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Open Quantum Systems Decoherence Quantum Machine Learning

Sensitive magnetometry in challenging environments

arXiv
Authors: Kai-Mei C. Fu, Geoffrey Z. Iwata, Arne Wickenbrock, Dmitry Budker

Year

2020

Paper ID

21791

Status

Preprint

Abstract Read

~2 min

Abstract Words

80

Citations

N/A

Abstract

State-of-the-art magnetic field measurements performed in shielded environments with carefully controlled conditions rarely reflect the realities of those applications envisioned in the introductions of peer-reviewed publications. Nevertheless, significant advances in magnetometer sensitivity have been accompanied by serious attempts to bring these magnetometers into the challenging working environments in which they are often required. This review discusses the ways in which various (predominantly optically-pumped) magnetometer technologies have been adapted for use in a wide range of noisy and physically demanding environments.

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  • State-of-the-art magnetic field measurements performed in shielded environments with carefully controlled conditions rarely reflect the realities of those applications...

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