Advancing theoretical understanding and practical performance of signal processing for nonlinear optical communications through machine learning

Nonlinear effects provide inherent limitations in fiber optical communications. Here, the authors experimentally demonstrate improved digital back propagation with machine learning and use the results to reveal insights in the optimization of digital signal processing.

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Autores principales: Qirui Fan, Gai Zhou, Tao Gui, Chao Lu, Alan Pak Tao Lau
Formato: article
Lenguaje:EN
Publicado: Nature Portfolio 2020
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Acceso en línea:https://doaj.org/article/50f8d967bc4946a0b867e0de9bb7a6ad
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spelling oai:doaj.org-article:50f8d967bc4946a0b867e0de9bb7a6ad2021-12-02T16:26:32ZAdvancing theoretical understanding and practical performance of signal processing for nonlinear optical communications through machine learning10.1038/s41467-020-17516-72041-1723https://doaj.org/article/50f8d967bc4946a0b867e0de9bb7a6ad2020-07-01T00:00:00Zhttps://doi.org/10.1038/s41467-020-17516-7https://doaj.org/toc/2041-1723Nonlinear effects provide inherent limitations in fiber optical communications. Here, the authors experimentally demonstrate improved digital back propagation with machine learning and use the results to reveal insights in the optimization of digital signal processing.Qirui FanGai ZhouTao GuiChao LuAlan Pak Tao LauNature PortfolioarticleScienceQENNature Communications, Vol 11, Iss 1, Pp 1-11 (2020)
institution DOAJ
collection DOAJ
language EN
topic Science
Q
spellingShingle Science
Q
Qirui Fan
Gai Zhou
Tao Gui
Chao Lu
Alan Pak Tao Lau
Advancing theoretical understanding and practical performance of signal processing for nonlinear optical communications through machine learning
description Nonlinear effects provide inherent limitations in fiber optical communications. Here, the authors experimentally demonstrate improved digital back propagation with machine learning and use the results to reveal insights in the optimization of digital signal processing.
format article
author Qirui Fan
Gai Zhou
Tao Gui
Chao Lu
Alan Pak Tao Lau
author_facet Qirui Fan
Gai Zhou
Tao Gui
Chao Lu
Alan Pak Tao Lau
author_sort Qirui Fan
title Advancing theoretical understanding and practical performance of signal processing for nonlinear optical communications through machine learning
title_short Advancing theoretical understanding and practical performance of signal processing for nonlinear optical communications through machine learning
title_full Advancing theoretical understanding and practical performance of signal processing for nonlinear optical communications through machine learning
title_fullStr Advancing theoretical understanding and practical performance of signal processing for nonlinear optical communications through machine learning
title_full_unstemmed Advancing theoretical understanding and practical performance of signal processing for nonlinear optical communications through machine learning
title_sort advancing theoretical understanding and practical performance of signal processing for nonlinear optical communications through machine learning
publisher Nature Portfolio
publishDate 2020
url https://doaj.org/article/50f8d967bc4946a0b867e0de9bb7a6ad
work_keys_str_mv AT qiruifan advancingtheoreticalunderstandingandpracticalperformanceofsignalprocessingfornonlinearopticalcommunicationsthroughmachinelearning
AT gaizhou advancingtheoreticalunderstandingandpracticalperformanceofsignalprocessingfornonlinearopticalcommunicationsthroughmachinelearning
AT taogui advancingtheoreticalunderstandingandpracticalperformanceofsignalprocessingfornonlinearopticalcommunicationsthroughmachinelearning
AT chaolu advancingtheoreticalunderstandingandpracticalperformanceofsignalprocessingfornonlinearopticalcommunicationsthroughmachinelearning
AT alanpaktaolau advancingtheoreticalunderstandingandpracticalperformanceofsignalprocessingfornonlinearopticalcommunicationsthroughmachinelearning
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