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New Measurements to Resolve Discrepancies in Evaluated Model Parameters of 181Ta

NUCLEAR SCIENCE AND ENGINEERING(2024)

Oak Ridge Natl Lab | Naval Nucl Lab | Rensselaer Polytech Inst

Cited 4|Views12
Abstract
To resolve discrepancies in evaluated cross sections among major nuclear data libraries, energy-differential neutron transmission and radiative capture yield of Ta-181 were measured from 0.15 to 100 keV using multiple sample thicknesses. The new measurements provide resolution such that the resolved resonance region (RRR) can be evaluated up to at least 2.5 keV and the unresolved resonance region can be evaluated up to at least 100 keV. The transmission and capture yield measurements were modeled using resonance parameters from three major libraries to assess the predictive capability of each. It was found that JENDL-5.0 performed best in the RRR. Because of the poor performance of the U.S. ENDF/B evaluation, it is recommended that ENDF/B be reevaluated for Ta-181.
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Key words
Nuclear data,neutron transmission,radiative capture yield,tantalum,resonance
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