Machine learning driven simulated deposition of carbon films: from low-density to diamondlike amorphous carbon
Amorphous carbon (a-C) materials have diverse interesting and useful properties, but the understanding of their atomic-scale structures is still incomplete. Here, we report on extensive atomistic simulations of the deposition and growth of a-C films, describing interatomic interactions using a machi...
Main Authors: | Caro, MA, Csányi, G, Laurila, T, Deringer, VL |
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Format: | Journal article |
Language: | English |
Published: |
American Physical Society
2020
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