This work considers the problem of fault localization in transparent optical networks. The aim is to localize single-link failures by utilizing statistical machine learning techniques trained on data that describe the network state upon current and past failure incidents. In particular, a Gaussian Process (GP) classifier is trained on historical data extracted from the examined network, with the goal of modeling and predicting the failure probability of each link therein. To limit the set of suspect links for every failure incident, the proposed approach is complemented with the utilization of a Graph-Based Correlation heuristic. The proposed approach is tested on a dataset generated for an OFDM-based optical network, demonstrating that it ...
Abstract—We introduce the concepts of monitoring paths (MPs) and monitoring cycles (MCs) for unique ...
Fault detection Fault localization Optimal monitor placement necessary for transparent optical netwo...
International audienceThis paper presents insights on the promises of probabilistic modeling and mac...
This work considers the problem of fault localization in transparent optical networks. The aim is to...
In this work we consider the problem of fault localization in transparent optical networks.We attemp...
In this paper, we address failure localization from both a practical and a theoretical perspective. ...
The deployment of 5G and network slicing has challenged the current network management requirements,...
After an overview on main concepts of machine learning, we discuss use cases in optical networks fai...
For several high speed networks, providing resilience against failures is an essential requirement. ...
Failure management plays a role of capital importance in optical networks to avoid service disruptio...
Abstract—In this paper, we consider the problem of fault localization in all-optical networks. We in...
Fault identification and location in optical networks must cope with a multitude of factors: (i) the...
Optical network failure management (ONFM) is a promising application of machine learning (ML) to opt...
Effective fault management is essential for qualityof- service assurance in optical networks. Conven...
Abstract—We introduce the concepts of monitoring paths (MPs) and monitoring cycles (MCs) for unique ...
Fault detection Fault localization Optimal monitor placement necessary for transparent optical netwo...
International audienceThis paper presents insights on the promises of probabilistic modeling and mac...
This work considers the problem of fault localization in transparent optical networks. The aim is to...
In this work we consider the problem of fault localization in transparent optical networks.We attemp...
In this paper, we address failure localization from both a practical and a theoretical perspective. ...
The deployment of 5G and network slicing has challenged the current network management requirements,...
After an overview on main concepts of machine learning, we discuss use cases in optical networks fai...
For several high speed networks, providing resilience against failures is an essential requirement. ...
Failure management plays a role of capital importance in optical networks to avoid service disruptio...
Abstract—In this paper, we consider the problem of fault localization in all-optical networks. We in...
Fault identification and location in optical networks must cope with a multitude of factors: (i) the...
Optical network failure management (ONFM) is a promising application of machine learning (ML) to opt...
Effective fault management is essential for qualityof- service assurance in optical networks. Conven...
Abstract—We introduce the concepts of monitoring paths (MPs) and monitoring cycles (MCs) for unique ...
Fault detection Fault localization Optimal monitor placement necessary for transparent optical netwo...
International audienceThis paper presents insights on the promises of probabilistic modeling and mac...