Spectral descriptors for bulk metallic glasses based on the thermodynamics of competing crystalline phases

Metallic glasses attract considerable interest due to their unique combination of superb properties and processability. Predicting their formation from known alloy parameters remains the major hindrance to the discovery of new systems. Here, we propose a descriptor based on the heuristics that struc...

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Veröffentlicht in:Nature communications 2016-08, Vol.7 (1), p.12315-12315, Article 12315
Hauptverfasser: Perim, Eric, Lee, Dongwoo, Liu, Yanhui, Toher, Cormac, Gong, Pan, Li, Yanglin, Simmons, W. Neal, Levy, Ohad, Vlassak, Joost J., Schroers, Jan, Curtarolo, Stefano
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Sprache:eng
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Zusammenfassung:Metallic glasses attract considerable interest due to their unique combination of superb properties and processability. Predicting their formation from known alloy parameters remains the major hindrance to the discovery of new systems. Here, we propose a descriptor based on the heuristics that structural and energetic ‘confusion’ obstructs crystalline growth, and demonstrate its validity by experiments on two well-known glass-forming alloy systems. We then develop a robust model for predicting glass formation ability based on the geometrical and energetic features of crystalline phases calculated ab initio in the AFLOW framework. Our findings indicate that the formation of metallic glass phases could be much more common than currently thought, with more than 17% of binary alloy systems potential glass formers. Our approach pinpoints favourable compositions and demonstrates that smart descriptors, based solely on alloy properties available in online repositories, offer the sought-after key for accelerated discovery of metallic glasses. It is crucial yet challenging to predict good glass formers in search of new metallic materials for industrial use. Here, Perim et al . develop computational descriptors based on the density of local crystalline metastable phases to predict glass forming ability and find more promising materials.
ISSN:2041-1723
2041-1723
DOI:10.1038/ncomms12315