Towards understanding the relation between the gas and the attenuation in galaxies at kpc scales
M. Boquien, A. Boselli, V. Buat, M. Baes, G. Bendo, S. Boissier, L., Ciesla, A. Cooray, L. Cortese, S. Eales, J. Koda, V. Lebouteiller, I. de, Looze, M. W. L. Smith, L. Spinoglio, C. D. Wilson

TL;DR
This paper establishes new detailed relations between gas surface density and optical depth at kpc scales in galaxies, calibrated on observational data, to improve attenuation estimates for models and observations.
Contribution
It introduces new relations linking gas surface density and optical depth, incorporating metallicity, based on multi-wavelength galaxy observations, enhancing attenuation calculations.
Findings
New relations accurately predict optical depth from gas surface density.
Metallicity is crucial for precise attenuation estimates.
Impact on simulated luminosity functions is significant.
Abstract
[abridged] Aims. The aim of the present paper is to provide new and more detailed relations at the kpc scale between the gas surface density and the face-on optical depth directly calibrated on galaxies, in order to compute the attenuation not only for semi-analytic models but also observationally as new and upcoming radio observatories are able to trace gas ever farther in the Universe. Methods. We have selected a sample of 4 nearby resolved galaxies and a sample of 27 unresolved galaxies from the Herschel Reference Survey and the Very Nearby Galaxies Survey, for which we have a large set of multi-wavelength data from the FUV to the FIR including metallicity gradients for resolved galaxies, along with radio HI and CO observations. For each pixel in resolved galaxies and for each galaxy in the unresolved sample, we compute the face-on optical depth from the attenuation determined…
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