Litcius/Paper detail

Unveiling the nuclear matter EoS from neutron star properties: a supervised machine learning approach

Márcio Ferreira, Constança Providência

2021Journal of Cosmology and Astroparticle Physics44 citationsDOIOpen Access PDF

Abstract

Abstract We explore supervised machine learning methods in extracting the non-linear maps between neutron stars (NS) observables and the equation of state (EoS) of nuclear matter. Using a Taylor expansion around saturation density, we have generated a set of model independent EoS describing stellar matter constrained by nuclear matter parameters that are thermodynamically consistent, causal, and consistent with astrophysical observations. From this set, the full non-linear dependencies of the NS tidal deformability and radius on the nuclear matter parameters were learned using two distinct machine learning methods. Due to the high accuracy of the learned non-linear maps, we were able to analyze the impact of each nuclear matter parameter on the NS observables, identify dependencies on the EoS properties beyond linear correlations and predict which stars allow us to draw strong constraints.

Topics & Concepts

PhysicsNuclear matterNeutron starObservableDark matterEquation of stateArtificial intelligenceMachine learningStarsRADIUSStatistical physicsSaturation (graph theory)Set (abstract data type)NeutronNuclear physicsAstrophysicsStellar structureAlgorithmArtificial neural networkNuclear astrophysicsStar (game theory)Nuclear forcePulsars and Gravitational Waves ResearchNuclear physics research studiesScientific Research and Discoveries