Scalable multilayer architecture of assembled single-atom qubit arrays
in a three-dimensional Talbot tweezer lattice
- URL: http://arxiv.org/abs/1902.05424v6
- Date: Fri, 12 May 2023 09:33:23 GMT
- Title: Scalable multilayer architecture of assembled single-atom qubit arrays
in a three-dimensional Talbot tweezer lattice
- Authors: Malte Schlosser, Sascha Tichelmann, Dominik Sch\"affner, Daniel Ohl de
Mello, Moritz Hambach, Jan Sch\"utz, Gerhard Birkl
- Abstract summary: A microlens-generated Talbot tweezer lattice extends 2D tweezer arrays to the third dimension at no additional costs.
We demonstrate the trapping and imaging of rubidium atoms in integer and fractional Talbot planes.
We use this to generate interleaved lattices with dynamic position control and parallelized sublattice addressing of spin states.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We report on the realization of a novel platform for the creation of
large-scale 3D multilayer configurations of planar arrays of individual
neutral-atom qubits: a microlens-generated Talbot tweezer lattice that extends
2D tweezer arrays to the third dimension at no additional costs. We demonstrate
the trapping and imaging of rubidium atoms in integer and fractional Talbot
planes and the assembly of defect-free atom arrays in different layers. The
Talbot self-imaging effect for microlens arrays constitutes a structurally
robust and wavelength-universal method for the realization of 3D atom arrays
with beneficial scaling properties. With more than 750 qubit sites per 2D
layer, these scaling properties imply that 10000 qubit sites are already
accessible in 3D in our current implementation. The trap topology and
functionality are configurable in the micrometer regime. We use this to
generate interleaved lattices with dynamic position control and parallelized
sublattice addressing of spin states for immediate application in quantum
science and technology.
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