The imprint of rapid star formation quenching on the spectral energy distributions of galaxies
L. Ciesla, A. Boselli, D. Elbaz, S. Boissier, V. Buat, V., Charmandaris, C. Schreiber, M. B\'ethermin, M. Baes, M. Boquien, I. De Looze,, J. A. Fern\'andez-Ontiveros, C. Pappalardo, L. Spinoglio, S. Viaene

TL;DR
This study demonstrates that incorporating a truncated delayed star formation history into SED fitting accurately identifies galaxies that experienced rapid quenching, providing insights into their past star formation activity and gas deficiency, especially in dense environments.
Contribution
The paper introduces a truncated delayed SFH model in SED fitting, improving the detection of rapid star formation quenching in galaxies and estimating their past SFR and gas deficiency.
Findings
The truncated SFH model accurately reproduces SEDs of quenched galaxies.
The ratio r_SFR correlates with HI deficiency, enabling gas deficiency estimates.
r_SFR can be recovered even without IR data, useful for high-redshift sources.
Abstract
[Abridged] In high density environment, the gas content of galaxies is stripped, leading to a rapid quenching of their star formation activity. This dramatic environmental effect is generally not taken into account in the SFHs usually assumed to perform spectral energy distribution (SED) fitting of these galaxies, yielding to a poor fit of their stellar emission and, consequently, a biased estimate of the SFR. We aim at reproducing the SFH of galaxies that underwent a rapid star formation quenching using a truncated delayed SFH that we implemented in the SED fitting code CIGALE. We show that the ratio between the instantaneous SFR and the SFR just before the quenching () is well constrained as long as rest frame UV data are available. This SED modelling is applied to the Herschel Reference Survey (HRS) containing isolated galaxies and sources falling in the dense environment of…
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