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QoT Estimation Improvement with Inputs Refinement Tool for C+L Networks

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Abstract

We propose a technique to estimate lumped losses thus OSNR, nonlinear SNR, GSNR, and SNR in C+L optical networks. We show with simulations that SNR estimation accuracy is within 0.5dB and that the technique is robust to uncertainty due to aging.

© 2023 The Author(s)

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