Issue 5, 2022

Performance-oriented multistage design for multi-principal element alloys with low cost yet high efficiency

Abstract

Multi-principal element alloys (MPEAs) with remarkable performances possess great potential as structural, functional, and smart materials. However, their efficient performance-orientated design in a wide range of compositions and types is an extremely challenging issue, because of properties strongly dependent upon the composition and composition-dominated microstructure. Here, we propose a multistage-design approach integrating machine learning, physical laws and a mathematical model for developing the desired-property MPEAs in a very time-efficient way. Compared to the existing physical model- or machine-learning-assisted material development, the forward-and-inverse problems, including identifying the target property and unearthing the optimal composition, can be tackled with better efficiency and higher accuracy using our proposed avenue, which defeats the one-step component-performance design strategy by multistage-design coupling constraints. Furthermore, we developed a new multi-phase MPEA at the minimal time and cost, whose high strength-ductility synergy exceeded those of its system and subsystem reported so far by searching for the optimal combination of phase fraction and composition. The present work suggests that the property-guided composition and microstructure are precisely tailored through the newly built approach with significant reductions of the development period and cost, which is readily extendable to other multi-principal element materials.

Graphical abstract: Performance-oriented multistage design for multi-principal element alloys with low cost yet high efficiency

Supplementary files

Article information

Article type
Communication
Submitted
25 Nov 2021
Accepted
15 Mar 2022
First published
15 Mar 2022

Mater. Horiz., 2022,9, 1518-1525

Author version available

Performance-oriented multistage design for multi-principal element alloys with low cost yet high efficiency

J. Li, B. Xie, L. Li, B. Liu, Y. Liu, D. Shaysultanov, Q. Fang, N. Stepanov and P. K. Liaw, Mater. Horiz., 2022, 9, 1518 DOI: 10.1039/D1MH01912K

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