Machine Learning-Guided Discovery of Ternary Compounds Containing La, P, and Group 14 Elements

ORAL

Abstract

We integrate a deep machine learning (ML) method with first-principles calculations to efficiently search for the energetically favorable ternary compounds. Using La–Si–P as a prototype system, we demonstrate that ML-guided first-principles calculations can efficiently explore crystal structures and their relative energetic stabilities, thus greatly accelerate the pace of material discovery. A number of new La–Si–P ternary compounds with formation energies less than 30 meV/atom above the known ternary convex hull are discovered. Among them, the formation energies of La5SiP3 and La2SiP phases are only 2 and 10 meV/atom, respectively, above the convex hull. These two compounds are dynamically stable with no imaginary phonon modes. Moreover, by replacing Si with heavier-group 14 elements in the eight lowest-energy La–Si–P structures from our ML-guided predictions, a number of low-energy La–X–P phases (X = Ge, Sn, Pb) are predicted.

**Work at Ames National Laboratory was supported by US DOE-BES.

Presenters

  • Weiyi Xia

    • Ames Laboratory
    • Iowa State University

Authors

  • Weiyi Xia

    • Ames Laboratory
    • Iowa State University
  • Huaijun Sun

    • Zhejiang A & F University
    • Zhejiang A&F University
    • Zhejiang Agriculture and Forestry University
  • Chao Zhang

    • Yantai University
  • Ling Tang

    • Zhejiang University of Technology
  • Renhai Wang

    • Guangdong University of Technology
  • Georgiy Akopov

    • Rutgers University–Newark
  • Nethmi W Hewage

    • Ames Laboratory
  • Kai-Ming Ho

    • Iowa State University
    • Ames National Laboratory
  • Kirill Kovnir

    • Ames Laboratory
  • Cai-Zhuang Wang

    • Ames Laboratory
    • Iowa State University
    • Ames National Laboratory