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Topological Quantum Computing
Open Quantum Systems Decoherence
Superconducting Qubits
Non-local detection of coherent Yu-Shiba-Rusinov quantum projections
arXiv
Authors: Khai Ton That, Chang Xu, Ioannis Ioannidis, Lucas Schneider, Thore Posske, Roland Wiesendanger, Dirk K. Morr, Jens Wiebe
Year
2024
Paper ID
37863
Status
Preprint
Abstract Read
~2 min
Abstract Words
133
Citations
N/A
Abstract
Probing spatially confined quantum states from afar - a long-sought goal to minimize external interference - has been proposed to be achievable in condensed matter systems via coherent projection. The latter can be tailored by sculpturing the eigenstates of the electron sea that surrounds the quantum state using atom-by-atom built cages, so-called quantum corrals. However, assuring the coherent nature of the projection, and manipulating its quantum composition, has remained an elusive goal. Here, we experimentally realize the coherent projection of a magnetic impurity-induced, Yu-Shiba-Rusinov quantum state using the eigenmodes of corrals on the surface of a superconductor, which enables us to manipulate the particle-hole composition of the projected state by tuning corral eigenmodes through the Fermi energy. Our results demonstrate a controlled non-local method for the detection of magnet superconductor hybrid quantum states.
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- Probing spatially confined quantum states from afar - a long-sought goal to minimize external interference - has been proposed to be achievable in condensed matter systems via...
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