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Neural Turbo Equalization: Deep Learning for Fiber-Optic Nonlinearity Compensation

Authors :
Koike-Akino, Toshiaki
Wang, Ye
Millar, David S.
Kojima, Keisuke
Parsons, Kieran
Publication Year :
2019

Abstract

Recently, data-driven approaches motivated by modern deep learning have been applied to optical communications in place of traditional model-based counterparts. The application of deep neural networks (DNN) allows flexible statistical analysis of complicated fiber-optic systems without relying on any specific physical models. Due to the inherent nonlinearity in DNN, various equalizers based on DNN have shown significant potentials to mitigate fiber nonlinearity. In this paper, we propose a turbo equalization (TEQ) based on DNN as a new alternative framework to deal with nonlinear fiber impairments for future coherent optical communications. The proposed DNN-TEQ is constructed with nested deep residual networks (ResNet) to train extrinsic likelihood given soft-information feedback from channel decoding. Through extrinsic information transfer (EXIT) analysis, we verify that our DNN-TEQ can accelerate decoding convergence to achieve a significant gain in achievable throughput by 0.61b/s/Hz. We also demonstrate that optimizing irregular low-density parity-check (LDPC) codes to match EXIT chart of the DNN-TEQ can improve achievable rates by up to 0.12 b/s/Hz.<br />Comment: 7 pages, 13 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1911.10131
Document Type :
Working Paper