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Artificial Intelligence Applied to Battery Research: Hype or Reality?

Teo LombardoMarc DuquesnoyHassna El-BouysidyFabian ÅrénAlfonso Gallo-BuenoPeter Bjørn JørgensenArghya BhowmikArnaud DemortièreElixabete AyerbeFrancisco AlcaideMarine ReynaudJavier CarrascoAlexis GrimaudChao ZhangTejs VeggePatrik JohanssonAlejandro A Franco
Published in: Chemical reviews (2021)
This is a critical review of artificial intelligence/machine learning (AI/ML) methods applied to battery research. It aims at providing a comprehensive, authoritative, and critical, yet easily understandable, review of general interest to the battery community. It addresses the concepts, approaches, tools, outcomes, and challenges of using AI/ML as an accelerator for the design and optimization of the next generation of batteries-a current hot topic. It intends to create both accessibility of these tools to the chemistry and electrochemical energy sciences communities and completeness in terms of the different battery R&D aspects covered.
Keyphrases
  • artificial intelligence
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