4.8 Article

Machine learning assisted materials design and discovery for rechargeable batteries

期刊

ENERGY STORAGE MATERIALS
卷 31, 期 -, 页码 434-450

出版社

ELSEVIER
DOI: 10.1016/j.ensm.2020.06.033

关键词

Machine learning; Rechargeable battery; Materials design and discovery; Feature engineering

资金

  1. National Key R&D Program of China [2017YFB0701502, 2017YFB0701600]
  2. National Natural Science Foundation of China [51622207, 11874254, U1630134]
  3. Shanghai Pujiang Program [2019PJD016]
  4. Open Project of the State Key Laboratory of Advanced Special Steel, Shanghai University, China [SKLASS2018-01]
  5. Project of the State Key Laboratory of Advanced Special Steel, Shanghai University, China [SKLASS2019-Z023]
  6. Shanghai Engineering Research Center of Intelligent Computing System [19DZ2252600]

向作者/读者索取更多资源

Machine learning plays an important role in accelerating the discovery and design process for novel electrochemical energy storage materials. This review aims to provide the state-of-the-art and prospects of machine learning for the design of rechargeable battery materials. After illustrating the key concepts of machine learning and basic procedures for applying machine learning in rechargeable battery materials science, we focus on how to obtain the most important features from the specific physical, chemical and/or other properties of material by using wrapper feature selection method, embedded feature selection method, and the combination of these two methods. And then, the applications of machine learning in rechargeable battery materials design and discovery are reviewed, including the property prediction for liquid electrolytes, solid electrolytes, electrode materials, and the discovery of novel rechargeable battery materials through component prediction and structure prediction. More importantly, we discuss the key challenges related to machine learning in rechargeable battery materials science, including the contradiction between high dimension and small sample, the conflict between the complexity and accuracy of machine learning models, and the inconsistency between learning results and domain expert knowledge. In response to these challenges, we propose possible countermeasures and forecast potential directions of future research. This review is expected to shed light on machine learning in rechargeable battery materials design and property optimization.

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