2024
DOI: 10.1002/adts.202401048
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Machine‐Learned Modeling for Accelerating Organic Solvent Design in Metal‐Ion Batteries

Wiwittawin Sukmas,
Jiaqian Qin,
Rungroj Chanajaree

Abstract: Organic solvents offer a promising avenue for enhancing metal‐ion battery performance, for instance, in suppressing dendritic formation. To expedite the discovery of optimal electrolyte formulations, this study integrates density functional theory calculations with machine learning to accurately predict binding energies between metal ions and organic solvents. Leveraging a vast dataset of over 300 organic molecules, an extra trees regressor model is developed and demonstrated to exhibit exceptional predictive … Show more

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