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The Application of Data-Driven Methods and Physics-Based Learning for Improving Battery Safety

Journal

JOULE
Volume 5, Issue 2, Pages 316-329

Publisher

CELL PRESS
DOI: 10.1016/j.joule.2020.11.018

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The article discusses how to improve the accuracy of battery failure prediction by designing experiments, processing data, applying data prediction methods, and using physics knowledge to reduce the number of experiments and costs.
Enabling accurate prediction of battery failure will lead to safer battery systems, as well as accelerating cell design and manufacturing processes for increased consistency and reliability. Data-driven prediction methods have shown promise for accurately predicting cell behaviors with low computational cost, but they are expensive to train. Furthermore, given that the risk of battery failure is already very low, gathering enough relevant data to facilitate data-driven predictions is extremely challenging. Here, a perspective for designing experiments to facilitate a relatively low number of tests, handling the data, applying data-driven methods, and improving our understanding of behavior-dictating physics is outlined. This perspective starts with effective strategies for experimentally replicating rare failure scenarios and thus reducing the number of experiments, and proceeds to describe means to acquire high-quality datasets, apply data-driven prediction techniques, and to extract physical insights into the events that lead to failure by incorporating physics into data-driven approaches.

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