Journal of Lightwave Technology, ( ISI ), Volume (41), No (6), Year (2023-3) , Pages (1684-1695)

Title : ( Deep Neural Network-Based QoT Estimation for SMF and FMF Links )

Authors: Mohammad Ali Amirabadi , Mohammad Hossein Kahaei , S. Alireza Nezamalhosseini , Farhad Arpanaei , Andrea Carena ,

Citation: BibTeX | EndNote

Abstract

Quality of transmission (QoT) estimation tools for fiber links are the enabler for the deployment of reconfigurable optical networks. To dynamically set up lightpaths based on traffic request, a centralized controller must base decisions on reliable performance predictions. QoT estimation methods can be categorised in three classes: exact analytical models which provide accurate results with heavy computations, approximate formulas that require less computations but deliver a reduced accuracy, and machine learning (ML)-based methods which potentially have high accuracy with low complexity. To operate an optical network in real-time, beside accurate QoT estimation, the speed in delivering results is a strict requirement. Based on this, only the last two categories are candidates for this application. In this paper, we present a deep neural network (DNN) structure for QoT estimation considering both regular single-mode fiber (SMF) and future few-mode fiber (FMF) proposed to increase the overall network capacity. We comprehensively explore ML-based regression methods for estimating generalized signal-to-noise ratio (GSNR) in partial-load SMF and FMF links. Synthetic datasets have been generated using the enhancedGaussian noise (EGN) model. Results indicate that the proposed DNN-based regressor can provide better accuracy along with less computation complexity, compared with other state-of-the-art ML methods as well as closed-form-EGN and closed-form-GN models.

Keywords

, Deep neural network, few-mode fiber, quality of transmission estimation, regression, single-mode fiber.
برای دانلود از شناسه و رمز عبور پرتال پویا استفاده کنید.

@article{paperid:1100731,
author = {Amirabadi, Mohammad Ali and محمدحسین کهایی and علیرضا نظام الحسینی and فرهاد ارپناعی and آندره کارنا},
title = {Deep Neural Network-Based QoT Estimation for SMF and FMF Links},
journal = {Journal of Lightwave Technology},
year = {2023},
volume = {41},
number = {6},
month = {March},
issn = {0733-8724},
pages = {1684--1695},
numpages = {11},
keywords = {Deep neural network; few-mode fiber; quality of transmission estimation; regression; single-mode fiber.},
}

[Download]

%0 Journal Article
%T Deep Neural Network-Based QoT Estimation for SMF and FMF Links
%A Amirabadi, Mohammad Ali
%A محمدحسین کهایی
%A علیرضا نظام الحسینی
%A فرهاد ارپناعی
%A آندره کارنا
%J Journal of Lightwave Technology
%@ 0733-8724
%D 2023

[Download]