Translating neutron star observations to nuclear symmetry energy via artificial neural networks
Plamen G. Krastev (Harvard University)

TL;DR
This paper demonstrates that deep neural networks can accurately infer the density-dependent nuclear symmetry energy from neutron star observational data, advancing the understanding of dense matter physics.
Contribution
The study introduces a novel deep learning method to directly extract the nuclear symmetry energy from neutron star observations, improving the precision of the equation of state reconstruction.
Findings
Neural networks can reconstruct symmetry energy from neutron star data.
The approach works with data from NICER and gravitational-wave detectors.
Deep learning enhances the understanding of dense nuclear matter.
Abstract
One of the most significant challenges involved in efforts to understand the equation of state of dense neutron-rich matter is the uncertain density dependence of the nuclear symmetry energy. Because of its broad impact, pinning down the density dependence of the nuclear symmetry energy has been a longstanding goal of both nuclear physics and astrophysics. Recent observations of neutron stars, in both electromagnetic and gravitational-wave spectra, have already constrained significantly the nuclear symmetry energy at high densities. Training deep neural networks to learn a computationally efficient representation of the mapping between astrophysical observables of neutron stars, such as masses, radii, and tidal deformabilities, and the nuclear symmetry energy allows its density dependence to be determined reliably and accurately. In this work we use a deep learning approach to determine…
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Taxonomy
TopicsPulsars and Gravitational Waves Research · Geophysics and Gravity Measurements · Geological and Geophysical Studies
