Title :
Revisiting Computational Thermodynamics through Machine Learning of High-Dimensional Data
Author :
SRINIVASAN, SUDARSHAN ; Rajan, K.
Abstract :
A new perspective on alloy thermodynamics computation uses data-driven analysis and machine learning for the design and discovery of materials. The focus is on an integrated machine-learning framework, coupling different genres of supervised and unsupervised informatics techniques, and bridging two distinct viewpoints: continuum representations based on solid solution thermodynamics and discrete high-dimensional elemental descriptions.
Keywords :
alloys; data analysis; learning (artificial intelligence); materials science computing; thermal stability; alloy thermodynamics computation; computational thermodynamics; continuum representations; data-driven analysis; discrete high-dimensional elemental descriptions; high-dimensional data; integrated machine learning framework; material design; material discovery; solid solution thermodynamics; supervised informatics techniques; unsupervised informatics techniques; Atomic measurements; Computational modeling; Informatics; Machine learning; Principal component analysis; Semiconductor materials; Thermodynamics; bandgap engineering; compound semiconductors; computational thermodynamics; data mining; high-dimensional model representation; machine learning; materials informatics;
Journal_Title :
Computing in Science & Engineering
DOI :
10.1109/MCSE.2013.76