Short GRBs at the dawn of the gravitational wave era
G. Ghirlanda, O. S. Salafia, A. Pescalli, G. Ghisellini, R., Salvaterra, E. Chassande-Mottin, M. Colpi, F. Nappo, P. D'Avanzo, A., Melandri, M. G. Bernardini, M. Branchesi, S. Campana, R. Ciolfi, S. Covino,, D. Gotz, S. D. Vergani, M. Zennaro, G. Tagliaferri

TL;DR
This paper models the luminosity and redshift distribution of short Gamma Ray Bursts (SGRBs) using observational data, providing insights into their rates, beaming angles, and implications for gravitational wave counterparts.
Contribution
It presents a new, comprehensive luminosity function and redshift distribution for SGRBs, incorporating multiple observational constraints and assumptions, with implications for GW detection.
Findings
SGRBs have a flatter luminosity function with a slope ~0.5.
The redshift distribution peaks at z~1.5-2.
Estimated SGRB detection rate within 200 Mpc is 0.007-0.03 per year.
Abstract
We derive the luminosity function and redshift distribution of short Gamma Ray Bursts (SGRBs) using (i) all the available observer-frame constraints (i.e. peak flux, fluence, peak energy and duration distributions) of the large population of Fermi SGRBs and (ii) the rest-frame properties of a complete sample of Swift SGRBs. We show that a steep with a>2.0 is excluded if the full set of constraints is considered. We implement a Monte Carlo Markov Chain method to derive the and functions assuming intrinsic Ep-Liso and Ep-Eiso correlations or independent distributions of intrinsic peak energy, luminosity and duration. To make our results independent from assumptions on the progenitor (NS-NS binary mergers or other channels) and from uncertainties on the star formation history, we assume a parametric form for the redshift distribution of SGRBs. We…
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