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Autores principales: Thete, Ameya, Banerjee, Kinjal, Malik, Tuhin
Formato: Preprint
Publicado: 2022
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Acceso en línea:https://arxiv.org/abs/2208.13163
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author Thete, Ameya
Banerjee, Kinjal
Malik, Tuhin
author_facet Thete, Ameya
Banerjee, Kinjal
Malik, Tuhin
contents The difficulty in describing the equation of state (EoS) for nuclear matter at densities above the saturation density ($ρ_0$) has led to the emergence of a multitude of models based on different assumptions and techniques. These EoSs, when used to describe a neutron star (NS), lead to differing values of observables. An outstanding goal in astrophysics is to constrain the dense matter EoS by exploiting astrophysical and gravitational wave measurements. Nuclear matter parameters appear as Taylor coefficients in the expansion of the EoS around the saturation density of symmetric and asymmetric nuclear matter and provide a physically-motivated representation of the EoS. In this paper, we introduce a deep learning-based methodology to predict key neutron stars observables such as the NS mass, NS radius, and tidal deformability from a set of nuclear matter parameters. Using generated mock data, we confirm that the neural network model is able to accurately capture the underlying physics of finite nuclei and replicate inter-correlations between the symmetry energy slope, its curvature, and the tidal deformability arising from a set of physical constraints. We also test our network with mock data generated by a different class of physics model, which was not part of the training, to explore the limitations of model dependency in the results. We also study the validity of our trained model using Bayesian inference and show that the performance of our model is on par with physics-based models with the added benefit of much lower computational cost.
format Preprint
id arxiv_https___arxiv_org_abs_2208_13163
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Realizing the potential of deep neural network for analyzing neutron star observables and dense matter equation of state
Thete, Ameya
Banerjee, Kinjal
Malik, Tuhin
Nuclear Theory
High Energy Astrophysical Phenomena
Computational Physics
The difficulty in describing the equation of state (EoS) for nuclear matter at densities above the saturation density ($ρ_0$) has led to the emergence of a multitude of models based on different assumptions and techniques. These EoSs, when used to describe a neutron star (NS), lead to differing values of observables. An outstanding goal in astrophysics is to constrain the dense matter EoS by exploiting astrophysical and gravitational wave measurements. Nuclear matter parameters appear as Taylor coefficients in the expansion of the EoS around the saturation density of symmetric and asymmetric nuclear matter and provide a physically-motivated representation of the EoS. In this paper, we introduce a deep learning-based methodology to predict key neutron stars observables such as the NS mass, NS radius, and tidal deformability from a set of nuclear matter parameters. Using generated mock data, we confirm that the neural network model is able to accurately capture the underlying physics of finite nuclei and replicate inter-correlations between the symmetry energy slope, its curvature, and the tidal deformability arising from a set of physical constraints. We also test our network with mock data generated by a different class of physics model, which was not part of the training, to explore the limitations of model dependency in the results. We also study the validity of our trained model using Bayesian inference and show that the performance of our model is on par with physics-based models with the added benefit of much lower computational cost.
title Realizing the potential of deep neural network for analyzing neutron star observables and dense matter equation of state
topic Nuclear Theory
High Energy Astrophysical Phenomena
Computational Physics
url https://arxiv.org/abs/2208.13163