Disentangling morphology and conductance in amorphous graphene
Amorphous graphene or amorphous monolayer carbon (AMC) is a family of carbon films that exhibit a surprising sensitivity of electronic conductance to morphology. We combine deep learning-enhanced simulation techniques with percolation theory to analyze three morphologically distinct mesoscale AMCs....
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Zusammenfassung: | Amorphous graphene or amorphous monolayer carbon (AMC) is a family of carbon
films that exhibit a surprising sensitivity of electronic conductance to
morphology. We combine deep learning-enhanced simulation techniques with
percolation theory to analyze three morphologically distinct mesoscale AMCs.
Our approach avoids the pitfalls of applying periodic boundary conditions to
these fundamentally aperiodic systems or equating crystalline inclusions with
conducting sites. We reproduce the previously reported dependence of charge
conductance on morphology and explore the limitations of partial morphology
descriptors in witnessing conductance properties. Finally, we perform
crystallinity analysis of conductance networks along the electronic energy
spectrum and show that they metamorphose from being localized on crystallites
at band edges to localized on defects around the Fermi energy opening the
possibility of control through gate voltage. |
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DOI: | 10.48550/arxiv.2411.18041 |