Perturbation Theory-Aided Learned Digital Back-Propagation Scheme for Optical Fiber Nonlinearity Compensation
Xiang Lin, Shenghang Luo, Sunish Kumar Orappanpara Soman, Octavia A., Dobre, Lutz Lampe, Deyuan Chang, and Chuandong Li

TL;DR
This paper introduces a machine learning-based digital back-propagation scheme for optical fiber nonlinearity compensation, leveraging perturbation theory to enhance performance and flexibility in optical communication systems.
Contribution
It proposes a novel perturbation theory-aided deep neural network approach that improves optical nonlinearity mitigation and reduces complexity compared to existing methods.
Findings
Achieves up to 3.5 dB Q2 factor gain over linear compensation.
Improves performance with fewer spans per step.
Reduces computational complexity through pruning and frequency domain techniques.
Abstract
Derived from the regular perturbation treatment of the nonlinear Schrodinger equation, a machine learning-based scheme to mitigate the intra-channel optical fiber nonlinearity is proposed. Referred to as the perturbation theory-aided (PA) learned digital back-propagation (LDBP), the proposed scheme constructs a deep neural network (DNN) in a way similar to the split-step Fourier method: linear and nonlinear operations alternate. Inspired by the perturbation analysis, the intra-channel cross-phase modulation term is conveniently represented by matrix operations in the DNN. The introduction of this term in each nonlinear operation considerably improves the performance, as well as enables the flexibility of PA-LDBP by adjusting the numbers of spans per step. The proposed scheme is evaluated by numerical simulations of a single carrier optical fiber communication system operating at 32…
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Taxonomy
MethodsPruning
