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Bridging multimodal data and battery science with machine learning

  • Yanbin Ning
  • , Feng Yang
  • , Yan Zhang
  • , Zhuomin Qiang
  • , Geping Yin
  • , Jiajun Wang*
  • , Shuaifeng Lou*
  • *Corresponding author for this work
  • School of Chemistry and Chemical Engineering, Harbin Institute of Technology

Research output: Contribution to journalReview articlepeer-review

Abstract

Multimodal data hold paramount significance in the realm of battery science research. Traditional manual tools for data analysis have proven inadequate in meeting the demands of processing and mining multimodal data information. Machine learning emerges as a vital conduit between multimodal data and battery science. This review comprehensively organizes the recent advancements in multimodal data-driven research employing machine learning methodologies within the field of battery research. Specifically, it explores material-data-driven approaches to accelerate the development of advanced battery materials and image-data-driven schemes for cross-scale battery structure analysis and image enhancement, as well as battery assessment driven by condition data using both traditional machine learning and neural-network models. Furthermore, this review delves into the full potential of machine learning in the domain of advanced battery science research, encompassing aspects such as the accumulation of training data, the development of machine learning models, and the application of advanced analysis methods.

Original languageEnglish
Pages (from-to)2011-2032
Number of pages22
JournalMatter
Volume7
Issue number6
DOIs
StatePublished - 5 Jun 2024
Externally publishedYes

Keywords

  • battery
  • data-driven
  • intelligent analysis
  • machine learning
  • multimodal data

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