Litcius/Paper detail

Machine learning-assisted composition design of W-free Co-based superalloys with high γ′-solvus temperature and low density

Linlin Sun, Bin Cao, Qingshuang Ma, Qiuzhi Gao, Jiahao Luo, Minglong Gong, Jing Bai, Huijun Li

2024Journal of Materials Research and Technology25 citationsDOIOpen Access PDF

Abstract

Developing materials with multiple desired characteristics is a tremendous challenge, particularly in an elaborate material system. Herein, a machine learning assisted material design strategy was applied to simultaneously optimize dual target attributes by considering γ′ solvus temperature and alloy density of multi-component Co-based superalloys. To verify the soundness of our strategy, four alloys were selected and experimentally synthesized from >510,000 candidates, each of them possessing γ′ solvus temperature exceeding 1200 °C and alloy density below 8.3 g/cm3. Of those, Co–35Ni–12Al–5Ti–3V–3Cr–2Ta–2Mo (at.%) possesses the highest γ′ solvus temperature of 1250 °C and lower density of 8.2 g/cm3. This article validates a straightforward strategy to guide rapid discovery and fabrication of multi-component materials with desired dual-performance characteristics.

Topics & Concepts

SolvusSuperalloyMaterials scienceComponent (thermodynamics)AlloySoundnessDual (grammatical number)MetallurgyThermodynamicsComputer scienceLiteratureProgramming languagePhysicsArtHigh Temperature Alloys and CreepAdvanced Materials Characterization TechniquesIntermetallics and Advanced Alloy Properties
Machine learning-assisted composition design of W-free Co-based superalloys with high γ′-solvus temperature and low density | Litcius