Deep Learning for Detection of Harmful Events in Real-World, Noisy Optical Fiber Deployments
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| Název: | Deep Learning for Detection of Harmful Events in Real-World, Noisy Optical Fiber Deployments |
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| Autoři: | Sadighi, Leyla, 1989, Karlsson, Stefan, Natalino Da Silva, Carlos, 1987, Wosinska, Lena, 1951, Ruffini, Marco, Furdek Prekratic, Marija, 1985 |
| Zdroj: | Journal of Lightwave Technology. 43(13):6092-6101 |
| Témata: | fully-connected layers, One-Dimension (1D) Convolutional Neural Network (CNN), harmful vibration, nonharmful vibration, Machine Learning (ML), State of Polarization (SOP) variations, eavesdropping, Deep Learning (DL) |
| Popis: | Optical network infrastructure underpins global communication networks. It is exposed to various physical layer breaches, such as fiber cuts or eavesdropping via fiber bending, that may violate privacy or disrupt services. Analyses of State of Polarization (SOP) variations induced by external events, combined with Machine Learning (ML) techniques, can contribute to early identification of events and categorization of potential threats. However, real-world deployment of automated threat detection and mitigation faces many challenges, including the inconsistencies between controlled laboratory settings, often used for dataset collection for ML training, and real-world, noisy environments. In this paper, we study the detection of external disturbances in real-world fiber installations by analyzing the induced changes in the SOP of optical signals. We develop a suite of Deep Learning (DL) models, including One Dimension (1D) Convolutional Neural Network (CNN) and fullyconnected dense layers, for the detection of harmful events in noisy environments comprising a shorter and a longer fiber link installation with overlapping external disturbances. The proposed approach employs an optical analyzer to capture SOP changes resulting from mechanical or acoustic vibrations, as well as eavesdropping attempts. Upon careful tuning of the DL models' hyper-parameters, 98.57% accuracy is obtained for the shorter, and 92.26% for the longer link installation. |
| Popis souboru: | electronic |
| Přístupová URL adresa: | https://research.chalmers.se/publication/545956 https://research.chalmers.se/publication/545956/file/545956_Fulltext.pdf |
| Databáze: | SwePub |
| Abstrakt: | Optical network infrastructure underpins global communication networks. It is exposed to various physical layer breaches, such as fiber cuts or eavesdropping via fiber bending, that may violate privacy or disrupt services. Analyses of State of Polarization (SOP) variations induced by external events, combined with Machine Learning (ML) techniques, can contribute to early identification of events and categorization of potential threats. However, real-world deployment of automated threat detection and mitigation faces many challenges, including the inconsistencies between controlled laboratory settings, often used for dataset collection for ML training, and real-world, noisy environments. In this paper, we study the detection of external disturbances in real-world fiber installations by analyzing the induced changes in the SOP of optical signals. We develop a suite of Deep Learning (DL) models, including One Dimension (1D) Convolutional Neural Network (CNN) and fullyconnected dense layers, for the detection of harmful events in noisy environments comprising a shorter and a longer fiber link installation with overlapping external disturbances. The proposed approach employs an optical analyzer to capture SOP changes resulting from mechanical or acoustic vibrations, as well as eavesdropping attempts. Upon careful tuning of the DL models' hyper-parameters, 98.57% accuracy is obtained for the shorter, and 92.26% for the longer link installation. |
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| ISSN: | 07338724 15582213 |
| DOI: | 10.1109/JLT.2025.3557748 |
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