Machine-learning-guided discovery and experimental synthesis of rare-earth-free magnetic ternary compounds
ORAL
Abstract
Magnetic materials are essential for energy generation and information devices, and they play an important role in advanced technologies and green energy economies. Currently, the most widely used magnets contain rare earth (RE) elements. An outstanding challenge of notable scientific interest is the discovery and synthesis of novel magnetic materials without RE elements that meet the performance and cost goals for advanced electromagnetic devices. Here, we report our discovery and synthesis of an RE-free magnetic compound, Fe3CoB2, through an efficient feedback framework by integrating machine learning (ML), an adaptive genetic algorithm, first-principles calculations, and experimental synthesis. Magnetic measurements show that Fe3CoB2 exhibits a high magnetic anisotropy (K1 = 1.2 MJ/m3) and saturation magnetic polarization (Js = 1.39 T), which is suitable for RE-free permanent-magnet applications. Our ML-guided approach presents a promising paradigm for efficient materials design and discovery and can also be applied to the search for other functional materials.
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Presenters
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Cai-Zhuang Wang
Ames Laboratory, Iowa State University, Ames National Laboratory
Authors
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Weiyi Xia
Ames Laboratory, Iowa State University
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Cai-Zhuang Wang
Ames Laboratory, Iowa State University, Ames National Laboratory
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Masahiro Sakurai
Univ of Tokyo-Kashiwanoha
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Balamurugan Balasubramanian
University of Nebraska - Lincoln
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Timothy Liao
University of Texas at Austin
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Huaijun Sun
Zhejiang A & F University, Zhejiang A&F University, Zhejiang Agriculture and Forestry University
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Chao Zhang
Yantai University
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Renhai Wang
Guangdong University of Technology
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Kai-Ming Ho
Iowa State University, Ames National Laboratory
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James R Chelikowsky
University of Texas at Austin
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David J Sellmyer
University of Nebraska - Lincoln