Symmetry-protected topological phases: From Floquet theory to machine learning
dc.contributor.author | Balabanov, Oleksandr | |
dc.date.accessioned | 2020-08-18T14:46:04Z | |
dc.date.available | 2020-08-18T14:46:04Z | |
dc.date.issued | 2020-08-18 | |
dc.description.abstract | It is by now a well known fact that boundary states in conventional time-independent topological insulators are protected against perturbations that preserve relevant symmetries. In the first part of this thesis, accompanying Papers A - C, we study how this robustness extends to time-periodic (Floquet) topological insulators. Floquet theory allows us to go beyond ordinary time-independent perturbations and study also periodically-driven perturbations of the boundary states. The time-dependence here opens up an extra lever of control and helps to establish the robustness to a much broader class of perturbations. In Paper A, a general idea behind the topological protection of the boundary states against time-periodic perturbations is presented. In Paper B we address the experimental detection of the proposed robustness and suggest that signatures of it can be seen in the measurements of linear conductance. Our idea is explicitly illustrated on a case study: A topologically nontrivial array of dimers weakly attached to external leads. The discussed features are described analytically and confirmed numerically. All computations are performed by employing a convenient methodology developed in Paper C. The idea is to combine Landauer-Büttiker theory with the so-called Floquet-Sambe formalism. It is shown that in this way all formulas for currents and densities essentially replicate well known expressions from time-independent theory. To find closed mathematical expressions for topological indices is in general a nontrivial task, especially in presence of various symmetries and/or interactions. The second part of the thesis introduces a computational protocol, based on artificial neural networks and a novel topological augmentation procedure, capable of finding topological indices with minimal external supervision. In Paper D the protocol is presented and explicitly exemplified on two simple classes of topological insulators in 1d and 2d. In Paper E we significantly advance the protocol to the classification of a more general type of systems. Our method applies powerful machine-learning algorithms to topological classification, with a potential to be extended to more complicated classes where known analytical methods may become inapplicable. The thesis is meant to serve as a supplement to the work contained in Papers A-E. Here we provide an extensive introduction to Floquet theory, focused on developing the machinery for describing time-periodic topological insulators. The basic theory of artificial neural nets is also presented. | sv |
dc.gup.admin | Most of the participants of the oral presentation will be joining via a Zoom link due to the Covid-19 crisis. | sv |
dc.gup.defencedate | 2020-09-11 | |
dc.gup.defenceplace | fredagen den 11 september 2020, kl 15:15 i PJ-salen, Institutionen för fysik, Fysikgården 2, Göteborg | sv |
dc.gup.department | Department of Physics ; Institutionen för fysik | sv |
dc.gup.dissdb-fakultet | MNF | |
dc.gup.mail | oleksandr.balabanov@physics.gu.se | sv |
dc.gup.origin | Göteborgs universitet. Naturvetenskapliga fakulteten | sv |
dc.identifier.isbn | ISBN 978-91-8009-015-5 (PDF) | |
dc.identifier.isbn | ISBN 978-91-8009-014-8 (PRINT) | |
dc.identifier.uri | http://hdl.handle.net/2077/64531 | |
dc.language.iso | eng | sv |
dc.relation.haspart | O. Balabanov and H. Johannesson, Robustness of symmetry-protected topological states against time-periodic perturbations, Phys. Rev. B 96, 035149 (2017). ::doi:: 10.1103/PhysRevB.96.035149 | sv |
dc.relation.haspart | O. Balabanov and H. Johannesson, Transport signatures of symmetry protection in 1D Floquet topological insulators, J. Phys.: Condens. Matter 32 015503 (2020). ::doi:: 10.1088/1361-648X/ab4319 | sv |
dc.relation.haspart | O. Balabanov, Transport through periodically driven systems: Green’s function approach formulated within frequency domain (2018), (preprint available on arXiv) | sv |
dc.relation.haspart | O. Balabanov and M. Granath, Unsupervised learning using topological data augmentation, Phys. Rev. Research 2, 013354 (2020). ::doi:: 10.1103/PhysRevResearch.2.013354 | sv |
dc.relation.haspart | O. Balabanov and M. Granath, Unsupervised interpretable learning of topological indices invariant under permutations of atomic bands (2020), (preprint available on arXiv) | sv |
dc.subject | Topological quantum matter, | sv |
dc.subject | neural networks | sv |
dc.subject | Floquet theory | sv |
dc.title | Symmetry-protected topological phases: From Floquet theory to machine learning | sv |
dc.type | Text | |
dc.type.degree | Doctor of Philosophy | sv |
dc.type.svep | Doctoral thesis | eng |
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