Dust properties inside molecular clouds from coreshine modeling and observations
Charl\`ene Lef\`evre (LERMA), Laurent Pagani (LERMA), Mika Juvela,, Roberta Paladini, Rosine Lallement (GEPI, OBSPM), D. J. Marshall (AIM),, Morten Andersen (IPAG), Aurore Bacmann (IPAG), Peregrine M. McGehee (IPAC),, Ludovic Montier (IRAP), Alberto Noriega-Crespo (IPAC)

TL;DR
This study uses coreshine observations at 3.6 and 4.5 μm to constrain dust grain growth and properties within molecular clouds, employing radiative transfer modeling to match observed surface brightness and intensity ratios.
Contribution
It introduces a comprehensive grid of dust models including grain growth, porosity, and ice mantles, to interpret coreshine data and assess dust evolution in dense cloud regions.
Findings
Coreshine is suppressed in the Galactic plane due to strong background fields.
Observed coreshine intensity ratios are consistent with models of grain growth up to 5 μm.
Embedded sources significantly increase coreshine fluxes.
Abstract
Context. Using observations to deduce dust properties, grain size distribution, and physical conditions in molecular clouds is a highly degenerate problem. Aims. The coreshine phenomenon, a scattering process at 3.6 and 4.5 m that dominates absorption, has revealed its ability to explore the densest parts of clouds. We want to use this effect to constrain the dust parameters. The goal is to investigate to what extent grain growth (at constant dust mass) inside molecular clouds is able to explain the coreshine observations. We aim to find dust models that can explain a sample of Spitzer coreshine data. We also look at the consistency with near-infrared data we obtained for a few clouds. Methods. We selected four regions with a very high occurrence of coreshine cases: Taurus-Perseus, Cepheus, Chameleon and L183/L134. We built a grid of dust models and investigated the key parameters…
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