Bulletin of the American Physical Society
2018 Annual Meeting of the APS Four Corners Section
Volume 63, Number 16
Friday–Saturday, October 12–13, 2018; University of Utah, Salt Lake City, Utah
Session E04: Computational Physics 2
1:30 PM–2:54 PM,
Friday, October 12, 2018
CSC
Room: 10/12
Chair: Ryan Wixom, Sandia National Lab
Abstract ID: BAPS.2018.4CS.E04.5
Abstract: E04.00005 : Machine Learning Directed Search for Ultraincompressible, Superhard Materials
2:30 PM–2:42 PM
Presenter:
Marcus Parry
(University of Utah)
Authors:
Marcus Parry
(University of Utah)
Aria Mansouri Tehrani
(University of Houston)
Anton O. Oliynyk
(University of Houston)
Zeshan Rizvi
(University of Houston)
Samantha Couper
(University of Utah)
Feng Lin
(University of Utah)
Lowell Miyagi
(University of Utah)
Jakoah Brgoch
(University of Houston)
Boris Kiefer
(New Mexico State University)
Taylor D. Sparks
(University of Utah)
Currently, superhard materials with widespread commercial application (i.e. diamond, c-BN) require extreme temperatures and pressures to produce. Of interest is a separate class of superhard materials which combine transition metals with light main group elements and can be synthesized via common high-temperature metallurgical techniques. To expedite the discovery process, a machine-learning (ML) model is developed to predict bulk and shear moduli; mechanical properties which scale with hardness. From the model, a rhenium tungsten carbide and molybdenum tungsten borocarbide are selected and synthesized at ambient pressure via arc melting. Bulk modulus of each compound is determined experimentally through high-pressure diamond anvil cell measurements, supporting the ML predictions with less than 10% error. Vickers hardness is measured, indicating each composition surpasses the superhard threshold of HV = 40 GPa at low loads (0.49 N). Furthermore, DFT calculations are employed on compositions of intermediate predicted hardness to corroborate the ML model. These results demonstrate the promise of machine-learning techniques for the identification of novel materials with desirable mechanical properties.
To cite this abstract, use the following reference: http://meetings.aps.org/link/BAPS.2018.4CS.E04.5
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