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Multi-objective Optimization-Oriented Generative Adversarial Design for Multi-principal Element Alloys

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posted on 2025-04-10, 05:07 authored by Z Li, Nick BirbilisNick Birbilis
AbstractThe discovery of novel alloys, such as multi-principal element alloys (MPEAs)—inclusive of the so-called high-entropy alloys—remains essential for technological advancement. Multi-principal element alloys can manifest uniquely favorable mechanical properties, but the complexity of their compositions results in their design and performance being challenging to understand. With the emergence of the materials genome concept, there is potential to pursue novel materials using computational design approaches. However, the complexity of such design often requires immense computational power and sophisticated data analysis. In an attempt to address this, we introduce the application of a new framework, the non-dominant sorting optimization-based generative adversarial networks (NSGAN) in the discovery and exploration of novel MPEAs. By harnessing the power of genetic algorithms and generative adversarial networks (GANs), NSGANs offer an effective solution for high-dimensional multi-objective optimization challenges in alloy design. The framework is demonstrated to generate MPEAs according to specific alloy properties. Furthermore, an online web tool/software applies the NSGAN framework to disseminate the methodology to the broader scientific arena (along with the supporting code made available).

History

Journal

Integrating Materials and Manufacturing Innovation

Volume

13

Pagination

435-444

Location

Berlin, Germany

Open access

  • Yes

ISSN

2193-9764

eISSN

2193-9772

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Issue

2

Publisher

Springer

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