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Deep learning of experimental electrochemistry for battery cathodes across diverse compositions

Authors :
Zhong, Peichen
Zhong, Peichen
Deng, Bowen
He, Tanjin
Lun, Zhengyan
Ceder, Gerbrand
Zhong, Peichen
Zhong, Peichen
Deng, Bowen
He, Tanjin
Lun, Zhengyan
Ceder, Gerbrand
Source :
Joule; vol 8, iss 6, 1837-1854; 2542-4785
Publication Year :
2024

Abstract

Artificial intelligence (AI) has emerged as a tool for discovering and optimizing novel battery materials. However, the adoption of AI in battery cathode representation and discovery is still limited due to the complexity of optimizing multiple performance properties and the scarcity of high-fidelity data. We present a machine learning model (DRXNet) for battery informatics and demonstrate the application in the discovery and optimization of disordered rocksalt (DRX) cathode materials. We have compiled the electrochemistry data of DRX cathodes over the past 5 years, resulting in a dataset of more than 19,000 discharge voltage profiles on diverse chemistries spanning 14 different metal species. Learning from this extensive dataset, our DRXNet model can capture critical features in the cycling curves of DRX cathodes under various conditions. Our approach offers a data-driven solution to facilitate the rapid identification of novel cathode materials, accelerating the development of next-generation batteries for carbon neutralization.

Details

Database :
OAIster
Journal :
Joule; vol 8, iss 6, 1837-1854; 2542-4785
Notes :
application/pdf, Joule vol 8, iss 6, 1837-1854 2542-4785
Publication Type :
Electronic Resource
Accession number :
edsoai.on1452694444
Document Type :
Electronic Resource