Model-aware reinforcement learning for high-performance Bayesian
experimental design in quantum metrology
- URL: http://arxiv.org/abs/2312.16985v2
- Date: Thu, 1 Feb 2024 20:26:01 GMT
- Title: Model-aware reinforcement learning for high-performance Bayesian
experimental design in quantum metrology
- Authors: Federico Belliardo, Fabio Zoratti, Florian Marquardt, Vittorio
Giovannetti
- Abstract summary: Quantum sensors offer control flexibility during estimation by allowing manipulation by the experimenter across various parameters.
We introduce a versatile procedure capable of optimizing a wide range of problems in quantum metrology, estimation, and hypothesis testing.
We combine model-aware reinforcement learning (RL) with Bayesian estimation based on particle filtering.
- Score: 0.5461938536945721
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Quantum sensors offer control flexibility during estimation by allowing
manipulation by the experimenter across various parameters. For each sensing
platform, pinpointing the optimal controls to enhance the sensor's precision
remains a challenging task. While an analytical solution might be out of reach,
machine learning offers a promising avenue for many systems of interest,
especially given the capabilities of contemporary hardware. We have introduced
a versatile procedure capable of optimizing a wide range of problems in quantum
metrology, estimation, and hypothesis testing by combining model-aware
reinforcement learning (RL) with Bayesian estimation based on particle
filtering. To achieve this, we had to address the challenge of incorporating
the many non-differentiable steps of the estimation in the training process,
such as measurements and the resampling of the particle filter. Model-aware RL
is a gradient-based method, where the derivatives of the sensor's precision are
obtained through automatic differentiation (AD) in the simulation of the
experiment. Our approach is suitable for optimizing both non-adaptive and
adaptive strategies, using neural networks or other agents. We provide an
implementation of this technique in the form of a Python library called
qsensoropt, alongside several pre-made applications for relevant physical
platforms, namely NV centers, photonic circuits, and optical cavities. This
library will be released soon on PyPI. Leveraging our method, we've achieved
results for many examples that surpass the current state-of-the-art in
experimental design. In addition to Bayesian estimation, leveraging model-aware
RL, it is also possible to find optimal controls for the minimization of the
Cram\'er-Rao bound, based on Fisher information.
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