PRX Quantum (Apr 2022)

Learning Feedback Control Strategies for Quantum Metrology

  • Alessio Fallani,
  • Matteo A. C. Rossi,
  • Dario Tamascelli,
  • Marco G. Genoni

DOI
https://doi.org/10.1103/PRXQuantum.3.020310
Journal volume & issue
Vol. 3, no. 2
p. 020310

Abstract

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We consider the problem of frequency estimation for a single bosonic field evolving under a squeezing Hamiltonian and continuously monitored via homodyne detection. In particular, we exploit reinforcement learning techniques to devise feedback control strategies achieving increased estimation precision. We show that the feedback control determined by the neural network greatly surpasses in the long-time limit the performances of both the “no-control” strategy and the standard “open-loop control” strategy, which we considered as benchmarks. We indeed observe how the devised strategy is able to optimize the nontrivial estimation problem by preparing a large fraction of trajectories corresponding to more sensitive quantum conditional states.