Machine Learning Directed Search for Ultraincompressible, Superhard Materials

作者:Tehrani Aria Mansouri; Oliynyk Anton O; Parry Marcus; Rizvyi Zeshan; Couper Samantha; Lin Feng; Miyag Lowell; Sparks Taylor D; Brgoch Jakoah*
来源:Journal of the American Chemical Society, 2018, 140(31): 9844-9853.
DOI:10.1021/jacs.8b02717

摘要

In the pursuit of materials with exceptional mechanical properties, a machine-learning model is developed to direct the synthetic efforts toward compounds with high hardness by predicting the elastic moduli as a proxy. This approach screens 118 287 compounds compiled in crystal structure databases for the materials with the highest bulk and shear moduli determined by support vector machine regression. Following these models, a ternary rhenium tungsten carbide and a quaternary molybdenum tungsten borocarbide are selected and synthesized at ambient pressure. High-pressure diamond anvil cell measurements corroborate the machine-learning prediction of the bulk modulus with less than 10% error, as well as confirm the ultraincompressible nature of both compounds. Subsequent Vickers microhardness measurements reveal that each compound also has an extremely high hardness exceeding the superhard threshold of 40 GPa at low loads (0.49 N). These results show the effectiveness of materials development through state-of-the-art machine-learning techniques by identifying functional inorganic materials.

  • 出版日期2018-8-8