Frontiers in Materials (Jun 2021)

Machine Learning Based Methodology to Predict Point Defect Energies in Multi-Principal Element Alloys

  • Anus Manzoor,
  • Gaurav Arora,
  • Bryant Jerome,
  • Nathan Linton,
  • Bailey Norman,
  • Dilpuneet S. Aidhy

DOI
https://doi.org/10.3389/fmats.2021.673574
Journal volume & issue
Vol. 8

Abstract

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Multi-principal element alloys (MPEAs) are a new class of alloys that consist of many principal elements randomly distributed on a crystal lattice. The random presence of many elements lends large variations in the point defect formation and migration energies even within a given alloy composition. Compounded by the fact that there could be exponentially large number of MPEA compositions, there is a major computational challenge to capture complete point-defect energy phase-space in MPEAs. In this work, we present a machine learning based framework in which the point defect energies in MPEAs are predicted from a database of their constituent binary alloys. We demonstrate predictions of vacancy migration and formation energies in face centered cubic ternary, quaternary and quinary alloys in Ni-Fe-Cr-Co-Cu system. A key benefit of building this framework based on the database of binary alloys is that it enables defect-energy predictions in alloy compositions that may be unearthed in future. Furthermore, the methodology enables identifying the impact of a given alloying element on the defect energies thereby enabling design of alloys with tailored defect properties.

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