Phase Selection Rules of Multi-Principal Element Alloys.
Lin WangBin OuyangPublished in: Advanced materials (Deerfield Beach, Fla.) (2023)
Computational prediction of phase stability of multi-principal element alloys (MPEAs) holds a lot of promise for rapid exploration of the enormous design space and autonomous discovery of superior structural and functional properties. Regardless of many plausible works that rely on phenomenological theory and machine learning, precise prediction is still limited by insufficient data and the lack of interpretability of some machine learning algorithms, e.g., convolutional neural network. In this work, we have presented a comprehensive approach, encompassing the development of a complete dataset that contains 72,387 density functional theory calculations, as well as a predictive global phenomenological descriptor. The phase selection descriptor, based on atomic electronegativity and valence electron concentration, significantly outperforms the widely used valence electron concentration, excelling in both accuracy (with an F1 score of 63% compared to 47%) and its ability to predict the HCP phase (0.48 recall compared to 0). The comprehensive data mining on the global design space of 61,425 quaternary MPEAs made from 28 possible metals, together with the phenomenological theory and physical interpretation, will set up a solid computational science foundation for data-driven exploration of MPEAs. This article is protected by copyright. All rights reserved.
Keyphrases
- machine learning
- density functional theory
- big data
- convolutional neural network
- deep learning
- molecular dynamics
- artificial intelligence
- public health
- small molecule
- mental health
- physical activity
- molecular dynamics simulations
- high throughput
- risk assessment
- health risk
- electron microscopy
- climate change
- drinking water
- health risk assessment