The AMIGA sample of isolated galaxies III. IRAS data and infrared diagnostics
U. Lisenfeld, L. Verdes-Montenegro, J. Sulentic, S. Leon, D. Espada,, G. Bergond, J. Sabater, J.D. Santander-Vela, S. Verley

TL;DR
This study analyzes the infrared properties of a large, isolated galaxy sample to establish a baseline for environmental effects, revealing that FIR emission is enhanced by interactions and that the sample serves as a nurture-free reference.
Contribution
It provides a comprehensive IRAS-based analysis of isolated galaxies, establishing a baseline for environmental influence comparison and examining FIR diagnostics and their relation to galaxy properties.
Findings
FIR luminosity peaks sharply between 9.0 and 10.5.
Isolated galaxies show lower FIR emission compared to less isolated samples.
Interactions enhance FIR luminosity and dust temperature.
Abstract
We describe the mid- (MIR) and far- (FIR) infrared properties of a large (1000) sample of the most isolated galaxies in the local Universe. This sample is intended as a ``nurture-free'' zero point against which more environmentally influenced samples can be compared. We reprocess IRAS MIR/FIR survey data using the ADDSCAN/SCANPI utility for 1030 out of 1050 galaxies from the Catalogue of Isolated Galaxies (CIG) as part of the AMIGA project. We focus on diagnostics (FIR luminosity , and IRAS colours) thought to be sensitive to effects of environment or interaction. The distribution of is sharply peaked from 9.0--10.5 with very few (2%) galaxies above 10.5. The optically normalised luminosity diagnostic shows a distribution sharply peaked between 0.0 and 1.0. These results were compared to the magnitude…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Remote Sensing in Agriculture · Advanced Vision and Imaging
