Systematics of dynamical mass ejection, nucleosynthesis, and radioactively powered electromagnetic signals from neutron-star mergers
A. Bauswein (1), S. Goriely (2), H.-T. Janka (1) ((1) MPI for, Astrophysics, Garching, (2) Universite Libre de Bruxelles)

TL;DR
This study systematically explores how the nuclear equation of state influences neutron-star merger ejecta, nucleosynthesis, and electromagnetic signals, revealing correlations that could constrain dense matter physics and confirming robust r-process element production.
Contribution
It provides a comprehensive analysis of the impact of various high-density EoSs on merger outcomes, linking observable signals to nuclear physics properties for the first time.
Findings
Ejecta mass correlates with NS radius R_1.35, with softer EoS ejecting more mass.
Optical transients' luminosities vary with merger parameters, offering potential EoS constraints.
R-process nucleosynthesis is robust, producing solar-like abundance patterns regardless of EoS.
Abstract
We investigate systematically the dynamical mass ejection, r-process nucleosynthesis, and properties of electromagnetic counterparts of neutron-star (NS) mergers in dependence on the uncertain properties of the nuclear equation of state (EoS) by employing 40 representative, microphysical high-density EoSs in relativistic, hydrodynamical simulations. The crucial parameter determining the ejecta mass is the radius R_1.35 of a 1.35 M_sun NS. NSs with smaller R_1.35 ("soft" EoS) eject systematically higher masses. These range from ~10^-3 M_sun to ~10^-2 M_sun for 1.35-1.35 M_sun binaries and from ~5*10^-3 M_sun to ~2*10^-2 M_sun for 1.2-1.5 M_sun systems (with kinetic energies between ~5*10^49 erg and 10^51 erg). Correspondingly, the bolometric peak luminosities of the optical transients of symmetric (asymmetric) mergers vary between 3*10^41 erg/s and 14*10^41 erg/s (9*10^41 erg/s and…
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