Measuring Yields and Angular Distributions of Γ-Quanta from the Interaction Between 14.1 MeV Neutrons and Sodium and Chlorine Nuclei
Bulletin of the Russian Academy of Sciences Physics(2021)
Joint Institute for Nuclear Research | Institute for Nuclear Research and Nuclear Energy | Gumilyov Eurasian National University | Dukhov National Research Institute of Automatics
Abstract
Tagged neutrons are used to perform an experimental investigation of the inelastic scattering of 14.1 MeV neutrons on 23Na and 35Cl nuclei as part of the TANGRA project at the Frank Laboratory of Neutron Physics, Joint Institute for Nuclear Research. The energies and yields of γ quanta for transitions observed in the experiment are measured, and the γ angular distribution coefficients for the highest intensity γ transitions are obtained. The experimental data are compared to others in the literature.
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