Deep Learning-Aided Perturbation Model-Based Fiber Nonlinearity Compensation
Shenghang Luo, Sunish Kumar Orappanpara Soman, Lutz Lampe, and Jeebak, Mitra

TL;DR
This paper evaluates and advances machine learning-based perturbation models for fiber nonlinearity compensation, demonstrating improved performance and reduced complexity in long-haul optical communication systems.
Contribution
It provides a comprehensive analysis of learned PB-NLC methods and introduces a novel fully learned neural network structure for better nonlinearity compensation.
Findings
Least squares PB-NLC with clustering quantization offers the best performance-complexity trade-off.
The proposed fully learned neural network improves performance and reduces complexity.
Numerical simulations confirm the superiority of the new approach over existing methods.
Abstract
Fiber nonlinearity effects cap achievable rates and ranges in long-haul optical fiber communication links. Conventional nonlinearity compensation methods, such as perturbation theory-based nonlinearity compensation (PB-NLC), attempt to compensate for the nonlinearity by approximating analytical solutions to the signal propagation over optical fibers. However, their practical usability is limited by model mismatch and the immense computational complexity associated with the analytical computation of perturbation triplets and the nonlinearity distortion field. Recently, machine learning techniques have been used to optimise parameters of PB-based approaches, which traditionally have been determined analytically from physical models. It has been claimed in the literature that the learned PB-NLC approaches have improved performance and/or reduced computational complexity over their…
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Taxonomy
TopicsOptical Network Technologies · Advanced Fiber Optic Sensors · Advanced Fiber Laser Technologies
