In activation calculations, there are several approaches to quantify uncertainties: deterministic by means of sensitivity analysis, and stochastic by means of Monte Carlo. Here, two different Monte Carlo approaches for nuclear data uncertainty are presented: the first one is the Total Monte Carlo (TMC). The second one is by means of a Monte Carlo sampling of the covariance information included in the nuclear data libraries to propagate these uncertainties throughout the activation calculations. This last approach is what we named Covariance Uncertainty Propagation, CUP. This work presents both approaches and their differences. Also, they are compared by means of an activation calculation, where the cross-section uncertainties of 239Pu an...
The assessment of the accuracy of parameters related to the reactor core performance (e.g., ke) and ...
In this paper we perform nuclear data uncertain propagation with Total Monte Carlo, where the transp...
Several methodologies using different levels of approximations have been developed for propagating n...
A comprehensive study is performed in order to evaluate the impact of activation cross section uncer...
Two distinct methods of propagation for basic nuclear data uncertainties to large scale systems will...
An uncertainty propagation methodology based on the Monte Carlo method is applied to PWR nuclear des...
In analyzing residual radiation, researchers generally use a two-step Monte Carlo (MC) simulation. T...
Nuclear data uncertainty propagation based on stochastic sampling ( SS) is becoming more attractive ...
AbstractIn analyzing residual radiation, researchers generally use a two-step Monte Carlo (MC) simul...
The assessment of the accuracy of parameters related to the reactor core performance (e.g, keff) a...
The effects of nuclear data uncertainties are studied on a typical PWR fuel assembly model in the fr...
The aim of this work is to review different Monte Carlo techniques used to propagate nuclear data un...
We present an approach to uncertainty quantification for nuclear applica-tions, which combines the c...
The applications of nuclear physics are many with one important being nuclear power, which can help ...
The Monte Carlo method provides powerful geometric modeling capabilities for large problem domains i...
The assessment of the accuracy of parameters related to the reactor core performance (e.g., ke) and ...
In this paper we perform nuclear data uncertain propagation with Total Monte Carlo, where the transp...
Several methodologies using different levels of approximations have been developed for propagating n...
A comprehensive study is performed in order to evaluate the impact of activation cross section uncer...
Two distinct methods of propagation for basic nuclear data uncertainties to large scale systems will...
An uncertainty propagation methodology based on the Monte Carlo method is applied to PWR nuclear des...
In analyzing residual radiation, researchers generally use a two-step Monte Carlo (MC) simulation. T...
Nuclear data uncertainty propagation based on stochastic sampling ( SS) is becoming more attractive ...
AbstractIn analyzing residual radiation, researchers generally use a two-step Monte Carlo (MC) simul...
The assessment of the accuracy of parameters related to the reactor core performance (e.g, keff) a...
The effects of nuclear data uncertainties are studied on a typical PWR fuel assembly model in the fr...
The aim of this work is to review different Monte Carlo techniques used to propagate nuclear data un...
We present an approach to uncertainty quantification for nuclear applica-tions, which combines the c...
The applications of nuclear physics are many with one important being nuclear power, which can help ...
The Monte Carlo method provides powerful geometric modeling capabilities for large problem domains i...
The assessment of the accuracy of parameters related to the reactor core performance (e.g., ke) and ...
In this paper we perform nuclear data uncertain propagation with Total Monte Carlo, where the transp...
Several methodologies using different levels of approximations have been developed for propagating n...