Learning control of quantum systems using frequency-domain optimization
algorithms
- URL: http://arxiv.org/abs/2005.13080v1
- Date: Tue, 26 May 2020 23:14:27 GMT
- Title: Learning control of quantum systems using frequency-domain optimization
algorithms
- Authors: Daoyi Dong, Chuan-Cun Shu, Jiangchao Chen, Xi Xing, Hailan Ma, Yu Guo,
Herschel Rabitz
- Abstract summary: We use frequency-domain optimization algorithms in the context of ultrafast laser control of quantum systems.
We demonstrate the capability in an ultrafast laser control experiment for the fragmentation of Pr(hfac)$_3$ molecules.
- Score: 3.6822065544021
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We investigate two classes of quantum control problems by using
frequency-domain optimization algorithms in the context of ultrafast laser
control of quantum systems. In the first class, the system model is known and a
frequency-domain gradient-based optimization algorithm is applied to searching
for an optimal control field to selectively and robustly manipulate the
population transfer in atomic Rubidium. The other class of quantum control
problems involves an experimental system with an unknown model. In the case, we
introduce a differential evolution algorithm with a mixed strategy to search
for optimal control fields and demonstrate the capability in an ultrafast laser
control experiment for the fragmentation of Pr(hfac)$_3$ molecules.
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