Discovery of rare-earth-free magnetic ternary compounds using machine learning assisted adaptive genetic algorithms
ORAL
Abstract
The discovery of rare-earth-free permanent magnets is an active area of research. The absence of rare-earth elements will alleviate a pressing concern about the availability of rare-earth elements used in permanent magnets. These magnets are crucial for applications such as wind turbines, electric cars, and memory devices. Rare-earth magnets are special owing to a large magnetic anisotropy energy (𝐾1). In contrast, iron cobalt phosphides hold promise since doping P into cubic FeCo can induce anisotropy, leading to a large coercivity, without introducing rare-earth elements. We present a comprehensive search over the Fe-Co-P ternary space for magnets, utilizing recently developed adaptive machine learning feedback to efficiently screen over 850 000 structures. We focus on machine learning acceleration as a paradigm for materials design. Further adaptive genetic algorithm searches and first-principles calculations aid in the identification of 16 new structures below the known convex hull. Five of them possess high magnetic polarization (𝐽𝑠> 1 T). The structures with desirable magnetic properties center on (Fe,Co)2P. This supports conventional wisdom, which focuses on the mixture of the two known end compounds: Fe2P and Co2P. We find Fe7CoP4 shows the most promise (𝐽𝑠=1.03T and 𝐾1=0.83MJ/m3).
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Publication: Phys. Rev. Mater. 8, 104404 (2024).
Presenters
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Cai-Zhuang Wang
Ames National Lab, Iowa State University
Authors
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Cai-Zhuang Wang
Ames National Lab, Iowa State University
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Timothy Liao
University of Texas at Austin
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Weiyi Xia
Ames National Laboratory
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Masahiro Sakurai
Univ of Tokyo-Kashiwanoha
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Chao Zhang
Yantai University
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Huaijun Sun
Jiyang College of Zhejiang Agriculture and Forestry University
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Renhai Wang
Guangdong University of Technology
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Kai-Ming Ho
Iowa State University
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James R Chelikowsky
The University of Texas at Austin, University of Texas at Austin