We demonstrate that Bayesian machine learning can be used to treat the vast amount of experimental fission data which are noisy, incomplete, discrepant, and correlated. As an example, the two-dimensional cumulative fission yields (CFY) of neutron-induced fission of $^{238}$U are evaluated with energy dependencies and uncertainty qualifications. For independent fission yields (IFY) with very few experimental data, the heterogeneous data fusion of CFY and IFY is employed to interpolate the energy dependence. This work shows that Bayesian data fusion can facilitate the further utilization of imperfect raw nuclear data.Comment: 5 pages, 4 figure
The study of fission yields has a major impact on the characterization and understanding of the fiss...
The recently developed method Lasso Monte Carlo (LMC) for uncertainty quantification is applied to t...
International audienceThe study of fission yields has a major impact on the characterization and und...
As machine learning methods gain traction in the nuclear physics community, especially those methods...
Fission product yields are fundamental parameters for several nuclear engineering calculations and i...
Having accurate measurements of fission observables is important for a variety of applications, rang...
Studies on fission yields have a major impact on the characterization and the understanding of the f...
This part employ a code to read parameters of the trained Bayesian neural network which are stored i...
The nuclear matter parameters (NMPs), those underlie in the construction of the equation of state (E...
We developed a method superposing two different fission modes calculated in a four-dimensional Lange...
Nuclear data, especially fission yields, create uncertainties in the predicted concentrations of fis...
Machine learning methods and uncertainty quantification have been gaining interest throughout the la...
Fission yield uncertainties and correlations should be considered in the uncertainty quantification ...
The study of fission yields has a major impact on the characterization and understanding of the fiss...
Background: Despite remarkable success of the statistical model (SM) in describing decay of excited ...
The study of fission yields has a major impact on the characterization and understanding of the fiss...
The recently developed method Lasso Monte Carlo (LMC) for uncertainty quantification is applied to t...
International audienceThe study of fission yields has a major impact on the characterization and und...
As machine learning methods gain traction in the nuclear physics community, especially those methods...
Fission product yields are fundamental parameters for several nuclear engineering calculations and i...
Having accurate measurements of fission observables is important for a variety of applications, rang...
Studies on fission yields have a major impact on the characterization and the understanding of the f...
This part employ a code to read parameters of the trained Bayesian neural network which are stored i...
The nuclear matter parameters (NMPs), those underlie in the construction of the equation of state (E...
We developed a method superposing two different fission modes calculated in a four-dimensional Lange...
Nuclear data, especially fission yields, create uncertainties in the predicted concentrations of fis...
Machine learning methods and uncertainty quantification have been gaining interest throughout the la...
Fission yield uncertainties and correlations should be considered in the uncertainty quantification ...
The study of fission yields has a major impact on the characterization and understanding of the fiss...
Background: Despite remarkable success of the statistical model (SM) in describing decay of excited ...
The study of fission yields has a major impact on the characterization and understanding of the fiss...
The recently developed method Lasso Monte Carlo (LMC) for uncertainty quantification is applied to t...
International audienceThe study of fission yields has a major impact on the characterization and und...