Détail du document
Identifiant

oai:arXiv.org:2412.18767

Sujet
Astrophysics - High Energy Astroph...
Auteur
Xiang, Y. C. Feng, P. Lan, X. F.
Catégorie

sciences : astrophysique

Année

2024

Date de référencement

01/01/2025

Mots clés
identified sky sources
Métrique

Résumé

We employ an efficient method for identifying gamma-ray sources across the entire sky, leveraging advanced algorithms from Fermi p y, and cleverly utilizing the Galactic diffuse background emission model to partition the entire sky into 72 regions,thereby greatly enhancing the efficiency of discovering new sources throughout the sky through multi-threaded parallel computing.

After confirming the reliability of the new method, we applied it for the first time to analyze data from the Fermi Large Area Telescope encompassing approximately 15.41yr of all sky surveys.

Through this analysis, we successfully identified 1379 new sources with levels exceeding 4sigma, of which 497 sources exhibited higher significance levels exceeding 5sigma.

Subsequently, we performed a systematic analysis of the spatial extension, spectra, and light variation characteristics of these newly identified sources.

We identified 21 extended sources and 23 sources exhibiting spectral curvature above 10GeV.

Additionally, we identified 44 variable sources above 1GeV.

Xiang, Y. C.,Feng, P.,Lan, X. F., 2024, Identifying New $\gamma$-Ray Sources in All-Sky Surveys Based on Fermipy's Advanced Algorithm

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