Learning-based Quantum Robust Control: Algorithm, Applications and Experiments
Abstract
Robust control design for quantum systems has been recognized as a key task in quantum information technology, molecular chemistry and atomic physics. In this paper, an improved differential evolution algorithm, referred to as \emph{msMS}\_DE, is proposed to search robust fields for various quantum control problems. In \emph{msMS}\_DE, multiple samples are used for fitness evaluation and a mixed strategy is employed for the mutation operation. In particular, the \emph{msMS}\_DE algorithm is applied to the control problems of (i) open inhomogeneous quantum ensembles and (ii) the consensus goal of a quantum network with uncertainties. Numerical results are presented to demonstrate the excellent performance of the improved machine learning algorithm for these two classes of quantum robust control problems. Furthermore, \emph{msMS}\_DE is experimentally implemented on femtosecond laser control applications to optimize two-photon absorption and control fragmentation of the molecule . Experimental results demonstrate excellent performance of \emph{msMS}\_DE in searching for effective femtosecond laser pulses for various tasks.
Cite
@article{arxiv.1702.03946,
title = {Learning-based Quantum Robust Control: Algorithm, Applications and Experiments},
author = {Daoyi Dong and Xi Xing and Hailan Ma and Chunlin Chen and Zhixin Liu and Herschel Rabitz},
journal= {arXiv preprint arXiv:1702.03946},
year = {2020}
}
Comments
13 pages, 10 figures and 1 table