Exploring the Most Extreme Gamma-Ray Blazars Using Broadband Spectral Energy Distributions
M. L\'ainez, M. Nievas-Rosillo, A. Dom\'inguez, J. L. Contreras, J. Becerra Gonz\'alez, A. Dinesh, V. S. Paliya

TL;DR
This study identifies new extreme high-synchrotron peaked blazars using broadband spectral energy distributions, expanding the known population and exploring their emission properties and detectability with future gamma-ray telescopes.
Contribution
The paper presents the discovery of 66 new EHSP candidates and analyzes their emission characteristics, providing insights into their physical conditions and potential for detection with CTAO.
Findings
66 new EHSP candidates identified
Correlation between synchrotron peak frequency and energy density ratio
Nine EHSPs could be observed by CTAO at >5σ in 20 hours
Abstract
Extreme high-synchrotron peaked blazars (EHSPs) are rare high-energy sources characterised by synchrotron peaks beyond 10 Hz in their spectral energy distributions (SEDs). Their extreme properties challenge conventional blazar emission models and provide a unique opportunity to test the limits of particle acceleration and emission mechanisms in relativistic jets. However, the number of identified EHSPs is still small, limiting comprehensive studies of their population and characteristics. This study aims to identify new EHSP candidates and characterise their emission properties. A sample of 124 -ray blazars was analysed, selected for their high synchrotron peak frequencies and -ray emission properties, with a focus on sources showing low variability and good broadband data coverage. Their SEDs were constructed using archival multi-wavelength data from the SSDC SED…
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Taxonomy
TopicsAstrophysics and Cosmic Phenomena · Solar and Space Plasma Dynamics · Computational Physics and Python Applications
