Dynamic evolving neural fuzzy inference system equalization scheme in mode division multiplexing for optical fiber transmission
The performance of optical mode division multiplexing (MDM) is affected by intersymbol interference (ISI) from nonlinear channel impairments arising from higherorder mode coupling and modal dispersion in multimode fiber. However, the existing MDM equalization algorithms can only mitigate the linear...
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my-uum-etd.102712023-02-01T00:06:00Z Dynamic evolving neural fuzzy inference system equalization scheme in mode division multiplexing for optical fiber transmission 2017 Noori, Awab Sop Chit, Suwannit Chareen Amphawan, Angela College of Arts and Sciences (CAS) College of Arts and Sciences (CAS) QA76.76 Fuzzy System. T Technology (General) The performance of optical mode division multiplexing (MDM) is affected by intersymbol interference (ISI) from nonlinear channel impairments arising from higherorder mode coupling and modal dispersion in multimode fiber. However, the existing MDM equalization algorithms can only mitigate the linear distortion, but they cannot address nonlinear distortion in the signal accurately. Therefore, there is a need to explore how ISI can be mitigated to recover the transmitted signal. This research aims to control the broadening of the MDM signal and minimize the undesirable distortion among channels in MMF by signal reshaping at the receiver. A dynamic evolving neural fuzzy inference system (DENFIS) equalization scheme has been used to achieve this objective. This research was conducted through a few steps commencing with modelling the MDM system in Optsim and collecting the data. Then, the signal reshaping parameters were determined. After that, DENFIS equalization, least mean square (LMS) and recursive least squares (RLS) equalizations were implemented and evaluated. Results illustrated that nonlinear DENFIS equalization scheme can improve MDM signal at a higher accuracy than previous linear equalization schemes. DENFIS equalization demonstrates better signal reshaping accuracy with an average root mean square error (RMSE) of 0.0338 and outperformed linear LMS and RLS equalization schemes with high average RMSE values of 0.101 and 0.1914 respectively. The reduced RMSE implies that DENFIS equalization scheme mitigates ISI more effectively in a nonlinear channel. This effect can hasten data transmission rates in MDM. Moreover, the successful offline implementation of DENFIS equalization in MDM encourages future online implementation of DENFIS equalization in embedded optical systems. 2017 Thesis https://etd.uum.edu.my/10271/ https://etd.uum.edu.my/10271/1/s817063_01.pdf text eng public other masters Universiti Utara Malaysia |
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Universiti Utara Malaysia |
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UUM ETD |
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eng |
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Sop Chit, Suwannit Chareen Amphawan, Angela |
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QA76.76 Fuzzy System. T Technology (General) |
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QA76.76 Fuzzy System. T Technology (General) Noori, Awab Dynamic evolving neural fuzzy inference system equalization scheme in mode division multiplexing for optical fiber transmission |
description |
The performance of optical mode division multiplexing (MDM) is affected by intersymbol interference (ISI) from nonlinear channel impairments arising from higherorder mode coupling and modal dispersion in multimode fiber. However, the existing MDM equalization algorithms can only mitigate the linear distortion, but they cannot address nonlinear distortion in the signal accurately. Therefore, there is a need to explore how ISI can be mitigated to recover the transmitted signal. This research aims to control the broadening of the MDM signal and minimize the undesirable distortion among channels in MMF by signal reshaping at the receiver. A dynamic evolving neural fuzzy inference system (DENFIS) equalization scheme has been used to achieve this objective. This research was conducted through a few steps commencing with modelling the MDM system in Optsim and collecting the data. Then, the signal reshaping parameters were determined. After that, DENFIS equalization, least mean square (LMS) and recursive least squares (RLS) equalizations were implemented and evaluated. Results illustrated that nonlinear DENFIS equalization scheme can improve MDM signal at a higher accuracy than previous linear equalization schemes. DENFIS
equalization demonstrates better signal reshaping accuracy with an average root mean square error (RMSE) of 0.0338 and outperformed linear LMS and RLS equalization schemes with high average RMSE values of 0.101 and 0.1914 respectively. The
reduced RMSE implies that DENFIS equalization scheme mitigates ISI more effectively in a nonlinear channel. This effect can hasten data transmission rates in MDM. Moreover, the successful offline implementation of DENFIS equalization in MDM encourages future online implementation of DENFIS equalization in embedded
optical systems. |
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Thesis |
qualification_name |
other |
qualification_level |
Master's degree |
author |
Noori, Awab |
author_facet |
Noori, Awab |
author_sort |
Noori, Awab |
title |
Dynamic evolving neural fuzzy inference system equalization scheme in mode division multiplexing for optical fiber transmission |
title_short |
Dynamic evolving neural fuzzy inference system equalization scheme in mode division multiplexing for optical fiber transmission |
title_full |
Dynamic evolving neural fuzzy inference system equalization scheme in mode division multiplexing for optical fiber transmission |
title_fullStr |
Dynamic evolving neural fuzzy inference system equalization scheme in mode division multiplexing for optical fiber transmission |
title_full_unstemmed |
Dynamic evolving neural fuzzy inference system equalization scheme in mode division multiplexing for optical fiber transmission |
title_sort |
dynamic evolving neural fuzzy inference system equalization scheme in mode division multiplexing for optical fiber transmission |
granting_institution |
Universiti Utara Malaysia |
granting_department |
College of Arts and Sciences (CAS) |
publishDate |
2017 |
url |
https://etd.uum.edu.my/10271/1/s817063_01.pdf |
_version_ |
1776103779523887104 |