Steady state entanglement of distant nitrogen-vacancy centers in a coherent thermal magnon bath
Kamran Ullah, Emre K\"ose, Mehmet C. Onba\c{s}l{\i}, \"Ozg\"ur E., M\"ustecapl{\i}o\u{g}lu

TL;DR
This paper demonstrates how to achieve and control steady-state entanglement between distant NV centers in nanodiamonds via a magnon bath in YIG, using external fields and system geometry to optimize quantum coherence.
Contribution
It introduces a method to engineer magnon baths and system parameters for sustained entanglement and coherence in NV centers, including bath state manipulation and control of system dynamics.
Findings
Magnon dephasing can be eliminated with external magnetic fields.
Optimal system geometry enhances steady-state entanglement.
Bath coherence critically influences entanglement robustness.
Abstract
We investigate steady-state entanglement (SSE) between two nitrogen-vacancy (NV) centers in distant nanodiamonds on an ultrathin Yttrium Iron Garnet (YIG) strip. We determine the dephasing and dissipative interactions of the qubits with the quanta of spin waves (magnon bath) in the YIG depending on the qubit positions on the strip. We show that the magnon's dephasing effect can be eliminated, and we can transform the bath into a multimode displaced thermal state using external magnetic fields. Entanglement dynamics of the qubits in such a displaced thermal bath have been analyzed by deriving and solving the master equation. An additional electric field is considered to engineer the magnon dispersion relation at the band edge to control the Markovian character of the open system dynamics. We determine the optimum geometrical parameters of the system of distant qubits and the YIG strip to…
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Taxonomy
TopicsMagneto-Optical Properties and Applications · Neural Networks and Reservoir Computing · Quantum and electron transport phenomena
