Investigating High-Energy Proton-Induced Reactions on Spherical Nuclei: Implications for the Pre-Equilibrium Exciton Model
Morgan B. Fox (1), Andrew S. Voyles (1, 2), Jonathan T. Morrell, (1), Lee A. Bernstein (1, 2), Amanda M. Lewis (1), Arjan J. Koning (3),, Jon C. Batchelder (1), Eva R. Birnbaum (4), Cathy S. Cutler (5), Dmitri G., Medvedev (5), Francois M. Nortier (4), Ellen M. O'Brien (4)

TL;DR
This study measures proton-induced reaction cross sections on niobium at 100-200 MeV, compares them with models, and refines the pre-equilibrium exciton model parameters to improve nuclear reaction predictions for isotope production.
Contribution
It introduces a standardized procedure for optimizing the pre-equilibrium exciton model parameters based on experimental data at high proton energies.
Findings
Observed a decrease in internal transition rates at intermediate energies.
Provided experimental cross sections for $^{93}$Nb(p,x) reactions between 50-200 MeV.
Refined the pre-equilibrium exciton model parameters for better accuracy.
Abstract
A number of accelerator-based isotope production facilities utilize 100- to 200-MeV proton beams due to the high production rates enabled by high-intensity beam capabilities and the greater diversity of isotope production brought on by the long range of high-energy protons. However, nuclear reaction modeling at these energies can be challenging because of the interplay between different reaction modes and a lack of existing guiding cross section data. A Tri-lab collaboration has been formed among the Lawrence Berkeley, Los Alamos, and Brookhaven National Laboratories to address these complexities by characterizing charged-particle nuclear reactions relevant to the production of established and novel radioisotopes. In the inaugural collaboration experiments, stacked-targets of niobium foils were irradiated at the Brookhaven Linac Isotope Producer (E=200 MeV) and the Los Alamos…
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