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Fault Localization based on Knowledge Graph in Software-Defined Optical Networks

Authors :
Sabidur Rahman
Xiangjun Xin
Feng Wang
Jie Zhang
Yajie Li
Zhuotong Li
Yongli Zhao
Source :
Journal of Lightwave Technology. 39:4236-4246
Publication Year :
2021
Publisher :
Institute of Electrical and Electronics Engineers (IEEE), 2021.

Abstract

In the era of the fifth-generation fixed network (F5G), optical networks must be developed to support large bandwidth, low latency, high reliability, and intelligent management. Studies have shown that software-defined optical networks (SDON) and artificial intelligence can help improve the performance and management capabilities of optical networks. Inside a large-scale optical network, many types of alarms are reported that indicate network anomalies. Relationships between the alarms are complicated, making it difficult to accurately locate the source of the fault(s). In this work, we propose a knowledge-guided fault localization method, using network alarm knowledge to analyze network abnormalities. Our method introduces knowledge graphs (KGs) into the alarm analysis process. We also propose a reasoning model based on graph neural network (GNN), to perform relational reasoning on alarm KGs and locate the network faults. We develop an ONOS-based SDON platform for experimental verification, which includes a set of processes for the construction and application of alarm KGs. The experimental results show the proposed method has high accuracy and provide motivation for the industry-scale use of KGs for alarm analysis and fault localization.

Details

ISSN :
15582213 and 07338724
Volume :
39
Database :
OpenAIRE
Journal :
Journal of Lightwave Technology
Accession number :
edsair.doi...........f5ed2449726fef70246ef6ee647d0eac