Litcius/Paper detail

Survey on the Use of Machine Learning for Quality of Transmission Estimation in Optical Transport Networks

Reda Ayassi, Ahmed Triki, Noël Crespi, Roberto Minerva, Maxime Laye

2022Journal of Lightwave Technology48 citationsDOIOpen Access PDF

Abstract

Estimating the Quality of Transmission (QoT) of the optical signal from source to destination nodes is the cornerstone of design engineering and service provisioning in optical transport networks. Recent studies have turned to Machine Learning (ML) techniques to improve the accuracy of QoT estimation. In this paper, we survey the literature on this topic and classify the studies into categories based on their scope. Accordingly, we distinguish four categories of ML-based solutions: i) check lightpath feasibility, ii) estimate a lightpath's QoT, iii) enhance existing analytical models and iv) improve model generalization. We describe the proposed solutions in each category in terms of ML algorithms, inputs/outputs of the models, source of data and performance evaluation. Deploying a ML-based solution in the real field is not straightforward and presents several challenges. Therefore, we also discuss from an operator's perspective the potential of these solutions for real-field deployment.

Topics & Concepts

Transmission (telecommunications)ProvisioningComputer scienceField (mathematics)GeneralizationScope (computer science)Software deploymentQuality (philosophy)Machine learningElectronic engineeringArtificial intelligenceComputer networkEngineeringTelecommunicationsMathematicsMathematical analysisOperating systemProgramming languageEpistemologyPure mathematicsPhilosophyOptical Network TechnologiesAdvanced Optical Network TechnologiesAdvanced Photonic Communication Systems