Machine Learning for Optical Network Security Monitoring: A Practical Perspective
Review article, 2020
and localization of optical-layer attacks, and to their integration with standard Network Management Systems (NMSs).
We propose a framework for cognitive security diagnostics that comprises an attack detection module with Supervised Learning (SL), Semi-Supervised Learning (SSL) and Unsupervised Learning (UL) approaches, and an attack localization module that deduces the location of a harmful connection and/or a breached link. The influence of false positives and false negatives is addressed by a newly proposed Window-based Attack Detection (WAD) approach. We provide practical implementationĀ guidelines for the integration of the framework into the NMS and evaluate its performance in an experimental network testbed subjected to attacks, resulting with the largest optical-layer security experimental dataset reported to date.
monitoring
optical network security
attack detection
machine learning
Author
Marija Furdek Prekratic
Chalmers, Electrical Engineering, Communication, Antennas and Optical Networks
Carlos Natalino Da Silva
Chalmers, Electrical Engineering, Communication, Antennas and Optical Networks
Fabian Lipp
Infosim GmbH & Co. KG
David Hock
Infosim GmbH & Co. KG
Andrea Di Giglio
Telecom Italia S.P.A
Marco Schiano
Telecom Italia S.P.A
Journal of Lightwave Technology
0733-8724 (ISSN) 1558-2213 (eISSN)
Vol. 38 11 2860-2871 9064530Safeguarding optical communication networks from cyber-security attacks
Swedish Research Council (VR) (2019-05008), 2020-01-01 -- 2023-12-31.
Areas of Advance
Information and Communication Technology
Driving Forces
Sustainable development
Subject Categories
Telecommunications
DOI
10.1109/JLT.2020.2987032