A High Spatial Resolution Mid-Infrared Spectroscopic Study of the Nuclei and Star-Forming Regions in Luminous Infrared Galaxies
T. Diaz-Santos (1,2), A. Alonso-Herrero (1), L. Colina (1), C. Packham, (3), N. A. Levenson (4,5), M. Pereira-Santaella (1), P. F. Roche (6), C. M., Telesco (3) ((1) IEM, CSIC; (2) University of Crete; (3) University of

TL;DR
This study uses high-resolution mid-infrared spectroscopy to analyze the nuclei and star-forming regions of local luminous infrared galaxies, revealing spatial variations in spectral features and their relation to star formation activity.
Contribution
It provides the first high spatial resolution MIR spectroscopic comparison of nuclear and star-forming regions in LIRGs, distinguishing AGN from star formation and analyzing spectral feature variations.
Findings
[NeII] luminosity correlates tightly with Pa-alpha surface density.
The 9.7um silicate absorption is weaker in nuclei than in surrounding regions.
[NeII]/Pa-alpha ratio is independent of stellar population age.
Abstract
We present a high spatial (diffraction-limited) resolution (~0.3") mid-infrared (MIR) spectroscopic study of the nuclei and star-forming regions of 4 local luminous infrared galaxies (LIRGs) using T-ReCS on the Gemini South telescope. We investigate the spatial variations of the features seen in the N-band spectra of LIRGs on scales of ~100 pc, which allow us to separate the AGN emission from that of the star formation (SF). We compare our Gemini T-ReCS nuclear and integrated spectra of LIRGs with those obtained with Spitzer IRS. The 9.7um silicate absorption feature is weaker in the nuclei of the LIRGs than in the surrounding regions. This is probably due to the either clumpy or compact environment of the central AGN or young, nuclear starburst. We find that the [NeII] luminosity surface density is tightly and directly correlated with that of Pa-alpha for the LIRG star-forming regions…
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