The interplay of astrophysics and nuclear physics in determining the properties of neutron stars
Jacob Golomb, Isaac Legred, Katerina Chatziioannou, Philippe Landry

TL;DR
This study combines astrophysical observations and nuclear physics to jointly infer the dense matter equation of state and neutron star properties, confirming the maximum mass aligns with nuclear physics constraints and refining radius estimates.
Contribution
It introduces a joint inference framework using electromagnetic and gravitational wave data to constrain neutron star properties and the equation of state, accounting for different astrophysical populations.
Findings
Galactic and merging neutron stars have distinct mass distributions.
Maximum neutron star mass consistent with nuclear physics limits.
Refined neutron star radius estimate with tighter constraints.
Abstract
Neutron star properties depend on both nuclear physics and astrophysical processes, and thus observations of neutron stars offer constraints on both large-scale astrophysics and the behavior of cold, dense matter. In this study, we use astronomical data to jointly infer the universal equation of state of dense matter along with two distinct astrophysical populations: Galactic neutron stars observed electromagnetically and merging neutron stars in binaries observed with gravitational waves. We place constraints on neutron star properties and quantify the extent to which they are attributable to macrophysics or microphysics. We confirm previous results indicating that the Galactic and merging neutron stars have distinct mass distributions. The inferred maximum mass of both Galactic neutron stars, (median and 90\% symmetric credible…
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Taxonomy
TopicsPulsars and Gravitational Waves Research
