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Quantum Confinement of Dirac Quasiparticles in Graphene Patterned with Sub‐Nanometer Precision

Authors :
Universidad de Alicante. Departamento de Física Aplicada
Cortés‐del Río, Eva
Mallet, Pierre
González‐Herrero, Héctor
Lado, Jose L.
Fernández-Rossier, Joaquín
Gómez‐Rodríguez, José María
Veuillen, Jean‐Yves
Brihuega, Iván
Universidad de Alicante. Departamento de Física Aplicada
Cortés‐del Río, Eva
Mallet, Pierre
González‐Herrero, Héctor
Lado, Jose L.
Fernández-Rossier, Joaquín
Gómez‐Rodríguez, José María
Veuillen, Jean‐Yves
Brihuega, Iván
Publication Year :
2020

Abstract

Quantum confinement of graphene Dirac‐like electrons in artificially crafted nanometer structures is a long sought goal that would provide a strategy to selectively tune the electronic properties of graphene, including bandgap opening or quantization of energy levels. However, creating confining structures with nanometer precision in shape, size, and location remains an experimental challenge, both for top‐down and bottom‐up approaches. Moreover, Klein tunneling, offering an escape route to graphene electrons, limits the efficiency of electrostatic confinement. Here, a scanning tunneling microscope (STM) is used to create graphene nanopatterns, with sub‐nanometer precision, by the collective manipulation of a large number of H atoms. Individual graphene nanostructures are built at selected locations, with predetermined orientations and shapes, and with dimensions going all the way from 2 nm up to 1 µm. The method permits the patterns to be erased and rebuilt at will, and it can be implemented on different graphene substrates. STM experiments demonstrate that such graphene nanostructures confine very efficiently graphene Dirac quasiparticles, both in 0D and 1D structures. In graphene quantum dots, perfectly defined energy bandgaps up to 0.8 eV are found that scale as the inverse of the dot’s linear dimension, as expected for massless Dirac fermions.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1196893633
Document Type :
Electronic Resource