Published September 29, 2023
| Version v1
Journal article
Open
Machine learning assisted vector atomic magnetometry
Creators
- 1. Fudan University
- 2. University of Chicago
- 3. Shanxi University
Description
Multiparameter sensing such as vector magnetometry often involves complex setups due to various external fields needed in explicitly connecting one measured signal to one parameter. Here, we propose a paradigm of indirect encoding for vector atomic magnetometry based on machine learning. We encode the three-dimensional magnetic-field information in the set of four simultaneously acquired signals associated with the optical rotation of a laser beam traversing the atomic sample. The map between the recorded signals and the vectorial field information is established through a pre-trained deep neural network. We demonstrate experimentally a single-shot all optical vector atomic magnetometer, with a simple scalar-magnetometer design employing only one elliptically-polarized laser beam and no additional coils. Magnetic field amplitude sensitivities of about 100 fT/√Hz and angular sensitivities of about 100∼200μrad/√Hz (for a magnetic field of around 140 nT) are derived from the neural network. Our approach can reduce the complexity of the architecture of vector magnetometers, and may shed light on the general design of multiparameter sensing.
Data availability
The data supporting the findings of this study are included in the paper and its Supplementary Information. The NN training data used in this study are available in Github (https://github.com/XinMeng95/Machine-Learning-Assisted-Vector-Atomic-Magnetometry/).
The NN code for this study is available in Github (https://github.com/XinMeng95/Machine-Learning-Assisted-Vector-Atomic-Magnetometry/).
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Machine-learning-assisted-vector-atomic-magnetometry.pdf
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Additional details
Identifiers
- DOI
- 10.1038/s41467-023-41676-x
- Other
- oai:uchicago.tind.io:8350
Funding
- NNSFC
- 12027806
- Shanxi "1331 Project"
- Packard Foundation
- 2020-71479