Physical Properties of Giant Molecular Clouds in the Large Magellanic Cloud
A. Hughes, T. Wong, J. Ott, E. Muller, J. L. Pineda, Y. Mizuno, J.-P., Bernard, D. Paradis, S. Maddison, W. T. Reach, L. Staveley-Smith, A., Kawamura, M. Meixner, S. Kim, T. Onishi, N. Mizuno, Y. Fukui

TL;DR
This study characterizes 125 giant molecular clouds in the Large Magellanic Cloud, revealing their physical properties, environmental influences, and comparisons with Galactic clouds, challenging some existing star formation theories.
Contribution
It provides detailed physical property measurements of LMC GMCs and examines environmental effects, offering insights that question current star formation models.
Findings
LMC GMCs have narrower linewidths and lower CO luminosities than Galactic GMCs.
Positive correlations exist between HI column density, stellar mass surface density, and CO brightness.
GMC mass surface density shows some increase with interstellar pressure, but not all model predictions are confirmed.
Abstract
The Magellanic Mopra Assessment (MAGMA) is a high angular resolution CO mapping survey of giant molecular clouds (GMCs) in the Large and Small Magellanic Clouds using the Mopra Telescope. Here we report on the basic physical properties of 125 GMCs in the LMC that have been surveyed to date. The observed clouds exhibit scaling relations that are similar to those determined for Galactic GMCs, although LMC clouds have narrower linewidths and lower CO luminosities than Galactic clouds of a similar size. The average mass surface density of the LMC clouds is 50 Msol/pc2, approximately half that of GMCs in the inner Milky Way. We compare the properties of GMCs with and without signs of massive star formation, finding that non-star-forming GMCs have lower peak CO brightness than star-forming GMCs. We compare the properties of GMCs with estimates for local interstellar conditions: specifically,…
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