CNN-Assisted Particle Swarm Optimization of a Perturbation-Based Model for Nonlinearity Compensation in Optical Transmission Systems
Alexey Redyuk, Evgeny Shevelev, Vitaly Danilko, Mikhail Fedoruk

TL;DR
This paper introduces a two-stage neural network and optimization approach for fiber nonlinearity compensation in optical systems, improving accuracy and efficiency over traditional methods.
Contribution
It proposes a novel two-stage scheme combining CNN and particle swarm optimization for perturbation coefficient calculation in nonlinear compensation.
Findings
Achieved 0.8 dB SNR gain in a 16QAM 20x100 km link.
Demonstrated improved accuracy over single-stage schemes.
Developed a method for learning coefficients without ideal symbols.
Abstract
Nonlinear signal distortions are one of the primary factors limiting the capacity and reach of optical transmission systems. Currently, several approaches exist for compensating nonlinear distortions, but for practical implementation, algorithms must be simultaneously accurate, fast, and robust against various interferences. One established approach involves applying perturbation theory methods to the nonlinear Schr\"{o}dinger equation, which enables the determination of the relation between transmitted and received symbols. In most studies, gradient methods are used to find perturbation coefficients by minimizing the mean squared error between symbols. However, the main parameter characterizing the quality of information transmission is the bit error rate. We propose a modification of the conventional perturbation-based approach for fiber nonlinearity compensation in the form of a…
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Taxonomy
TopicsOptical Network Technologies · Advanced Photonic Communication Systems · Advanced Optical Network Technologies
