Detection and Classification of Eavesdropping and Mechanical Vibrations in Fiber Optical Networks by Analyzing Polarization Signatures Over a Noisy Environment
                  Conference: ECOC 2024 - 50th European Conference on Optical Communication
                  09/22/2024 - 09/26/2024 at Frankfurt, Germany              
Proceedings: ITG-Fb. 317: ECOC 2024
Pages: 4Language: englishTyp: PDF
            Authors:
                          Sadighi, Leyla; Karlsson, Stefan; Natalino, Carlos; Wosinska, Lena; Ruffini, Marco; Furdek, Marija
                      
              Abstract:
              We propose a machine-learning-based method to detect and classify eavesdropping and mechanical vibrations in an optical network based on state of polarization variations. Tests in two realworld installations with links of different lengths demonstrate an accuracy of 86.5% in 7 distinct normal and malicious scenarios.            


