Clustering the Orion B giant molecular cloud based on its molecular emission
Emeric Bron, Chlo\'e Daudon, J\'er\^ome Pety, Fran\c{c}ois Levrier,, Maryvonne Gerin, Pierre Gratier, Jan H. Orkisz, Viviana Guzman, S\'ebastien, Bardeau, Javier R. Goicoechea, Harvey Liszt, Karin \"Oberg, Nicolas Peretto,, Albrecht Sievers, Pascal Tremblin

TL;DR
This study employs machine learning clustering on multi-molecular line data to segment the Orion B molecular cloud into physically and chemically distinct regions, revealing insights into its density and chemical composition.
Contribution
It introduces a novel approach combining multi-line spectral imaging with Meanshift clustering to identify physically and chemically distinct regions in a giant molecular cloud.
Findings
Identified density regimes corresponding to diffuse, translucent, and dense regions.
Distinguished UV-illuminated from UV-shielded gas based on molecular tracers.
Revealed finer density distinctions in the densest cloud regions.
Abstract
Previous attempts at segmenting molecular line maps of molecular clouds have focused on using position-position-velocity data cubes of a single line to separate the spatial components of the cloud. In contrast, wide field spectral imaging with large spectral bandwidth in the (sub)mm domain now allows to combine multiple molecular tracers to understand the different physical and chemical phases that constitute giant molecular clouds. We aim at using multiple tracers (sensitive to different physical processes) to segment a molecular cloud into physically/chemically similar regions (rather than spatially connected components). We use a machine learning clustering method (the Meanshift algorithm) to cluster pixels with similar molecular emission, ignoring spatial information. Simple radiative transfer models are used to interpret the astrophysical information uncovered by the clustering. A…
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