IEICE Transactions on Communications
Online ISSN : 1745-1345
Print ISSN : 0916-8516

This article has now been updated. Please use the final version.

Demodulation framework based on machine learning for unrepeated transmission systems
Ryuta SHIRAKIYojiro MORIHiroshi HASEGAWA
Author information
JOURNAL RESTRICTED ACCESS Advance online publication

Article ID: 2023PNP0003

Details
Abstract

We propose a demodulation framework to extend the maximum distance of unrepeated transmission systems, where the simplest back propagation (BP), polarization and phase recovery, data arrangement for machine learning (ML), and symbol decision based on ML are rationally combined. The deterministic waveform distortion caused by fiber nonlinearity and chromatic dispersion is partially eliminated by BP whose calculation cost is minimized by adopting the single-step Fourier method in a pre-processing step. The non-deterministic waveform distortion, i.e., polarization and phase fluctuations, can be eliminated in a precise manner. Finally, the optimized ML model conducts the symbol decision under the influence of residual deterministic waveform distortion that cannot be cancelled by the simplest BP. Extensive numerical simulations confirm that a DP-16QAM signal can be transmitted over 240 km of a standard single-mode fiber without optical repeaters. The maximum transmission distance is extended by 25 km.

Content from these authors
© 2023 The Institute of Electronics, Information and Communication Engineers
feedback
Top