Title :
A probabilistic approach to fault diagnosis in linear lightwave networks
Author :
Deng, Robert H. ; Lazar, Aurel A. ; Wang, Weiguo
Author_Institution :
Nat. Univ. of Singapore, Singapore
fDate :
12/1/1993 12:00:00 AM
Abstract :
The application of probabilistic reasoning to fault diagnosis in linear lightwave networks (LLNs) is investigated. The LLN inference model is represented by a Bayesian network (or causal network). An inference algorithm is proposed that is capable of conducting fault diagnosis (inference) with incomplete evidence and on an interactive basis. Two belief updating algorithms are presented which are used by the inference algorithm for performing fault diagnosis. The first belief updating algorithm is a simplified version of the one proposed by Pearl (1988) for singly connected inference models. The second belief updating algorithm applies to multiply connected inference models and is more general than the first. The authors also introduce a t-fault diagnosis system and an adaptive diagnosis system to further reduce the computational complexity of the fault diagnosis process
Keywords :
Bayes methods; computational complexity; diagnostic expert systems; inference mechanisms; iterative methods; optical links; reliability; telecommunication network management; telecommunications computing; Bayesian network; LLN; adaptive diagnosis system; belief updating algorithms; causal network; computational complexity; fault diagnosis; inference algorithm; linear lightwave networks; multiply connected inference models; probabilistic approach; probabilistic reasoning; t-fault diagnosis system; Adaptive systems; Bayesian methods; Communication networks; Computational complexity; Computer network management; Engines; Fault diagnosis; Inference algorithms; Intelligent networks; Knowledge management;
Journal_Title :
Selected Areas in Communications, IEEE Journal on