AI-guided engineering of nanoscale topological materials
ORAL
Abstract
Nanoscale organic materials have long been known to host topologically protected excitations. Inspired by recent progress in classifying topological phases in armchair, cove-edged and chevron graphene nanoribbons, we develop a high-throughput framework based on the computation of the Zak phase and the Z2 invariants using tight-binding and density functional theory to explore the topology of low-symmetry 1D and 2D periodic organic compounds. As of today, we have identified 224,071 new topological nanoribbons using our framework. Training deep neural networks on the graphs of these Hamiltonians, we analyze the graphical features conducive to topological excitations in these systems. We show how this workflow can help the atomic assembly of topologically non-trivial artificial lattices.
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Presenters
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Srilok Srinivasan
Argonne Natl Lab
Authors
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Srilok Srinivasan
Argonne Natl Lab
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Mathew J Cherukara
Argonne Natl Lab
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David Jason Eckstein
Argonne Natl Lab
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Anthony Avarca
Argonne Natl Lab
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Subramanian Sankaranarayanan
Argonne Natl Lab
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Pierre Darancet
Center for Nanoscale Materials, Argonne National Laboratory, Argonne National Lab, Argonne Natl Lab