Title : ( Meta-ensemble learning for OPM in FMF systems )
Authors: Mohammad Ali Amirabadi , S. A. Nezamalhosseini , Mohammad Hossein Kahaiee ,Abstract
Optical performance monitoring (OPM) is crucial for facilitating the management of future few-mode fiber (FMF)-based transmissions. OPM deploys fault detection and link diagnosis by measuring the physical layer states and provides feedback to the controller. Recently, machine learning (ML) has gained a lot of attention for OPM, and various ML algorithms were developed, wherein the selection of the proper method is a challenge. Ensemble learning (EL) solves this challenge by combining different ML models; however, this simultaneous employment suffers from increased complexity and dependency on the performance of each individual model. Meta-ensemble learning (MEL) provides a promising solution by intelligently selecting the proper ensemble at each instance. In this work, we employ MEL for OPM in FMF systems. We compare the proposed MEL-based OPM method with naive EL (NEL), which is a well-known EL method. The obtained results indicate that proposed MEL-based OPM method provides better performance with the loss data set size compared with NEL-based OPM. Furthermore, the proposed MEL-based OPM method does not need the feature preprocessing, which is an essential step in other ML algorithmssuch as NEL-basedOPM.
Keywords
, Meta-ensemble learning, OPM , FMF systems@article{paperid:1100729,
author = {Amirabadi, Mohammad Ali and علیرضا نظام الحسینی and محمد حسین کهایی},
title = {Meta-ensemble learning for OPM in FMF systems},
journal = {Applied Optics},
year = {2022},
volume = {61},
number = {21},
month = {July},
issn = {1559-128x},
pages = {6249--6256},
numpages = {7},
keywords = {Meta-ensemble learning; OPM ; FMF systems},
}
%0 Journal Article
%T Meta-ensemble learning for OPM in FMF systems
%A Amirabadi, Mohammad Ali
%A علیرضا نظام الحسینی
%A محمد حسین کهایی
%J Applied Optics
%@ 1559-128x
%D 2022