The thermal dust emission in the N158-N159-N160 (LMC) star forming complex mapped by Spitzer, Herschel and LABOCA
M. Galametz, S. Hony, F. Galliano, S. C. Madden, M. Albrecht, C. Bot,, D. Cormier, C. Engelbracht, Y. Fukui, F. P. Israel, A. Kawamura, V., Lebouteiller, A. Li, M. Meixner, K. Misselt, E. Montiel, K. Okumura, P., Panuzzo, J. Roman- Duval, M. Rubio, M. Sauvage, J. P. Seale

TL;DR
This study combines multi-wavelength infrared and submillimeter observations to analyze dust properties, star formation, and emission characteristics in the N158-N159-N160 star-forming complex of the LMC, revealing detailed dust and star formation insights.
Contribution
It provides a comprehensive, high-resolution multi-wavelength analysis of the LMC star-forming complex, including dust modeling, star formation rate mapping, and investigation of submm emission characteristics.
Findings
Strong correlation between SPIRE and LABOCA emissions.
Average dust temperature of 27K with beta=1.47.
No detectable submm excess at 870um.
Abstract
We present a study of the infrared/submm emission of the LMC star forming complex N158-N159-N160. Combining observations from the Spitzer Space Telescope (3.6-70um), the Herschel Space Observatory (100-500um) and LABOCA (870um) allows us to work at the best angular resolution available now for an extragalactic source. We observe a remarkably good correlation between SPIRE and LABOCA emission and resolve the low surface brightnesses emission. We use the Spitzer and Herschel data to perform a resolved Spectral Energy Distribution (SED) modelling of the complex. Using MBB, we derive a global emissivity index beta_c of 1.47. If beta cold is fixed to 1.5, we find an average temperature of 27K. We also apply the Galliano et al. (2011) modelling technique (and amorphous carbon to model carbon dust) to derive maps of the star formation rate, the mean starlight intensity, the fraction of PAHs or…
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