Numerical relativity simulations of prompt collapse mergers: threshold mass and phenomenological constraints on neutron star properties after GW170817
ORAL
Abstract
We determine the threshold mass for prompt collapse by performing a new set of 227 numerical relativity simulations with twenty-three phenomenological and microphysical finite temperature EOS. We combine the EOS-insensitive relations, phenomenological constraints on NS properties, and observational data from GW170817 to derive an improved lower limit on radii of maximum mass and 1.4 M⊙ NS of 9.81 km and 10.74 km, respectively. We introduce new methods to constrain the upper as well as the lower limit of NS maximum mass using future BNS detections and their identification as prompt or delayed collapse. With future observations, it will be possible to derive even tighter constraints on the properties of matter at and above nuclear density using the method proposed in this work.
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Publication: Numerical relativity simulations of prompt collapse mergers: threshold mass and phenomenological constraints on neutron star properties after GW170817<br>Rahul Kashyap, Abhishek Das, David Radice, Surendra Padamata, Aviral Prakash, Domenico Logoteta, Albino Perego, Daniel A. Godzieba, Sebastiano Bernuzzi, Ignazio Bombaci, Farrukh J. Fattoyev, Brendan T. Reed, André da Silva Schneider<br>https://arxiv.org/abs/2111.05183
Presenters
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Rahul Kashyap
Pennsylvania State University
Authors
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Rahul Kashyap
Pennsylvania State University
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Abhishek Das
Pennsylvania State University
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David Radice
Pennsylvania State University
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Surendra Padamata
Pennsylvania State University
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Aviral Prakash
Pennsylvania State University
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Domenico Logoteta
University of Pisa, Universita di Pisa and INFN
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Albino Perego
University of Trento, Universita di Trento and INFN-TIFPA
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Daniel Godzieba
Pennsylvania State University
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Sebastiano Bernuzzi
Friedrich-Schiller University Jena
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Ignazio Bombaci
University of Pisa, Universita di Pisa and INFN
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Farrukh J Fattoyev
Manhattan College
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Andre Schneider
Stockholm University