Machine Learning-Guided Discovery of Ce-based Ternary Intermetallics
ORAL
Abstract
The discovery of novel quantum materials within ternary phase spaces containing antagonistic pair such as Fe with Bi, Pb, In, and Ag, presents significant challenges yet holds great potential. In this work, we investigate the stabilization of these immiscible pairs through the integration of Cerium (Ce), an abundant rare-earth and cost-effective element. By employing a machine learning (ML)-guided framework, particularly crystal graph convolutional neural networks (CGCNN), combined with first-principles calculations, we efficiently explore the composition/structure space and predict 9 stable and 37 metastable Ce-Fe-X (X=Bi, Pb, In and Ag) ternary compounds. Our findings include the identification of multiple new stable and metastable phases, which are evaluated for their structural and energetic properties. These discoveries not only contribute to the advancement of quantum materials but also offer viable alternatives to critical rare earth elements, underscoring the importance of Ce-based intermetallic compounds in technological applications.
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Publication: https://arxiv.org/abs/2407.11208
Presenters
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Weiyi Xia
Ames National Laboratory
Authors
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Weiyi Xia
Ames National Laboratory
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Wei-Shen Tee
Iowa State University
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Paul C Canfield
Iowa State University, Ames National Laboratory, and Department of Physics and Astronomy, Iowa State University, Ames National Laboratory and Iowa State University
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Fernando A Garcia
Iowa State University
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Raquel A. Ribeiro
Iowa State University
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Yongbin Lee
Iowa State University
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Liqin Ke
Ames National Laboratory
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Rebecca A Flint
Iowa State University
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Cai-Zhuang Wang
Ames National Lab, Iowa State University