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Abstract
High-throughput materials research is strongly required to accelerate the development of safe and high energy-density lithium-ion battery (LIB) applicable to electric vehicle and energy storage system. The artificial intelligence, including machine learning with neural networks such as Boltzmann neural networks and convolutional neural networks (CNN), is a powerful tool to explore next-generation electrode materials and functional additives. In this paper, we develop a prediction model that classifies the major composition (e.g., 333, 523, 622, and 811) and different states (e.g., pristine, pre-cycled, and 100 times cycled) of various Li(Ni, Co, Mn)O2 (NCM) cathodes via CNN trained on scanning electron microscopy (SEM) images. Based on those results, our trained CNN model shows a high accuracy of 99.6% where the number of test set is 3840. In addition, the model can be applied to the case of untrained SEM data of NCM cathodes with functional electrolyte additives.
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1 Korea Advanced Institute of Science and Technology (KAIST), Department of Materials Science and Engineering, Daejeon, Korea (GRID:grid.37172.30) (ISNI:0000 0001 2292 0500); Electronics and Telecommunications Research Institute (ETRI), ICT Creative Laboratory, Daejeon, Korea (GRID:grid.36303.35) (ISNI:0000 0000 9148 4899); Kyungpook National University, Department of Smart Mobility Engineering, Advanced Institute of Science and Technology, Daegu, Korea (GRID:grid.258803.4) (ISNI:0000 0001 0661 1556)
2 Korea Advanced Institute of Science and Technology (KAIST), Department of Materials Science and Engineering, Daejeon, Korea (GRID:grid.37172.30) (ISNI:0000 0001 2292 0500)
3 Electronics and Telecommunications Research Institute (ETRI), ICT Creative Laboratory, Daejeon, Korea (GRID:grid.36303.35) (ISNI:0000 0000 9148 4899)
4 Drexel University, Department of Mechanical Engineering and Mechanics, Philadelphia, USA (GRID:grid.166341.7) (ISNI:0000 0001 2181 3113)
5 Korea Advanced Institute of Science and Technology (KAIST), Department of Materials Science and Engineering, Daejeon, Korea (GRID:grid.37172.30) (ISNI:0000 0001 2292 0500); Korea Advanced Institute of Science and Technology (KAIST), KAIST Institute for NanoCentury (KINC), Daejeon, Korea (GRID:grid.37172.30) (ISNI:0000 0001 2292 0500)