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Time-Series Representation Learning in Topology Prediction for Passive Optical Network of Telecom Operators

The passive optical network (PON) is widely used in optical fiber communication thanks to its low cost and low resource consumption. However, the passiveness brings about a critical problem that it requires manual work to identify the topology structure, which is costly and prone to bringing noise t...

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Autores principales: Zhao, Haoran, Fang, Yuchen, Zhao, Yuxiang, Tian, Zheng, Zhang, Weinan, Feng, Xidong, Yu, Li, Li, Wei, Fan, Hulei, Mu, Tiema
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10056920/
https://www.ncbi.nlm.nih.gov/pubmed/36992056
http://dx.doi.org/10.3390/s23063345
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author Zhao, Haoran
Fang, Yuchen
Zhao, Yuxiang
Tian, Zheng
Zhang, Weinan
Feng, Xidong
Yu, Li
Li, Wei
Fan, Hulei
Mu, Tiema
author_facet Zhao, Haoran
Fang, Yuchen
Zhao, Yuxiang
Tian, Zheng
Zhang, Weinan
Feng, Xidong
Yu, Li
Li, Wei
Fan, Hulei
Mu, Tiema
author_sort Zhao, Haoran
collection PubMed
description The passive optical network (PON) is widely used in optical fiber communication thanks to its low cost and low resource consumption. However, the passiveness brings about a critical problem that it requires manual work to identify the topology structure, which is costly and prone to bringing noise to the topology logs. In this paper, we provide a base solution firstly introducing neural networks for such problems, and based on that solution we propose a complete methodology (PT-Predictor) for predicting PON topology through representation learning on its optical power data. Specifically, we design useful model ensembles (GCE-Scorer) to extract the features of optical power with noise-tolerant training techniques integrated. We further implement a data-based aggregation algorithm (MaxMeanVoter) and a novel Transformer-based voter (TransVoter) to predict the topology. Compared with previous model-free methods, PT-Predictor is able to improve prediction accuracy by 23.1% in scenarios where data provided by telecom operators is sufficient, and by 14.8% in scenarios where data is temporarily insufficient. Besides, we identify a class of scenarios where PON topology does not follow a strict tree structure, and thus topology prediction cannot be effectively performed by relying on optical power data alone, which will be studied in our future work.
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spelling pubmed-100569202023-03-30 Time-Series Representation Learning in Topology Prediction for Passive Optical Network of Telecom Operators Zhao, Haoran Fang, Yuchen Zhao, Yuxiang Tian, Zheng Zhang, Weinan Feng, Xidong Yu, Li Li, Wei Fan, Hulei Mu, Tiema Sensors (Basel) Article The passive optical network (PON) is widely used in optical fiber communication thanks to its low cost and low resource consumption. However, the passiveness brings about a critical problem that it requires manual work to identify the topology structure, which is costly and prone to bringing noise to the topology logs. In this paper, we provide a base solution firstly introducing neural networks for such problems, and based on that solution we propose a complete methodology (PT-Predictor) for predicting PON topology through representation learning on its optical power data. Specifically, we design useful model ensembles (GCE-Scorer) to extract the features of optical power with noise-tolerant training techniques integrated. We further implement a data-based aggregation algorithm (MaxMeanVoter) and a novel Transformer-based voter (TransVoter) to predict the topology. Compared with previous model-free methods, PT-Predictor is able to improve prediction accuracy by 23.1% in scenarios where data provided by telecom operators is sufficient, and by 14.8% in scenarios where data is temporarily insufficient. Besides, we identify a class of scenarios where PON topology does not follow a strict tree structure, and thus topology prediction cannot be effectively performed by relying on optical power data alone, which will be studied in our future work. MDPI 2023-03-22 /pmc/articles/PMC10056920/ /pubmed/36992056 http://dx.doi.org/10.3390/s23063345 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Zhao, Haoran
Fang, Yuchen
Zhao, Yuxiang
Tian, Zheng
Zhang, Weinan
Feng, Xidong
Yu, Li
Li, Wei
Fan, Hulei
Mu, Tiema
Time-Series Representation Learning in Topology Prediction for Passive Optical Network of Telecom Operators
title Time-Series Representation Learning in Topology Prediction for Passive Optical Network of Telecom Operators
title_full Time-Series Representation Learning in Topology Prediction for Passive Optical Network of Telecom Operators
title_fullStr Time-Series Representation Learning in Topology Prediction for Passive Optical Network of Telecom Operators
title_full_unstemmed Time-Series Representation Learning in Topology Prediction for Passive Optical Network of Telecom Operators
title_short Time-Series Representation Learning in Topology Prediction for Passive Optical Network of Telecom Operators
title_sort time-series representation learning in topology prediction for passive optical network of telecom operators
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10056920/
https://www.ncbi.nlm.nih.gov/pubmed/36992056
http://dx.doi.org/10.3390/s23063345
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