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Relative wavefront error correction over a 2.4-km free-space optical link via machine learning.

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    This summary is machine-generated.

    Researchers found relative wavefront errors (WFEs) between reference beacons and signals in atmospheric optical communication. Machine learning algorithms reduced these WFEs, potentially boosting secure key rates in continuous-variable quantum key distribution (CV-QKD).

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    Area of Science:

    • Optical communication
    • Atmospheric physics
    • Machine learning

    Background:

    • Coherent optical communication systems often use reference beacons multiplexed with signals.
    • It is commonly assumed that beacons and signals experience equivalent wavefront distortion in turbulent atmospheric channels.
    • This study investigates the discrepancy in wavefront distortion between polarization-multiplexed beacons and signals.

    Purpose of the Study:

    • To experimentally demonstrate and quantify relative wavefront errors (WFEs) between reference beacons and signals after atmospheric transmission.
    • To develop and apply machine learning (ML)-based algorithms for wavefront correction to mitigate observed WFEs.
    • To analyze the impact of relative WFEs on continuous-variable quantum key distribution (CV-QKD) and assess the potential for improved secure key rates.

    Main Methods:

    • Experimental setup involving a 2.4-km atmospheric link.
    • Polarization multiplexing of reference beacons and information-encoded signals.
    • Development and implementation of ML-based phase retrieval algorithms for wavefront correction.
    • Analysis of relative phase error variance and excess noise contributions.

    Main Results:

    • Experimental evidence of significant relative wavefront errors (WFEs) between polarization-multiplexed beacons and signals.
    • ML-based wavefront correction algorithms achieved up to a 2/3 reduction in relative phase error variance.
    • Quantification of excess noise contributions stemming from relative WFEs in CV-QKD.

    Conclusions:

    • The assumption of equivalent wavefront distortion between beacons and signals in atmospheric optical links is challenged.
    • ML-based wavefront correction is effective in mitigating relative WFEs, improving signal fidelity.
    • Implementing these correction algorithms in CV-QKD could lead to substantial increases in secure key rates.