Model-based probabilistic reasoning for self-diagnosis of telecommunication networks: application to a GPON-FTTH access network

Serge Romaric Tembo Mouafo 1, 2, 3 Sandrine Vaton 1, 2 Jean-Luc Courant 3 Stephane Gosselin 3 Michel Beuvelot 3
1 ADOPNET - Advanced technologies for operated networks
UR1 - Université de Rennes 1, Télécom Bretagne, IRISA-D2 - RÉSEAUX, TÉLÉCOMMUNICATION ET SERVICES
Abstract : Carrying out self-diagnosis of telecommunication networks requires an understanding of the phenomenon of fault propagation on these networks. This understanding makes it possible to acquire relevant knowledge in order to automatically solve the problem of reverse fault propagation. Two main types of methods can be used to understand fault propagation in order to guess or approximate as much as possible the root causes of observed alarms. Expert systems formulate laws or rules that best describe the phenomenon. Artificial intelligence methods consider that a phenomenon is understood if it can be reproduced by modeling. We propose in this paper, a generic probabilistic modeling method which facilitates fault propagation modeling on large-scale telecommunication networks. A Bayesian network (BN) model of fault propagation on gigabit-capable passive optical network-fiber to the home (GPON-FTTH) access network is designed according to the generic model. GPON-FTTH network skills are used to build structure and approximatively determine parameters of the BN model so-called expert BN model of the GPON-FTTH network. This BN model is confronted with reality by carrying out self-diagnosis of real malfunctions encountered on a commercial GPON-FTTH network. Obtained self-diagnosis results are very satisfying and we show how and why these results of the probabilistic model are more consistent with the behaviour of the GPON-FTTH network, and more reasonable on a representative sample of diagnosis cases, than a rule-based expert system. With the main goal to improve diagnostic performances of the BN model, we study and apply expectation maximization algorithm in order to automatically fine-tune parameters of the BN model from real data generated by a commercial GPON-FTTH network. We show that the new BN model with optimized parameters reasonably improves self-diagnosis previously carried out by the expert Bayesian network model of the GPON-FTTH access network.
Liste complète des métadonnées

Littérature citée [33 références]  Voir  Masquer  Télécharger

https://hal.archives-ouvertes.fr/hal-01533710
Contributeur : Bibliothèque Télécom Bretagne <>
Soumis le : mardi 6 juin 2017 - 17:22:02
Dernière modification le : samedi 23 juin 2018 - 01:19:29
Document(s) archivé(s) le : jeudi 7 septembre 2017 - 13:50:22

Fichier

JNSM_Tembo.pdf
Fichiers produits par l'(les) auteur(s)

Identifiants

Citation

Serge Romaric Tembo Mouafo, Sandrine Vaton, Jean-Luc Courant, Stephane Gosselin, Michel Beuvelot. Model-based probabilistic reasoning for self-diagnosis of telecommunication networks: application to a GPON-FTTH access network. Journal of Network and Systems Management, Springer Verlag, 2017, 25 (3), pp.558 - 590. 〈10.1007/s10922-016-9401-0〉. 〈hal-01533710〉

Partager

Métriques

Consultations de la notice

489

Téléchargements de fichiers

158