Optimizing for an arbitrary Schr\"odinger cat state
- URL: http://arxiv.org/abs/2209.14675v2
- Date: Thu, 29 Jun 2023 08:49:33 GMT
- Title: Optimizing for an arbitrary Schr\"odinger cat state
- Authors: Matthias G. Krauss, Christiane P. Koch, Daniel M. Reich
- Abstract summary: We derive functionals for optimization towards an arbitrary cat state and demonstrate their application by optimizing the dynamics of a Kerr-nonlinear Hamiltonian with two-photon driving.
We identify the strategy of the obtained control fields and determine the quantum speed limit as a function of the cat state's excitation.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We derive a set of functionals for optimization towards an arbitrary cat
state and demonstrate their application by optimizing the dynamics of a
Kerr-nonlinear Hamiltonian with two-photon driving. The versatility of our
framework allows us to adapt our functional towards optimization of maximally
entangled cat states, applying it to a Jaynes-Cummings model. We identify the
strategy of the obtained control fields and determine the quantum speed limit
as a function of the cat state's excitation. Finally, we extend our
optimization functionals to open quantum system dynamics and apply it to the
Jaynes-Cummings model with decay on the oscillator. For strong dissipation and
large cat radii, we find a change in the control strategy compared to the case
without dissipation. Our results highlight the power of optimal control with
functionals specifically crafted for complex physical tasks and the versatility
of the quantum optimal control toolbox for practical applications in the
quantum technologies.
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