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 ,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.@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.},
}
%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