Back to Search Start Over

Learning and Controlling Silicon Dopant Transitions in Graphene using Scanning Transmission Electron Microscopy

Authors :
Schwarzer, Max
Farebrother, Jesse
Greaves, Joshua
Cubuk, Ekin Dogus
Agarwal, Rishabh
Courville, Aaron
Bellemare, Marc G.
Kalinin, Sergei
Mordatch, Igor
Castro, Pablo Samuel
Roccapriore, Kevin M.
Schwarzer, Max
Farebrother, Jesse
Greaves, Joshua
Cubuk, Ekin Dogus
Agarwal, Rishabh
Courville, Aaron
Bellemare, Marc G.
Kalinin, Sergei
Mordatch, Igor
Castro, Pablo Samuel
Roccapriore, Kevin M.
Publication Year :
2023

Abstract

We introduce a machine learning approach to determine the transition dynamics of silicon atoms on a single layer of carbon atoms, when stimulated by the electron beam of a scanning transmission electron microscope (STEM). Our method is data-centric, leveraging data collected on a STEM. The data samples are processed and filtered to produce symbolic representations, which we use to train a neural network to predict transition probabilities. These learned transition dynamics are then leveraged to guide a single silicon atom throughout the lattice to pre-determined target destinations. We present empirical analyses that demonstrate the efficacy and generality of our approach.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438503261
Document Type :
Electronic Resource