Machine learning predictions of surface migration barriers in nucleation and non-equilibrium growth
Experiments and simulations can reveal energetic barriers during atomic-scale growth but are time-consuming. Here, machine learning is applied to single images from kinetic Monte Carlo simulations of sub-monolayer film growth, allowing diffusion barriers and binding energies to be accurately determi...
Main Authors: | Thomas Martynec, Christos Karapanagiotis, Sabine H. L. Klapp, Stefan Kowarik |
---|---|
Format: | Article |
Language: | English |
Published: |
Nature Publishing Group
2021-09-01
|
Series: | Communications Materials |
Online Access: | https://doi.org/10.1038/s43246-021-00188-1 |
Similar Items
-
Control of nucleate boiling with micro-machined surface features
by: Holland, Adrian Mark
Published: (2004) -
Nucleation and Growth of Crystals of Pharmaceuticals on Functionalized Surfaces
by: Biyikli, Kasim
Published: (2006) -
Study of nucleation and growth on TaN Barrier Layer with Wet Activation
by: Ying-Chao Sung, et al.
Published: (2004) -
A Study on Nucleation and Growth of Electroless Copper on Ta(N) barrier
by: Pei-Yi Chen, et al.
Published: (2001) -
Frost nucleation and growth on hydrophilic, hydrophobic, and biphilic surfaces
by: Van Dyke, Alexander Scott
Published: (2015)