In order to accomplish cost-efficient management of complex optical communication networks, operators are seeking automation of network diagnosis and management by means of Machine Learning (ML). To support these objectives, new functions are needed to enable cognitive, autonomous management of optical network security. This paper focuses on the challenges related to the performance of ML-based approaches for detectionand 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...
A module to re-shape optical constellations making the optical signal resembles as it has traversed ...
Automated fault management is at the forefront of next-generation optical communication networks. Th...
Network management for optical networks faces additional security challenges that arise by using tra...
We discuss the role of supervised, unsupervised and semi-supervised learning techniques in identific...
We report on the first demonstration of machine-learning-assisted detection, identification and loca...
As the communication infrastructure that sustains critical societal services, optical networks need ...
The paper describes the Optical Security Manager module and focuses on the role of Machine Learning ...
As critical communication infrastructure, optical networks have a vital role in safe and dependable ...
This chapter focuses on challenges, progress and pitfalls in applying ML to physical-layer security ...
The ongoing evolution of optical networks towards autonomous systems supporting high-performance ser...
Optical networks are vulnerable to a range of attacks targeting service disruption at the physical l...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
To support secure and reliable operation of optical networks, we propose a framework for autonomous ...
Effective fault management is essential for qualityof- service assurance in optical networks. Conven...
Today's telecommunication networks have become sources of enormous amounts of widely heterogeneous d...
A module to re-shape optical constellations making the optical signal resembles as it has traversed ...
Automated fault management is at the forefront of next-generation optical communication networks. Th...
Network management for optical networks faces additional security challenges that arise by using tra...
We discuss the role of supervised, unsupervised and semi-supervised learning techniques in identific...
We report on the first demonstration of machine-learning-assisted detection, identification and loca...
As the communication infrastructure that sustains critical societal services, optical networks need ...
The paper describes the Optical Security Manager module and focuses on the role of Machine Learning ...
As critical communication infrastructure, optical networks have a vital role in safe and dependable ...
This chapter focuses on challenges, progress and pitfalls in applying ML to physical-layer security ...
The ongoing evolution of optical networks towards autonomous systems supporting high-performance ser...
Optical networks are vulnerable to a range of attacks targeting service disruption at the physical l...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
To support secure and reliable operation of optical networks, we propose a framework for autonomous ...
Effective fault management is essential for qualityof- service assurance in optical networks. Conven...
Today's telecommunication networks have become sources of enormous amounts of widely heterogeneous d...
A module to re-shape optical constellations making the optical signal resembles as it has traversed ...
Automated fault management is at the forefront of next-generation optical communication networks. Th...
Network management for optical networks faces additional security challenges that arise by using tra...