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Machine learning based joint polarization and phase compensation for CV-QKD

arXiv
Authors: Hou-Man Chin, Adnan E. Hajomer, Nitin Jain, Ulrik L. Andersen, Tobias Gehring

Year

2022

Paper ID

57446

Status

Preprint

Abstract Read

~2 min

Abstract Words

33

Citations

N/A

Abstract

We investigated a machine learning method for joint estimation of polarization and phase for use in a Gaussian modulated CV-QKD system, over an 18 hour period measured on a installed fiber with 5.5 dB attenuation.

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  • We investigated a machine learning method for joint estimation of polarization and phase for use in a Gaussian modulated CV-QKD system, over an 18 hour period measured on a...

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