An event-driven fault localization algorithm based on incremental bayesian suspected degree

Most fault localization techniques is based on time windows. The size of time windows impacts on the accuracy of the algorithms greatly. This paper takes weighted bipartite graph as fault propagation model and proposes a heuristic fault localization algorithm based on Incremental Bayesian Suspected...

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Veröffentlicht in:Dian zi yu xin xi xue bao = Journal of electronics & information technology 2009-06, Vol.31 (6), p.1501-1504
Hauptverfasser: Zhang, Cheng, Liao, Jian-Xin, Zhu, Xiao-Min
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creator Zhang, Cheng
Liao, Jian-Xin
Zhu, Xiao-Min
description Most fault localization techniques is based on time windows. The size of time windows impacts on the accuracy of the algorithms greatly. This paper takes weighted bipartite graph as fault propagation model and proposes a heuristic fault localization algorithm based on Incremental Bayesian Suspected Degree (IBSD) to eliminate the above shortcomings. IBSD sequentially analyzes the incoming symptoms in an event-driven way and incrementally computes the Bayesian Suspected Degree and determine the most probable fault set for the current observed symptoms. Simulation results show that the algorithm has high fault detection ratio as well as low false positive ratio and has a good performance even in the presence of unobserved alarms. The algorithm which has a polynomial computational complexity could be applied to large scale communication network.
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title An event-driven fault localization algorithm based on incremental bayesian suspected degree
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