Quantum Wavefront Correction via Machine Learning for Satellite-to-Earth CV-QKD
Nathan K. Long, Ziqing Wang, Benjamin P. Dix-Matthews, Alex Frost, John Wallis, Kenneth J. Grant, Robert Malaney

TL;DR
This paper presents machine learning algorithms that improve satellite-to-Earth CV-QKD by correcting wavefront errors, significantly enhancing secure key rates even when reference pulses and quantum signals differ.
Contribution
The work introduces novel ML-based wavefront correction algorithms using multi-plane light conversion and Hermite-Gaussian basis decomposition for satellite-to-Earth CV-QKD.
Findings
Algorithms effectively identify and compensate for relative wavefront errors.
Secure key rates are increased with wavefront correction in simulated channels.
Without correction, key rates can drop to zero due to wavefront errors.
Abstract
State-of-the-art free-space continuous-variable quantum key distribution (CV-QKD) protocols use phase reference pulses to modulate the wavefront of a real local oscillator at the receiver, thereby compensating for wavefront distortions caused by atmospheric turbulence. It is normally assumed that the wavefront distortion in these phase reference pulses is identical to the wavefront distortion in the quantum signals, which are multiplexed during transmission. However, in many real-world deployments, there can exist a relative wavefront error (WFE) between the reference pulses and quantum signals, which, among other deleterious effects, can severely limit secure key transfer in satellite-to-Earth CV-QKD. In this work, we introduce novel machine learning-based wavefront correction algorithms, which utilize multi-plane light conversion for decomposition of the reference pulses and quantum…
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