In the paper, the problem of uncertain data in reliability analysis of complex systems is examined. Starting from component uncertain data, a new method for the whole system reliability uncertainty description, based upon a Bayesian approach and not depending on the reliability model of each component, is proposed. The reliability value of each component is considered as a random variable described by a Negative Log-Gamma distribution. The proposed methodology makes it possible to compute the features of system reliability uncertainty (i.e. reliability distribution, confidence intervals, etc.) as functions of component uncertain data, thus characterizing the propagation of uncertainty from the components to the system. Numerical application...
This paper from the 27th ESREDA Seminar 'Assembling eveidence on reliability' discusses the use of B...
The estimation of the reliability curve for technical systems is an important building block in dete...
International audienceVarious parametric skewed distributions are widely used to model the time-to-f...
In the paper, the problem of uncertain data in reliability analysis of complex systems is examined. ...
Modeling system reliability over time when binary data are collected both at the system and componen...
This paper develops Classical and Bayesian methods for quantifying the uncertainty in reliability fo...
In this paper our effort is to introduce the basic notions that constitute a competing risks models ...
The purpose of this project was to investigate the use of Bayesian methods for the estimation of the...
Reliability analysis yields statistically derived technical system performance estimates. Tradition...
Vita.A solution technique for the analysis of generalized, distribution-free reliability networks is...
When performing a reliability analysis, it is always necessary to first specify probabil-ity distrib...
For a system with n s-independent components, the uncertainty regarding the reliability of component...
This paper considers the quantification of system reliability in scenarios in which data, that is, f...
\u3cp\u3eA generalised probabilistic framework is proposed for reliability assessment and uncertaint...
The paper deals with the quantitative assessment of photovoltaic inverter system performance, focusi...
This paper from the 27th ESREDA Seminar 'Assembling eveidence on reliability' discusses the use of B...
The estimation of the reliability curve for technical systems is an important building block in dete...
International audienceVarious parametric skewed distributions are widely used to model the time-to-f...
In the paper, the problem of uncertain data in reliability analysis of complex systems is examined. ...
Modeling system reliability over time when binary data are collected both at the system and componen...
This paper develops Classical and Bayesian methods for quantifying the uncertainty in reliability fo...
In this paper our effort is to introduce the basic notions that constitute a competing risks models ...
The purpose of this project was to investigate the use of Bayesian methods for the estimation of the...
Reliability analysis yields statistically derived technical system performance estimates. Tradition...
Vita.A solution technique for the analysis of generalized, distribution-free reliability networks is...
When performing a reliability analysis, it is always necessary to first specify probabil-ity distrib...
For a system with n s-independent components, the uncertainty regarding the reliability of component...
This paper considers the quantification of system reliability in scenarios in which data, that is, f...
\u3cp\u3eA generalised probabilistic framework is proposed for reliability assessment and uncertaint...
The paper deals with the quantitative assessment of photovoltaic inverter system performance, focusi...
This paper from the 27th ESREDA Seminar 'Assembling eveidence on reliability' discusses the use of B...
The estimation of the reliability curve for technical systems is an important building block in dete...
International audienceVarious parametric skewed distributions are widely used to model the time-to-f...