Data-driven identification of connate topological superconductor candidates
ORAL
Abstract
One way to achieve topological superconductivity is through identifying a bulk s-wave superconductor that also exhibits topological surface states. The resulting “connate” topological superconductor functions through the self-proximity effect similar to the interfacial proximity effect within topological superconductor heterostructures. While non-trivial electronic structure topology can be predicted through first-principles calculations, superconductivity is difficult to predict a priori, limiting broad screening for materials that combine both phenomena. Here, we present a data-driven approach to compile a catalog of potential connate topological superconductor materials, starting with experimentally-confirmed superconductors and cross-referencing their topological nature via high-throughput computational data. Additionally, subtle pitfalls in the calculation of Z2 topological invariants for materials without well-defined band gaps (such as superconductors) will be discussed.
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Presenters
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Aurland Hay
University of California Santa Barbara
Authors
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Aurland Hay
University of California Santa Barbara
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Ram Seshadri
University of California, Santa Barbara