Integrating atomistic simulations and machine learning to design multi- principal element alloys with superior elastic modulus

M Grant and MR Kunz and K Iyer and LI Held and T Tasdizen and JA Aguiar and PP Dholabhai, JOURNAL OF MATERIALS RESEARCH, 37, 1497-1512 (2022).

DOI: 10.1557/s43578-022-00557-7

Multi-principal element, high entropy alloys (HEAs) are an emerging class of materials that have found applications across the board. Owing to the multitude of possible candidate alloys, exploration and compositional design of HEAs for targeted applications is challenging since it necessitates a rational approach to identify compositions exhibiting enriched performance. Here, we report an innovative framework that integrates molecular dynamics and machine learning to explore a large chemical-configurational space for evaluating elastic modulus of equiatomic and non-equiatomic HEAs along primary crystallographic directions. Vital thermodynamic properties and machine learning features have been incorporated to establish fundamental relationships correlating Young's modulus with Gibbs free energy, valence electron concentration, and atomic size difference. In HEAs, as the number of elements increases, interactions between the elastic modulus values and features become increasingly nested, but tractable as long as non- linearity is accounted. Basic design principles are offered to predict HEAs with enhanced mechanical attributes.

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