The miniJPAS Survey: The radial distribution of star formation rates in faint X-ray active galactic nuclei
Nischal Acharya, Silvia Bonoli, Mara Salvato, Ariana Cortesi, M. Rosa, Gonz\'alez Delgado, Ivan Ezequiel Lopez, Isabel Marquez, Gin\'es, Mart\'inez-Solaeche, Abdurro'uf, David Alexander, Marcella Brusa, Jon\'as, Chaves-Montero, Juan Antonio Fern\'andez Ontiveros, Brivael Laloux

TL;DR
This study investigates how nuclear activity in X-ray-selected AGN affects the radial distribution of star formation, revealing central suppression and outer enhancement, suggesting inside-out quenching in host galaxies.
Contribution
It demonstrates the use of miniJPAS as an IFU to analyze radial star formation profiles in AGN, highlighting spatially resolved effects not seen in global properties.
Findings
AGN are more centrally concentrated in mass than star-forming galaxies.
No significant difference in global SFRs between AGN and star-forming galaxies.
Radial profiles show suppressed sSFR in centers and enhanced beyond 1Re in AGN.
Abstract
We study the impact of black hole nuclear activity on both the global and radial star formation rate (SFR) profiles in X-ray-selected active galactic nuclei (AGN) in the field of miniJPAS, the precursor of the much wider J-PAS project. Our sample includes 32 AGN with z < 0.3 detected via the XMM-Newton and Chandra surveys. For comparison, we assembled a control sample of 71 star-forming (SF) galaxies with similar magnitudes, sizes, and redshifts. To derive the global properties of both the AGN and the control SF sample, we used CIGALE to fit the spectral energy distributions derived from the 56 narrowband and 4 broadband filters from miniJPAS. We find that AGN tend to reside in more massive galaxies than their SF counterparts. After matching samples based on stellar mass and comparing their SFRs and specific SFRs (sSFRs), no significant differences appear. This suggests that the…
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