Magnetic iron-cobalt silicides discovered using machine-learning

ORAL

Abstract

We employ a machine learning (ML) framework coupled with first principles calculations to discover rare-earth-free magnetic iron-cobalt silicide compounds. Deep machine learning models are used to screen over 350,000 hypothetical structures to extract promising a small subset of structures and compositions for further studies by first-principles calculations. We use an adaptive genetic algorithm to search for new lower energy structures based on the promising chemical compositions. This ML-guided approach considerably accelerates the pace of materials discovery. Our study discovered five new ternary Fe-Co-Si compounds that exhibit high magnetization (Js > 1.0 Tesla), easy-axis magnetic anisotropy (K1 ≥ 1.0 MJ/m^3), and Curie temperature (Tc > 840 K). The formation energies of these compounds are within 70 meV/atom relative to the ternary convex hull, suggesting that these compounds could be synthesized.

**This work is supported by the NSF under Grant No. DMREF-1729202 and No. DMREF-1729677.

Publication: Manuscript in preparation.

Presenters

  • Timothy Liao

    • University of Texas at Austin

Authors

  • Timothy Liao

    • University of Texas at Austin
  • Weiyi Xia

    • Ames Laboratory
    • Iowa State University
  • Masahiro Sakurai

    • Univ of Tokyo-Kashiwanoha
  • Renhai Wang

    • Guangdong University of Technology
  • Chao Zhang

    • Yantai University
  • Huaijun Sun

    • Zhejiang A & F University
    • Zhejiang A&F University
    • Zhejiang Agriculture and Forestry University
  • Kai-Ming Ho

    • Iowa State University
    • Ames National Laboratory
  • Cai-Zhuang Wang

    • Ames Laboratory
    • Iowa State University
    • Ames National Laboratory
  • James R Chelikowsky

    • University of Texas at Austin