npj Computational Materials (Jul 2022)

Distilling physical origins of hardness in multi-principal element alloys directly from ensemble neural network models

  • D. Beniwal,
  • P. Singh,
  • S. Gupta,
  • M. J. Kramer,
  • D. D. Johnson,
  • P. K. Ray

DOI
https://doi.org/10.1038/s41524-022-00842-3
Journal volume & issue
Vol. 8, no. 1
pp. 1 – 11

Abstract

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Abstract Despite a plethora of data being generated on the mechanical behavior of multi-principal element alloys, a systematic assessment remains inaccessible via Edisonian approaches. We approach this challenge by considering the specific case of alloy hardness, and present a machine-learning framework that captures the essential physical features contributing to hardness and allows high-throughput exploration of multi-dimensional compositional space. The model, tested on diverse datasets, was used to explore and successfully predict hardness in Al x Ti y (CrFeNi)1-x-y , Hf x Co y (CrFeNi)1-x-y and Al x (TiZrHf)1-x systems supported by data from density-functional theory predicted phase stability and ordering behavior. The experimental validation of hardness was done on TiZrHfAl x . The selected systems pose diverse challenges due to the presence of ordering and clustering pairs, as well as vacancy-stabilized novel structures. We also present a detailed model analysis that integrates local partial-dependencies with a compositional-stimulus and model-response study to derive material-specific insights from the decision-making process.