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Methodology for Generating Covariance Data of Thermal Neutron Scattering Cross Sections

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DataCite Commons2024-02-19 更新2024-07-28 收录
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https://tandf.figshare.com/articles/dataset/Methodology_for_Generating_Covariance_Data_of_Thermal_Neutron_Scattering_Cross_Sections/12928415
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This paper details and implements a framework for evaluating thermal neutron scattering cross sections that provide S(α,β) data and covariance data for hydrogen in light water. This methodology involves perturbing model parameters of molecular dynamics potentials and fitting the simulation results to experimental data. The framework is general and can be applied to any material or simulation method. The fit is made using the Unified Monte Carlo method to experimentally measure double-differential scattering cross sections of light water at the Spallation Neutron Source at Oak Ridge National Laboratory. Mean values and covariance data were generated for model parameters, phonon density of states, double-differential cross sections, and total scattering cross sections. These posterior parameter values were very similar to their prior values with a maximum relative error of 0.54%. This falls within in the Unified Monte Carlo–calculated uncertainties on the order of 2.7%. Additionally, posterior double-differential cross sections agree favorably with ENDF/B-VIII.0 cross sections. The new thermal scattering law was tested by comparing it against benchmarks from the International Criticality Safety Benchmark Evaluation Project Handbook, which showed a slight improvement over the ENDF/B-VIII.0 library. Additionally, the covariance matrix of the phonon density of states was validated to confirm that the spread of k<sub>eff</sub> from the density of states used to generate the covariance matrix was similar to the spread of k<sub>eff</sub> from the density of states of the sampled covariance matrix.
提供机构:
Taylor & Francis
创建时间:
2020-09-08
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