AbstractThis paper presents an extension of the theory of finite random sets to infinite random sets, that is useful for estimating the bounds of probability of events, when there is both aleatory and epistemic uncertainty in the representation of the basic variables. In particular, the basic variables can be modelled as CDFs, probability boxes, possibility distributions or as families of intervals provided by experts. These four representations are special cases of an infinite random set. The method introduces a new geometrical representation of the space of basic variables, where many of the methods for the estimation of probabilities using Monte Carlo simulation can be employed. This method is an appropriate technique to model the bounds...
A novel method for estimation of rare event probability is proposed, which works also for computatio...
The consideration of imprecise probability in engineering analysis to account for missing, vague or ...
In this dissertation, Random Sets and Advanced Sampling techniques are combined for general and effi...
AbstractThis paper presents an extension of the theory of finite random sets to infinite random sets...
The use of the theory of imprecise probabilities in structural reliability analysis has gained momen...
AbstractIn this paper uncertainties in limit state functions g as arising in engineering problems ar...
DestD&al003International audienceProbability intervals are imprecise probability assignments over el...
AbstractThis paper discusses some models of Imprecise Probability Theory obtained by propagating unc...
Probabilistic uncertainty and imprecision in structural parameters and in environmental conditions a...
International audienceThere exist many practical representations of probability families that make t...
Imprecise probability allows quantifying the level of safety of a system taking into account the eff...
The concept is presented of the sensitivity analysis of the limit state of the structure with respec...
Structural reliability analysis is typically performed based on the identification of distribution t...
This paper presents a highly efficient and accurate approach to determine the bounds on the first ex...
Modern engineering systems are becoming increasingly complex. Assessing their risk by simulation is ...
A novel method for estimation of rare event probability is proposed, which works also for computatio...
The consideration of imprecise probability in engineering analysis to account for missing, vague or ...
In this dissertation, Random Sets and Advanced Sampling techniques are combined for general and effi...
AbstractThis paper presents an extension of the theory of finite random sets to infinite random sets...
The use of the theory of imprecise probabilities in structural reliability analysis has gained momen...
AbstractIn this paper uncertainties in limit state functions g as arising in engineering problems ar...
DestD&al003International audienceProbability intervals are imprecise probability assignments over el...
AbstractThis paper discusses some models of Imprecise Probability Theory obtained by propagating unc...
Probabilistic uncertainty and imprecision in structural parameters and in environmental conditions a...
International audienceThere exist many practical representations of probability families that make t...
Imprecise probability allows quantifying the level of safety of a system taking into account the eff...
The concept is presented of the sensitivity analysis of the limit state of the structure with respec...
Structural reliability analysis is typically performed based on the identification of distribution t...
This paper presents a highly efficient and accurate approach to determine the bounds on the first ex...
Modern engineering systems are becoming increasingly complex. Assessing their risk by simulation is ...
A novel method for estimation of rare event probability is proposed, which works also for computatio...
The consideration of imprecise probability in engineering analysis to account for missing, vague or ...
In this dissertation, Random Sets and Advanced Sampling techniques are combined for general and effi...