The physical and chemical structure of high-mass star-forming regions. Unraveling chemical complexity with the NOEMA large program "CORE"
C. Gieser, H. Beuther, D. Semenov, A. Ahmadi, S. Suri, T. M\"oller,, M.T. Beltran, P. Klaassen, Q. Zhang, J.S. Urquhart, Th. Henning, S. Feng, R., Galv\'an-Madrid, V. de Souza Magalh\~aes, L. Moscadelli, S. Longmore, S., Leurini, R. Kuiper, T. Peters, K.M. Menten, T. Csengeri

TL;DR
This study uses high-resolution NOEMA observations to analyze the physical and chemical structures of 18 high-mass star-forming regions, revealing density and temperature profiles, molecular richness variations, and estimating core ages.
Contribution
It provides detailed physical and chemical characterizations of high-mass star-forming cores, including density and temperature profiles, molecular abundances, and age estimates, with comprehensive data release.
Findings
Density profiles remain consistent from clump to core scales.
Average core age is approximately 60,000 years.
Molecular richness varies with evolutionary stage, from line-rich to line-poor cores.
Abstract
We use sub-arcsecond resolution (0.4) observations with NOEMA at 1.37 mm to study the dust emission and molecular gas of 18 high-mass star-forming regions. We combine the derived physical and chemical properties of individual cores in these regions to estimate their ages. The temperature structure of these regions are determined by fitting H2CO and CH3CN line emission. The density profiles are inferred from the 1.37 mm continuum visibilities. The column densities of 11 different species are determined by fitting the emission lines with XCLASS. Within the 18 observed regions, we identify 22 individual cores with associated 1.37 mm continuum emission and with a radially decreasing temperature profile. We find an average temperature power-law index of q = 0.40.1 and an average density power-law index of p = 2.00.2 on scales on the order of several 1 000 au. Comparing…
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