Experimental reconstruction of primary hot isotopes and characteristic properties of the fragmenting source in the heavy ion reactions near the Fermi energy
W. Lin, X. Liu, M. R. D. Rodrigues, S. Kowalski, R. Wada, M. Huang, S., Zhang, Z. Chen, J. Wang, G. Q. Xiao, R. Han, Z. Jin, J. Liu, P. Ren, F. Shi,, T. Keutgen, K. Hagel, M. Barbui, C. Bottosso, A. Bonasera, J. B. Natowitz, T., Materna, L. Qin, P. K. Sahu, H. Zheng

TL;DR
This study reconstructs primary isotope distributions in heavy ion collisions near the Fermi energy, revealing properties of hot nuclear matter, source density, and symmetry energy, with implications for nuclear phase transition understanding.
Contribution
It introduces a Monte Carlo reconstruction method for primary isotope yields in heavy ion reactions, validated against AMD model simulations, and derives source properties and symmetry energy parameters.
Findings
Primary isotope distributions follow a power law with exponent -2.3 for A ≥ 15.
No strong signature of first-order phase transition observed.
Source density at fragment formation is approximately 0.63 times nuclear saturation density.
Abstract
The characteristic properties of the hot nuclear matter existing at the time of fragment formation in the multifragmentation events produced in the reaction Zn + Sn at 40 MeV/nucleon are studied. A kinematical focusing method is employed to determine the multiplicities of evaporated light particles, associated with isotopically identified detected fragments. From these data the primary isotopic yield distributions are reconstructed using a Monte Carlo method. The reconstructed yield distributions are in good agreement with the primary isotope distributions obtained from AMD transport model simulations. Utilizing the reconstructed yields, power distribution, Landau free energy, characteristic properties of the emitting source are examined. The primary mass distributions exhibit a power law distribution with the critical exponent, , for isotopes, but…
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