Integral experiments can be used to adjust nuclear data libraries. Here a Bayesian Monte Carlo method based on assigning weights to the different random files is used. If the experiments are inconsistent within them-self or with the nuclear data it is shown that the adjustment procedure can lead to undesirable results. Therefore, a technique to treat inconsistent data is presented. The technique is based on the optimization of the marginal likelihood which is approximated by a sample of model calculations. The sources to the inconsistencies are discussed and the importance to consider correlation between the different experiments is emphasized. It is found that the technique can address inconsistencies in a desirable way
This paper presents a Bayesian approach based on integral experiments to create correlations which d...
The mathematical models used for nuclear data evaluations contain a large number of theoretical para...
International audienceThis paper presents a Bayesian approach based on integral experiments to creat...
Integral experiments can be used to adjust nuclear data libraries. Here a Bayesian Monte Carlo metho...
Integral experiments can be used to adjust nuclear data libraries. Here a Bayesian Monte Carlo metho...
Integral experiments can be used to adjust ND-libraries and consequently the uncertainty response in...
Consistent experiment data are crucial to adjust parameters of physics models and to determine best ...
To reduce the uncertainties and obtain a better predictive power, integral adjustment of nuclear dat...
International audienceIn this paper, we present three Monte Carlo methods to include integral benchm...
High-quality nuclear data is of prime importance while considering the design of advanced fast react...
The aim of this work is to review different Monte Carlo techniques used to propagate nuclear data un...
A Bayesian Monte Carlo method is outlined which allows a systematic evaluation of nuclear reactions ...
Abstract. The evaluation of neutron cross sections as a function of energy is fraught with inconsist...
Two distinct methods of propagation for basic nuclear data uncertainties to large scale systems will...
The production of useful and high-quality nuclear data requires measurements with high precision and...
This paper presents a Bayesian approach based on integral experiments to create correlations which d...
The mathematical models used for nuclear data evaluations contain a large number of theoretical para...
International audienceThis paper presents a Bayesian approach based on integral experiments to creat...
Integral experiments can be used to adjust nuclear data libraries. Here a Bayesian Monte Carlo metho...
Integral experiments can be used to adjust nuclear data libraries. Here a Bayesian Monte Carlo metho...
Integral experiments can be used to adjust ND-libraries and consequently the uncertainty response in...
Consistent experiment data are crucial to adjust parameters of physics models and to determine best ...
To reduce the uncertainties and obtain a better predictive power, integral adjustment of nuclear dat...
International audienceIn this paper, we present three Monte Carlo methods to include integral benchm...
High-quality nuclear data is of prime importance while considering the design of advanced fast react...
The aim of this work is to review different Monte Carlo techniques used to propagate nuclear data un...
A Bayesian Monte Carlo method is outlined which allows a systematic evaluation of nuclear reactions ...
Abstract. The evaluation of neutron cross sections as a function of energy is fraught with inconsist...
Two distinct methods of propagation for basic nuclear data uncertainties to large scale systems will...
The production of useful and high-quality nuclear data requires measurements with high precision and...
This paper presents a Bayesian approach based on integral experiments to create correlations which d...
The mathematical models used for nuclear data evaluations contain a large number of theoretical para...
International audienceThis paper presents a Bayesian approach based on integral experiments to creat...