Stochastic models are often employed to study dependability of critical systems and assess various hardware and software fault-tolerance techniques. These models take into account the randomness in the events of interest (aleatory uncertainty) and are generally solved at fixed parameter values. However, the parameter values themselves are determined from a finite number of observations and hence have uncertainty associated with them (epistemic uncertainty). This paper discusses methods for computing the uncertainty in output metrics of dependability models, due to epistemic uncertainties in the model input parameters. Methods for epistemic uncertainty propagation through dependability models of varying complexity are presented with illustra...
In the field of uncertainty quantification, uncertainty in the governing equations may assume two fo...
Interval Predictor Models (IPMs) offer a non-probabilistic, interval-valued, characterization of the...
International audience—Model-based reliability analysis and assessment methods rely on models, which...
When component dependence is ignored, a system reliability model may have large model (epistemic) un...
Epistemic uncertainty analysis accounts for inaccurate input parameters and evaluates how such uncer...
International audienceBelief reliability is a newly developed, model-based reliability metric which ...
In this paper we develop a new Taylor series expansion method for computing model output metrics und...
Many probabilistic uncertainty propagation methods have been developed for many single discipline pr...
In this article, we develop a new methodology for integrating epistemic uncertainties into the compu...
\u3cp\u3eA generalised probabilistic framework is proposed for reliability assessment and uncertaint...
Two types of uncertainty exist in engineering. Aleatory uncertainty comes from inherent variations w...
In the field of uncertainty quantification (UQ), epistemic uncertainty often refers to the kind of u...
This article studies the role of model uncertainties in sensitivity and probability analysis of reli...
In the field of uncertainty quantification, uncertainty in the governing equations may assume two fo...
Interval Predictor Models (IPMs) offer a non-probabilistic, interval-valued, characterization of the...
International audience—Model-based reliability analysis and assessment methods rely on models, which...
When component dependence is ignored, a system reliability model may have large model (epistemic) un...
Epistemic uncertainty analysis accounts for inaccurate input parameters and evaluates how such uncer...
International audienceBelief reliability is a newly developed, model-based reliability metric which ...
In this paper we develop a new Taylor series expansion method for computing model output metrics und...
Many probabilistic uncertainty propagation methods have been developed for many single discipline pr...
In this article, we develop a new methodology for integrating epistemic uncertainties into the compu...
\u3cp\u3eA generalised probabilistic framework is proposed for reliability assessment and uncertaint...
Two types of uncertainty exist in engineering. Aleatory uncertainty comes from inherent variations w...
In the field of uncertainty quantification (UQ), epistemic uncertainty often refers to the kind of u...
This article studies the role of model uncertainties in sensitivity and probability analysis of reli...
In the field of uncertainty quantification, uncertainty in the governing equations may assume two fo...
Interval Predictor Models (IPMs) offer a non-probabilistic, interval-valued, characterization of the...
International audience—Model-based reliability analysis and assessment methods rely on models, which...