Discovery of rare-earth-free magnetic ternary compounds using machine learning assisted adaptive genetic algorithms
ORAL
Abstract
Finding new materials with desired properties is a challenging task owing to the vast number of possible compositions and crystal structures. In order to address this problem, we outline a feedback loop scheme consisting of machine learning assisted high-throughput first-principles calculations and adaptive genetic algorithm. Our scheme enables efficient and accurate predictions of materials properties through a wide range of compositional and structural space, allowing the fast discovery of materials with desired properties. We illustrate the procedure to a ternary Fe-Co-B system, where we discovered hundreds of new metastable Fe-Co-B structures across the ternary phase space. Many of many of these new structures possess promising magnetic properties that can be used as rare-earth-free magnets.
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Presenters
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Weiyi Xia
Iowa State University
Authors
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Weiyi Xia
Iowa State University
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Masahiro Sakurai
Univ of Tokyo-Kashiwanoha
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Timothy Liao
University of Texas at Austin
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Renhai Wang
Guangdong University of Technology
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Chao Zhang
Yantai University
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Huaijun Sun
Iowa State University
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Balamurugan Balasubramanian
University of Nebraska - Lincoln
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David J Sellmyer
University of Nebraska-Lincoln, University of Nebraska - Lincoln
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Kai-Ming Ho
Ames Laboratory, The Ames Laboratory, Iowa State University, Department of Physics, Iowa State University, Ames, Iowa 50011, USA
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James R Chelikowsky
University of Texas at Austin, Texas Center for Superconductivity and Department of Chemistry, University of Houston, Houston, TX 77204, USA
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Cai-Zhuang Wang
Iowa State University