Machine Learning-Based Queueing Time Analysis in XGPON
Machine learning has been a popular approach in predicting future demand. In optical access network, machine learning can best predict bandwidth demand so as to reduce delays. This paper presented a machine learning approach to learn queueing time in XGPON given the traffic load, number of frames an...
Published in: | International Journal of Nanoelectronics and Materials |
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Universiti Malaysia Perlis
2021
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Online Access: | https://www.scopus.com/inward/record.uri?eid=2-s2.0-85126105720&partnerID=40&md5=076f8bf3d544331f38ddc000eda19849 |
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2-s2.0-85126105720 Ismail N.A.; Idrus S.M.; Iqbal F.; Zin A.M.; Atan F.; Ali N. Machine Learning-Based Queueing Time Analysis in XGPON 2021 International Journal of Nanoelectronics and Materials 14 Special Issue InCAPE https://www.scopus.com/inward/record.uri?eid=2-s2.0-85126105720&partnerID=40&md5=076f8bf3d544331f38ddc000eda19849 Machine learning has been a popular approach in predicting future demand. In optical access network, machine learning can best predict bandwidth demand so as to reduce delays. This paper presented a machine learning approach to learn queueing time in XGPON given the traffic load, number of frames and packet size. Queueing time contributes to upstream delay and therefore would improve the network performance. Output R acquired from the trained ANN is close to value 1. From the trained ANN, mean squared error (MSE) shows significantly low value and this proves that machine learning-based queueing time analysis offers another dimension of delay analysis on top of numerical analysis. © 2021, Universiti Malaysia Perlis. All rights reserved. Universiti Malaysia Perlis 19855761 English Article |
author |
Ismail N.A.; Idrus S.M.; Iqbal F.; Zin A.M.; Atan F.; Ali N. |
spellingShingle |
Ismail N.A.; Idrus S.M.; Iqbal F.; Zin A.M.; Atan F.; Ali N. Machine Learning-Based Queueing Time Analysis in XGPON |
author_facet |
Ismail N.A.; Idrus S.M.; Iqbal F.; Zin A.M.; Atan F.; Ali N. |
author_sort |
Ismail N.A.; Idrus S.M.; Iqbal F.; Zin A.M.; Atan F.; Ali N. |
title |
Machine Learning-Based Queueing Time Analysis in XGPON |
title_short |
Machine Learning-Based Queueing Time Analysis in XGPON |
title_full |
Machine Learning-Based Queueing Time Analysis in XGPON |
title_fullStr |
Machine Learning-Based Queueing Time Analysis in XGPON |
title_full_unstemmed |
Machine Learning-Based Queueing Time Analysis in XGPON |
title_sort |
Machine Learning-Based Queueing Time Analysis in XGPON |
publishDate |
2021 |
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International Journal of Nanoelectronics and Materials |
container_volume |
14 |
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Special Issue InCAPE |
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url |
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85126105720&partnerID=40&md5=076f8bf3d544331f38ddc000eda19849 |
description |
Machine learning has been a popular approach in predicting future demand. In optical access network, machine learning can best predict bandwidth demand so as to reduce delays. This paper presented a machine learning approach to learn queueing time in XGPON given the traffic load, number of frames and packet size. Queueing time contributes to upstream delay and therefore would improve the network performance. Output R acquired from the trained ANN is close to value 1. From the trained ANN, mean squared error (MSE) shows significantly low value and this proves that machine learning-based queueing time analysis offers another dimension of delay analysis on top of numerical analysis. © 2021, Universiti Malaysia Perlis. All rights reserved. |
publisher |
Universiti Malaysia Perlis |
issn |
19855761 |
language |
English |
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Article |
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scopus |
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Scopus |
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1809677596096462848 |