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arXiv:2309.11227 [nucl-th]AbstractReferencesReviewsResources

Insights into neutron star equation of state by machine learning

Ling-Jun Guo, Jia-Ying Xiong, Yao Ma, Yong-Liang Ma

Published 2023-09-20Version 1

Due to its powerful capability and high efficiency in big data analysis, machine learning has been applied in various fields. We construct a neural network platform to constrain the behaviors of the equation of state of nuclear matter with respect to the properties of nuclear matter at saturation density and the properties of neutron stars. It is found that the neural network is able to give reasonable predictions of parameter space and provide new hints into the constraints of hadron interactions. As a specific example, we take the relativistic mean field approximation in a widely accepted Walecka-type model to illustrate the feasibility and efficiency of the platform. The results show that the neural network can indeed estimate the parameters of the model at a certain precision such that both the properties of nuclear matter around saturation density and global properties of neutron stars can be saturated. The optimization of the present modularly designed neural network and extension to other effective models are straightforward.

Comments: 12 pages, 5 figures. Comments are welcome
Categories: nucl-th, astro-ph.HE
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