Abstract

Increasing traffic demands are causing network operators to adopt disaggregated and open networking solutions to better exploit optical transmission capacity, and consequently enable a software-defined networking (SDN) approach to control and management that encompasses the WDM data transport layer. In these frameworks, a quality of transmission estimator (QoT-E) that gives the generalized signal-to-noise ratio (GSNR) is commonly used to compute the feasibility of transparent lightpaths (LP)s, taking into account the amplified spontaneous emission (ASE) noise and the nonlinear interference (NLI). In general, the ASE noise is the main contributor to the GSNR and is also the most challenging noise component to evaluate in a scenario with varying spectral loads, due to fluctuations in the optical amplifier responses. In this work, we propose a machine learning (ML) algorithm that is trained using different ASE-shaped spectral loads in order to predict the OSNR component of the GSNR; this methodology is subsequently used in combination with a QoT-E in the lightpath computation engine (L-PCE). We present an experiment on a point-to-point optical line system (OLS), including 9 commercial erbium-doped fiber amplifiers (EDFA)s used as black-boxes, each with variable gain and tilt values, and 8 fibers that are characterized by distinct physical parameters. Within this experiment, we receive the signal at the end of the OLS, measuring the bit-error-rate (BER) and the power spectrum, over 2520 different spectral loads. From this dataset, we extract the expected GSNRs and their linear and nonlinear components. Through joint application of a ML algorithm and the open-source GNPy library, we obtain a complete QoT-E, demonstrating that a reliable and accurate LP feasibility predictor may be implemented.

Highlights

  • A S CAPACITY and traffic demands continue to increase [1], network operators have started to look towards innovative solutions that exploit existing infrastructures, in order to maximally increase transmission speeds and capacities [2], [3]

  • Operating under the assumption that LPs are additive white Gaussian noise (AWGN) channels, the generalized signal-to-noise ratio (GSNR) includes the accumulations of both the amplified spontaneous emission (ASE) noise that arises from the amplifiers, and the nonlinear interference (NLI) noise that is induced by the fiber propagation [8], with the interaction between these two contributions being negligible in terrestrial networks [9], [10]

  • We provide a study of the overall GSNR built from two constituent models; with the NLI contribution being modelled with an accurate quality of transmission estimator (QoT-E) – the GNPy engine, and the OSNR contribution being predicted using two

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Summary

INTRODUCTION

A S CAPACITY and traffic demands continue to increase [1], network operators have started to look towards innovative solutions that exploit existing infrastructures, in order to maximally increase transmission speeds and capacities [2], [3]. This problem represents an ideal scenario for the application of machine learning (ML), allowing the relation between the ASE noise generated by amplifiers present within the LP for each spectral load to be deduced, subsequently enabling the design margin to be significantly reduced This may be achieved by collecting a dataset of the OLS responses to various spectral loads in order to train a ML algorithm, allowing a QoT-E to be calculated for both untested spectral load configurations and LPs which have not yet been explored.

RELATED WORK
OSNRij
EXPERIMENTAL SETUP
OPTICAL LINE SYSTEM CHARACTERIZATION
RESULTS
VIII. CONCLUSION

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