Physical Review Research (Jun 2021)

Learning quantum Hamiltonians from single-qubit measurements

  • Liangyu Che,
  • Chao Wei,
  • Yulei Huang,
  • Dafa Zhao,
  • Shunzhong Xue,
  • Xinfang Nie,
  • Jun Li,
  • Dawei Lu,
  • Tao Xin

DOI
https://doi.org/10.1103/PhysRevResearch.3.023246
Journal volume & issue
Vol. 3, no. 2
p. 023246

Abstract

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In the Hamiltonian-based quantum dynamics, to estimate Hamiltonians from the measured data is a vital topic. In this work, we propose a recurrent neural network to learn the target Hamiltonians from the temporal records of single-qubit measurements, which does not require the ground states and only measures single-qubit observables. It is applicable on both time-independent and time-dependent Hamiltonians and can simultaneously capture the magnitude and sign of Hamiltonian parameters. Taking the Hamiltonians with the nearest-neighbor interactions as numerical examples, we trained our recurrent neural networks to learn different types of Hamiltonians with high accuracy. The study also shows that our method has good robustness against the measurement noise and decoherence effect. Therefore, it has widespread applications in estimating the parameters of quantum devices and characterizing the Hamiltonian-based quantum dynamics.