berliner,
Martin Z. Bazant,
Richard D. Braatz,
William C. Chueh,
Brian D. Storey
Publication year - 2021
Publication title -
journal of the electrochemical society
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.258
H-Index - 271
eISSN - 1945-7111
pISSN - 0013-4651
DOI - 10.1149/1945-7111/abec55
Subject(s) - battery (electricity) , perspective (graphical) , computer science , artificial intelligence , machine learning , physics , power (physics) , quantum mechanics
Forecasting the health of a battery is a modeling effort that is critical to driving improvements in and adoption of electric vehicles. Purely physics-based models and purely data-driven models have advantages and limitations of their own. Considering the nature of battery data and end-user applications, we outline several architectures for integrating physics-based and machine learning models that can improve our ability to forecast battery lifetime. We discuss the ease of implementation, advantages, limitations, and viability of each architecture, given the state of the art in the battery and machine learning fields.

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