Properties of the binary neutron star merger GW170817
The LIGO Scientific Collaboration, the Virgo Collaboration, B. P., Abbott, R. Abbott, T. D. Abbott, F. Acernese, K. Ackley, C. Adams, T. Adams,, P. Addesso, R. X. Adhikari, V. B. Adya, C. Affeldt, B. Agarwal, M. Agathos,, K. Agatsuma, N. Aggarwal, O. D. Aguiar, L. Aiello, A. Ain

TL;DR
This paper refines the properties and localization of the GW170817 neutron star merger using improved data analysis, models, and source information, providing tighter constraints on masses, spins, and tidal deformability, and testing for post-merger signals.
Contribution
It presents enhanced estimates of GW170817's parameters, including masses, spins, and tidal effects, with improved localization and model comparisons, advancing understanding of neutron star mergers.
Findings
Tighter localization to 16 deg² credible region.
Masses between 1.00 and 1.89 M_sun, depending on spin assumptions.
Tidal deformability constrained to (0, 630), ruling out some equations-of-state.
Abstract
On August 17, 2017, the Advanced LIGO and Advanced Virgo gravitational-wave detectors observed a low-mass compact binary inspiral. The initial sky localization of the source of the gravitational-wave signal, GW170817, allowed electromagnetic observatories to identify NGC 4993 as the host galaxy. In this work, we improve initial estimates of the binary's properties, including component masses, spins, and tidal parameters, using the known source location, improved modeling, and recalibrated Virgo data. We extend the range of gravitational-wave frequencies considered down to 23 Hz, compared to 30 Hz in the initial analysis. We also compare results inferred using several signal models, which are more accurate and incorporate additional physical effects as compared to the initial analysis. We improve the localization of the gravitational-wave source to a 90% credible region of…
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