2022
DOI: 10.1109/jlt.2021.3134098
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Extraction and Early Detection of Anomalies in Lightpath SNR Using Machine Learning Models

Abstract: In a context of ever-increasing traffic, a degradation of the optical layer could affect client demands, in particular the quality of service provided by telecommunications operators. Thus, the rapid detection and prediction of performance degradations occurring in the optical lightpath could help to minimize errors in the network. This paper proposes a failure detection model, equivalent to a performance degradation detection model, but based on machine learning (ML) techniques, namely, the interquartile rang… Show more

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Cited by 6 publications
(1 citation statement)
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“…. The time unit 0 to 5 indicates 0 to 125 hrs(Allogba, Et al., 2021).70% of the total collected data is used for training the network, and the left 30% is used to get the network to generate the OSNR (for testing and validation).…”
mentioning
confidence: 99%
“…. The time unit 0 to 5 indicates 0 to 125 hrs(Allogba, Et al., 2021).70% of the total collected data is used for training the network, and the left 30% is used to get the network to generate the OSNR (for testing and validation).…”
mentioning
confidence: 99%