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2012 | 22 | 3 | 585-600

Tytuł artykułu

Bayesian reliability models of Weibull systems: State of the art

Treść / Zawartość

Warianty tytułu

Języki publikacji

EN

Abstrakty

EN
In the reliability modeling field, we sometimes encounter systems with uncertain structures, and the use of fault trees and reliability diagrams is not possible. To overcome this problem, Bayesian approaches offer a considerable efficiency in this context. This paper introduces recent contributions in the field of reliability modeling with the Bayesian network approach. Bayesian reliability models are applied to systems with Weibull distribution of failure. To achieve the formulation of the reliability model, Bayesian estimation of Weibull parameters and the model's goodness-of-fit are evoked. The advantages of this modelling approach are presented in the case of systems with an unknown reliability structure, those with a common cause of failures and redundant ones. Finally, we raise the issue of the use of BNs in the fault diagnosis area.

Rocznik

Tom

22

Numer

3

Strony

585-600

Opis fizyczny

Daty

wydano
2012
otrzymano
2011-04-21
poprawiono
2011-11-28

Twórcy

  • LACS, National School of Engineering of Tunis, BP 37, 1002 Belvedere, Tunisia
  • LAGIS, Polytech'Lille, University of Lille Nord de France, 59650 Villeneuve d'Ascq, France
  • LACS, National School of Engineering of Tunis, BP 37, 1002 Belvedere, Tunisia

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Bibliografia

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