Single-shot Hamiltonian parameter estimation by real-time sequential Monte-Carlo method

ORAL

Abstract

Bayesian filter, also known as Kalman filter for linear system or particle filter for nonlinear system, allow optimal control in quantum and classical interface circuitry. While applying Bayesian filter to classical electronic applications have shown accurate estimation and controllability, little is experimentally known about efficiency of Bayesian filter in noisy quantum system where observation model is nonlinear, stochastic and discrete. Previous works using conventional Bayesian inference (Maximum a Posteriori) could suppress the noise of qubit by measurement-based feedback control. However, the conventional estimator needs sufficient statistics for accuracy, which requires a large mount of data obtained from projective measurements. We report the fast Hamiltonian estimation and feedback in a single projective measurement by the real-time particle filtering, also known as sequential Monte-Carlo method. Using a singlet-triplet semiconductor qubit under nuclear spin noise and charge noise, we show qubit frequency estimation per single-shot measurement improving the coherence time by more than two orders of magnitude. Moreover, we investigate the noise properties and discuss potential for improvement, limitation and universal state-space representation for various quantum computing platforms suffering from the fluctuating environment.

*This work was supported by the National Research Foundation of Korea (NRF) grant funded by the Korean Government (MSIT) (No. 2018R1A2A3075438, No. 2019M3E4A1080144, No. 2019M3E4A1080145, and No. 2019R1A5A1027055), Korea Basic Science Institute (National Research Facilities and Equipment Center) grant funded by the Ministry of Education (No. 2021R1A6C101B418), and Creative-Pioneering Researchers Program through Seoul National University (SNU). The cryogenic measurement used equipment supported by the Samsung Science and Technology Foundation under Project Number SSTF-BA1502-03.

Presenters

  • hyeongyu jang

    • Seoul National University

Authors

  • hyeongyu jang

    • Seoul National University
  • Jehyun Kim

    • Seoul Natl Univ
  • Jonginn Yun

    • Seoul National University
  • Wonjin Jang

    • Seoul National University
  • Jinwoong Kim

    • Seoul National University
  • Jaemin Park

    • Seoul National University
  • Hanseo Sohn

    • Seoul National University
  • Sangwoo Sim

    • Seoul National University
  • Min-Kyun Cho

    • Seoul National University
  • Hanrim Kang

    • Seoul National University
  • Hwanchul Chung

    • Pusan National University
  • Vladimir Umansky

    • Weizmann Institute of Science
  • Dohun Kim

    • Seoul National University
    • Seoul National University (SNU)