English

Optimization search effort over the control landscapes for open quantum systems with Kraus-map evolution

Quantum Physics 2009-05-11 v1

Abstract

A quantum control landscape is defined as the expectation value of a target observable Θ\Theta as a function of the control variables. In this work control landscapes for open quantum systems governed by Kraus map evolution are analyzed. Kraus maps are used as the controls transforming an initial density matrix ρi\rho_{\rm i} into a final density matrix to maximize the expectation value of the observable Θ\Theta. The absence of suboptimal local maxima for the relevant control landscapes is numerically illustrated. The dependence of the optimization search effort is analyzed in terms of the dimension of the system NN, the initial state ρi\rho_{\rm i}, and the target observable Θ\Theta. It is found that if the number of nonzero eigenvalues in ρi\rho_{\rm i} remains constant, the search effort does not exhibit any significant dependence on NN. If ρi\rho_{\rm i} has no zero eigenvalues, then the computational complexity and the required search effort rise with NN. The dimension of the top manifold (i.e., the set of Kraus operators that maximizes the objective) is found to positively correlate with the optimization search efficiency. Under the assumption of full controllability, incoherent control modelled by Kraus maps is found to be more efficient in reaching the same value of the objective than coherent control modelled by unitary maps. Numerical simulations are also performed for control landscapes with linear constraints on the available Kraus maps, and suboptimal maxima are not revealed for these landscapes.

Keywords

Cite

@article{arxiv.0905.1149,
  title  = {Optimization search effort over the control landscapes for open quantum systems with Kraus-map evolution},
  author = {Anand Oza and Alexander Pechen and Jason Dominy Vincent Beltrani and Katharine Moore and Herschel Rabitz},
  journal= {arXiv preprint arXiv:0905.1149},
  year   = {2009}
}

Comments

29 pages, 8 figures

R2 v1 2026-06-21T12:59:29.419Z