Litcius/Paper detail

Neural network architectures for optical channel nonlinear compensation in digital subcarrier multiplexing systems

Ali Bakhshali, Hossein Najafi, Behnam Behinaein Hamgini, Zhuhong Zhang

2023Optics Express13 citationsDOIOpen Access PDF

Abstract

In this work, we propose to use various artificial neural network (ANN) structures for modeling and compensation of intra- and inter-subcarrier fiber nonlinear interference in digital subcarrier multiplexing (DSCM) optical transmission systems. We perform nonlinear channel equalization by employing different ANN cores including convolutional neural networks (CNN) and long short-term memory (LSTM) layers. First, we develop a fiber nonlinearity compensation for DSCM systems based on a fully-connected network across all subcarriers. In subsequent steps, and borrowing from the perturbation analysis of fiber nonlinearity, we gradually upgrade proposed designs towards modular structures with better performance-complexity advantages. Our study shows that putting proper macro structures in design of ANN nonlinear equalizers in DSCM systems can be crucial in development of practical solutions for future generations of coherent optical transceivers.

Topics & Concepts

SubcarrierComputer scienceSubcarrier multiplexingElectronic engineeringMultiplexingTransmission (telecommunications)Artificial neural networkNonlinear systemWavelength-division multiplexingEqualization (audio)Interference (communication)Compensation (psychology)Nonlinear distortionOrthogonal frequency-division multiplexingChannel (broadcasting)OpticsTelecommunicationsArtificial intelligenceEngineeringPhysicsBandwidth (computing)Quantum mechanicsPsychoanalysisPsychologyWavelengthAmplifierOptical Network TechnologiesAdvanced Photonic Communication SystemsAdvanced Fiber Laser Technologies