| Literature DB >> 36201584 |
Ziyuan Rao1, Po-Yen Tung1,2, Ruiwen Xie3, Ye Wei1, Hongbin Zhang3, Alberto Ferrari4, T P C Klaver4, Fritz Körmann1,4, Prithiv Thoudden Sukumar1, Alisson Kwiatkowski da Silva1, Yao Chen1,5, Zhiming Li1,6, Dirk Ponge1, Jörg Neugebauer1, Oliver Gutfleisch1,3, Stefan Bauer7, Dierk Raabe1.
Abstract
High-entropy alloys are solid solutions of multiple principal elements that are capable of reaching composition and property regimes inaccessible for dilute materials. Discovering those with valuable properties, however, too often relies on serendipity, because thermodynamic alloy design rules alone often fail in high-dimensional composition spaces. We propose an active learning strategy to accelerate the design of high-entropy Invar alloys in a practically infinite compositional space based on very sparse data. Our approach works as a closed-loop, integrating machine learning with density-functional theory, thermodynamic calculations, and experiments. After processing and characterizing 17 new alloys out of millions of possible compositions, we identified two high-entropy Invar alloys with extremely low thermal expansion coefficients around 2 × 10-6 per degree kelvin at 300 kelvin. We believe this to be a suitable pathway for the fast and automated discovery of high-entropy alloys with optimal thermal, magnetic, and electrical properties.Entities:
Year: 2022 PMID: 36201584 DOI: 10.1126/science.abo4940
Source DB: PubMed Journal: Science ISSN: 0036-8075 Impact factor: 63.714