Mid-Infrared Properties of Nearby Luminous Infrared Galaxies I: Spitzer IRS Spectra for the GOALS Sample
S. Stierwalt, L. Armus, J.A. Surace, H. Inami, A.O. Petric, T., Diaz-Santos, S. Haan, V. Charmandaris, J. Howell, D.C. Kim, J. Marshall, J.M., Mazzarella, H.W.W. Spoon, S. Veilleux, A. Evans, D. B. Sanders, P. Appleton,, G. Bothun, C.R. Bridge, B. Chan, D. Frayer, K. Iwasawa

TL;DR
This study analyzes the mid-infrared spectral properties of nearby luminous infrared galaxies using Spitzer IRS data, revealing correlations between merger stages, dust obscuration, and spectral features, and comparing local LIRGs to high-redshift SMGs.
Contribution
It provides a comprehensive mid-IR spectral analysis of a large, complete sample of local LIRGs, highlighting trends related to merger stages and dust obscuration not previously detailed.
Findings
Most LIRGs have high PAH equivalent widths and low silicate absorption.
Silicate depth and MIR slope increase with IR luminosity.
Heavily obscured sources are more compact and associated with late-stage mergers.
Abstract
The Great Observatories All-Sky LIRG Survey (GOALS) is a multiwavelength study of luminous infrared galaxies (LIRGs) in the local universe. Here we present low resolution Spitzer spectra covering 5-38um and provide a basic analysis of the mid-IR spectral properties for nearby LIRGs. In a companion paper, we discuss detailed fits to the spectra. The GOALS sample of 244 nuclei in 180 luminous and 22 ultraluminous IR galaxies represents a complete subset of the IRAS RBGS and covers a range of merger stages, morphologies and spectral types. The majority (>60%) of GOALS LIRGs have high 6.2um PAH equivalent widths (EQW > 0.4um) and low levels of silicate absorption (s_9.7um >-1.0). There is a general trend among the U/LIRGs for silicate depth and MIR slope to increase with LIR. U/LIRGs in the late stages of a merger also have on average steeper MIR slopes and higher levels of dust…
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