Efficiency of optimal control for noisy spin qubits in diamond
- URL: http://arxiv.org/abs/2411.05078v1
- Date: Thu, 07 Nov 2024 19:00:22 GMT
- Title: Efficiency of optimal control for noisy spin qubits in diamond
- Authors: Hendry M. Lim, Genko T. Genov, Roberto Sailer, Alfaiz Fahrurrachman, Muhammad A. Majidi, Fedor Jelezko, Ressa S. Said,
- Abstract summary: We investigate the dependence of the shape of a spin inversion control pulse on the correlation time of the environment noise.
We present an experimental realization of the numerically-optimized pulses validating the optimization feasibility.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Decoherence is a major challenge for quantum technologies. A way to mitigate its negative impact is by employing quantum optimal control. The decoherence dynamics varies significantly based on the characteristics of the surrounding environment of qubits, consequently affecting the outcome of the control optimization. In this work, we investigate the dependence of the shape of a spin inversion control pulse on the correlation time of the environment noise. Furthermore, we analyze the effects of constraints and optimization options on the optimization outcome and identify a set of strategies that improve the optimization performance. Finally, we present an experimental realization of the numerically-optimized pulses validating the optimization feasibility. Our work serves as a generic yet essential guide to implementing optimal control in the presence of realistic noise, e.g., in nitrogen-vacancy centers in diamond.
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