Title of article
An approximate epistemic uncertainty analysis approach in the presence of epistemic and aleatory uncertainties
Author/Authors
Hofer، نويسنده , , Eduard and Kloos، نويسنده , , Martina and Krzykacz-Hausmann، نويسنده , , Bernard and Peschke، نويسنده , , Jِrg and Woltereck، نويسنده , , Martin، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2002
Pages
10
From page
229
To page
238
Abstract
Epistemic uncertainty analysis is an essential feature of any model application subject to ‘state of knowledge’ uncertainties. Such analysis is usually carried out on the basis of a Monte Carlo simulation sampling the epistemic variables and performing the corresponding model runs.
uations, however, where aleatory uncertainties are also present in the model, an adequate treatment of both types of uncertainties would require a two-stage nested Monte Carlo simulation, i.e. sampling the epistemic variables (‘outer loop’) and nested sampling of the aleatory variables (‘inner loop’). It is clear that for complex and long running codes the computational effort to perform all the resulting model runs may be prohibitive.
ore, an approach of an approximate epistemic uncertainty analysis is suggested which is based solely on two simple Monte Carlo samples: (a) joint sampling of both, epistemic and aleatory variables simultaneously, (b) sampling of aleatory variables alone with the epistemic variables held fixed at their reference values.
plications of this approach to dynamic reliability analyses presented in this paper look quite promising and suggest that performing such an approximate epistemic uncertainty analysis is preferable to the alternative of not performing any.
Keywords
Aleatory uncertainty , Dynamic reliability analysis , Dynamic PSA , epistemic uncertainty , Monte Carlo simulation
Journal title
Reliability Engineering and System Safety
Serial Year
2002
Journal title
Reliability Engineering and System Safety
Record number
1571144
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