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Astrometric constraints on stochastic gravitational wave background with neural networks

Authors :
Caldarola, Marienza
Morrás, Gonzalo
Jaraba, Santiago
Kuroyanagi, Sachiko
Nesseris, Savvas
García-Bellido, Juan
Publication Year :
2024

Abstract

Astrometric measurements provide a unique avenue for constraining the stochastic gravitational wave background (SGWB). In this work, we investigate the application of two neural network architectures, a fully connected network and a graph neural network, for analyzing astrometric data to detect the SGWB. Specifically, we generate mock Gaia astrometric measurements of the proper motions of sources and train two networks to predict the energy density of the SGWB, $\Omega_\text{GW}$. We evaluate the performance of both models under varying input datasets to assess their robustness across different configurations. Our results demonstrate that neural networks can effectively measure the SGWB, showing promise as tools for addressing systematic uncertainties and modeling limitations that pose challenges for traditional likelihood-based methods.<br />Comment: 10 pages, 8 figures, comments welcome

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.15879
Document Type :
Working Paper