2023
DOI: 10.1364/jocn.475882
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Faulty branch identification in passive optical networks using machine learning

Abstract: Passive optical networks (PONs) have become a promising broadband access network solution thanks to their wide bandwidth, low-cost deployment and maintenance, and scalability. To ensure a reliable transmission, and to meet service level agreements, PON systems have to be monitored constantly in order to quickly identify and localize network faults and thus reduce maintenance costs, minimize downtime, and enhance quality of service. Typically, a service disruption in a PON system is mainly due to fiber cuts and… Show more

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Cited by 7 publications
(3 citation statements)
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References 17 publications
(19 reference statements)
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“…Application, network, and element hierarchies can be managed based on abstraction and management domains. Currently, artificial intelligence (AI) and ML [152][153][154][155][156][157][158][159][160][161][162] are showing great capabilities in solving tasks in optical network fault management, resource allocation, and optical path quality of transmission (QoT) estimation. However, the focus of the research community has been on the predictive power of ML models, neglecting aspects related to model understanding, that is, explaining how to make predictions.…”
Section: Beyond-100g Ng-pon Intelligent Control and Management Techno...mentioning
confidence: 99%
“…Application, network, and element hierarchies can be managed based on abstraction and management domains. Currently, artificial intelligence (AI) and ML [152][153][154][155][156][157][158][159][160][161][162] are showing great capabilities in solving tasks in optical network fault management, resource allocation, and optical path quality of transmission (QoT) estimation. However, the focus of the research community has been on the predictive power of ML models, neglecting aspects related to model understanding, that is, explaining how to make predictions.…”
Section: Beyond-100g Ng-pon Intelligent Control and Management Techno...mentioning
confidence: 99%
“…Business, network, and element hierarchies can be managed based on abstraction and management domains. Currently, artificial intelligence (AI) and ML [148][149][150][151][152][153][154][155][156][157][158] are showing great capabilities in solving tasks in optical network fault management, resource allocation, and quality of transmission optical path (QoT) estimation. However, the focus of the research community has been on the predictive power of ML models, neglecting aspects related to model understanding.…”
Section: Beyond 100g Ng-pon Intelligent Control Management Technologymentioning
confidence: 99%
“…The parameters that are returned to the retail operator include the operational status of the ONT, the attenuation, the date/time of the last connection, etc. 32 .…”
Section: Introductionmentioning
confidence: 99%