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Two-Shot Optimization of Compositionally Complex Refractory Alloys

Authors :
Paramore, James D.
Butler, Brady G.
Hurst, Michael T.
Hastings, Trevor
Lewis, Daniel O.
Norris, Eli
Barkai, Benjamin
Cline, Joshua
Miller, Braden
Cortes, Jose
Karaman, Ibrahim
Pharr, George M.
Arroyave, Raymundo
Publication Year :
2024

Abstract

In this paper, a synergistic computational/experimental approach is presented for the rapid discovery and characterization of novel alloys within the compositionally complex (i.e., "medium/high entropy") refractory alloy space of Ti-V-Nb-Mo-Hf-Ta-W. This was demonstrated via a material design cycle aimed at simultaneously maximizing the objective properties of high specific hardness (hardness normalized by density) and high specific elastic modulus (elastic modulus normalized by density). This framework utilizes high-throughput computational thermodynamics and intelligent filtering to first reduce the untenably large alloy space to a feasible size, followed by an iterative design cycle comprised of high-throughput synthesis, processing, and characterization in batch sizes of 24 alloys. After the first iteration, Bayesian optimization was utilized to inform selection of the next batch of 24 alloys. This paper demonstrates the benefit of using batch Bayesian optimization (BBO) in material design, as significant gains in the objective properties were observed after only two iterations or "shots" of the design cycle without using any prior knowledge or physical models of how the objective properties relate to the design inputs (i.e., composition). Specifically, the hypervolume of the Pareto front increased by 54% between the first and second iterations. Furthermore, 10 of the 24 alloys in the second iteration dominated all alloys from the first iteration.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.07130
Document Type :
Working Paper