Quantum transport in 2D materials: Theoretical and computational optimisation of large heterostructures with spintronics properties
Citation:
Kucukbas, Meric Manuel, Quantum transport in 2D materials: Theoretical and computational optimisation of large heterostructures with spintronics properties, Trinity College Dublin, School of Physics, Physics, 2023Download Item:

Abstract:
Graphene is a monolayer of carbon atoms arranged in a hexagonal lattice, making it the
thinnest and strongest material known to man. Its exceptional electronic and thermal
properties have generated great interest for its potential use in various applications,
particularly in electronics and spintronics. Since its recent isolation, graphene and
related 2D materials have been in the scientific spotlight owing to various fundamental
discoveries regarding their synthesis and exceptional properties.
In particular, graphene nanoribbons (GNRs) are narrow strips of graphene with widths
ranging from a few nanometers to several tens of nanometers. GNRs also have improved
charge transport properties compared to graphene, making them attractive for
use in electronic applications. GNRs have potential applications in spintronics, a field
that exploits the intrinsic spin of electrons for information storage and processing. The
two symmetry-breaking edges in GNRs are known for being host to spin-polarized edge
states, which can enable the creation of spin-based devices and enable the transport
of spin currents. Despite impressive advances in fabrication techniques, it is an ongoing
challenge to produce and control the desired transport properties in GNR devices.
Therefore, characterising the effects of realistic disorders on device behaviour remains
crucially important.
When dealing with a realistic system size, theoretical predictions of spin properties can
be intractable in terms of computational resources. Machine learning (ML) techniques
have been employed in various fields, such as consumer recommendation systems, protein
folding and chemistry, to exploit patterns in data and make predictions. In this
thesis, we address ML techniques to accurately estimate the transport properties and
magnetic moment profiles for arbitrarily large and disordered systems. Alongside conventional
techniques, developing a neural network tool that accurately estimates the
magnetic profile for large and disordered GNRs, we have conducted a thorough analysis
on how the edge disorder impacts the robustness of spin-currents in GNRs. The robustness
of spin-currents in zigzag graphene nanoribbons (ZGNRs) is highly intertwined
with the edge roughness profile at low energies. Whereas spin current is persistent in
smooth-edged ribbons due to the absence of back-scattering possibilities, short-ranged
scatterers in rough-edged profiles curtail the establishment of edge spin-polarised currents.
Our results highlight how ML, by predicting quickly and accurately moment
profiles for realistic systems, complements conventional transport techniques to study
magnetism and spin transport in 2D materials.
Sponsor
Grant Number
Irish Research Council (IRC)
Trinity College Dublin (TCD)
Author's Homepage:
https://tcdlocalportal.tcd.ie/pls/EnterApex/f?p=800:71:0::::P71_USERNAME:KUCUKBAMDescription:
APPROVED
Author: Kucukbas, Meric Manuel
Advisor:
Power, StephenPublisher:
Trinity College Dublin. School of Physics. Discipline of PhysicsType of material:
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