Robust Quantum Control using Hybrid Pulse Engineering
- URL: http://arxiv.org/abs/2112.01279v1
- Date: Thu, 2 Dec 2021 14:29:42 GMT
- Title: Robust Quantum Control using Hybrid Pulse Engineering
- Authors: M. Harshanth Ram, V. R. Krithika, Priya Batra and T. S. Mahesh
- Abstract summary: gradient-based optimization algorithms are limited by their sensitivity to the initial guess.
Our numerical analysis confirms its superior convergence rate.
We describe a general method to construct noise-resilient quantum controls by incorporating noisy fields.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The development of efficient algorithms that generate robust quantum controls
is crucial for the realization of quantum technologies. The commonly used
gradient-based optimization algorithms are limited by their sensitivity to the
initial guess, which affects their performance. Here we propose combining the
gradient method with the simulated annealing technique to formulate a hybrid
algorithm. Our numerical analysis confirms its superior convergence rate. Using
the hybrid algorithm, we generate spin-selective $\pi$ pulses and employ them
for experimental measurement of local noise-spectra in a three-qubit NMR
system. Moreover, here we describe a general method to construct
noise-resilient quantum controls by incorporating noisy fields within the
optimization routine of the hybrid algorithm. On experimental comparison with
similar sequences obtained from standard algorithms, we find remarkable
robustness of the hybrid sequences against dephasing errors.
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