Abstract

Atoms and molecules have long been thought to be versatile tracers of the cold neutral gas in the universe, from high-redshift galaxies to star forming regions and proto-planetary disks, because their internal degrees of freedom bear the signature of the physical conditions where these species reside. However, the promise that molecular emission has a strong diagnostic power of the underlying physical and chemical state is still hampered by the difficulty to combine sophisticated chemical codes with gas dynamics. It is therefore important 1) to acquire self-consistent data sets that can be used as templates for this theoretical work, and 2) to reveal the diagnostic capabilities of molecular lines accurately. The advent of sensitive wideband spectrometers in the (sub)- millimeter domain (e.g., IRAM-30m/EMIR, NOEMA, …) during the 2010s has allowed us to image a significant fraction of a Giant Molecular Cloud with enough sensitivity to detect tens of molecular lines in the 70 – 116 GHz frequency range. Machine learning techniques applied to these data start to deliver the next generation of molecular line diagnostics of mass, density, temperature, and radiation field.

Details

Title
Revealing which Combinations of Molecular Lines are Sensitive to the Gas Physical Parameters of Molecular Clouds
Author
Pety, Jérôme; Gerin, Maryvonne; Bron, Emeric; Gratier, Pierre; Orkisz, Jan H; Palud, Pierre; Roueff, Antoine; Einig, Lucas; Santa-Maria, Miriam G; de Souza Magalhaes, Victor; Bardeau, Sébastien; Chanussot, Jocelyn; Chainais, Pierre; Goicoechea, Javier R; Guzman, Viviana V; Hughes, Annie; Kainulainen, Jouni; Languignon, David; Levrier, François; Lis, Darek; Liszt, Harvey S; Jacques Le Bourlot; Franck Le Petit; Oberg, Karin; Peretto, Nicolas; Roueff, Evelyne; Sievers, Albrecht; Pierre-Antoine Thouvenin; Tremblin, Pascal
Publication year
2022
Publication date
2022
Publisher
EDP Sciences
ISSN
21016275
e-ISSN
2100014X
Source type
Conference Paper
Language of publication
English
ProQuest document ID
2719700059
Copyright
© 2022. This work is licensed under http://creativecommons.org/licenses/by/4.0/ (the “License”). Notwithstanding the ProQuest Terms and conditions, you may use this content in accordance with the terms of the License.