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Background: When multiple fission modes coexist in a given nucleus, distinct fragment yield distributions appear. Multimodal fission has been observed in a number of fissioning nuclei spanning the nuclear chart, and this phenomenon is expected to affect the nuclear abundances synthesized during the rapid neutron-capture process (r-process). Purpose: In this study, we generalize the previously proposed hybrid model for fission-fragment yield distributions to predict competing fission modes and estimate the resulting yield distributions. Our framework allows for a comprehensive large-scale calculation of fission-fragment yields suited for r-process nuclear network studies. Methods: Nuclear density functional theory is employed to obtain the potential energy and collective inertia tensor on a multidimensional collective space defined by mass multipole moments. Fission pathways and their relative probabilities are determined using the nudged elastic band method. Based on this information, mass and charge fission yields are predicted using the recently developed hybrid model. Results: Fission properties of fermium isotopes are calculated in the axial quadrupole-octupole collective space for three energy density functionals (EDFs). Disagreement between the EDFs appears when multiple fission modes are present. Within our framework, the UNEDF1₇₅₁ EDF agrees best with experimental data. Calculations in the axial quadrupole-octupole-hexadecapole collective space improve the agreement with the experiment for SkM^*. We also discuss the sensitivity of fission predictions on the choice of EDF for several superheavy nuclei. Conclusions: Fission-fragment yield predictions for nuclei with multiple fission modes are sensitive to the underlying EDF. For large-scale calculations in which a minimal number of collective coordinates is considered, UNEDF1₇₅₁ provides the best description of experimental data, though the sensitivity motivates robust quantification of the uncertainties of the theoretical model.
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Daniel Lay
Michigan State University
E. Flynn
Michigan State University
S. E. Agbemava
University of Ghana
Physical review. C
Michigan State University
Universidad Autónoma de Madrid
University of Surrey
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Lay et al. (Tue,) studied this question.
synapsesocial.com/papers/68e70b47b6db643587685293 — DOI: https://doi.org/10.1103/physrevc.109.044306
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