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arxiv 2205.01182 v1 pith:Q265T6XO submitted 2022-05-02 gr-qc astro-ph.HE

Determining the equation of state of neutron stars with Einstein Telescope using tidal effects and r-mode excitations from a population of binary inspirals

classification gr-qc astro-ph.HE
keywords neutronbinaryequationstarstateeffectseinsteinr-mode
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Third-generation gravitational wave (GW) observatories such as Einstein Telescope (ET) and Cosmic Explorer (CE) will be ideal instruments to probe the structure of neutron stars through the GWs they emit when undergoing binary coalescence. In this work we make predictions about how well ET in particular will enable us to reconstruct the neutron star equation of state through observations of tens of binary neutron star coalescences with signal-to-noise ratios in the hundreds. We restrict ourselves to information that can be extracted from the inspiral, which includes tidal effects and possibly r-mode resonances. In treating the latter we go beyond the Newtonian approximation, introducing and utilizing new universal relations. We find that the ability to observe resonant r-modes would have a noticeable impact on neutron star equation of state measurements with ET.

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Cited by 2 Pith papers

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