Dust, CO and [CI]: Cross-calibration of molecular gas mass tracers in metal-rich galaxies across cosmic time

arxiv(2022)

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摘要
We present a self-consistent cross-calibration of the three main molecular gas mass tracers in galaxies, the $\rm ^{12}CO$(1-0), [CI]($^3P_1$-$^3P_0$) lines, and the submm dust continuum emission, using a sample of 407 galaxies, ranging from local disks to submillimetre-selected galaxies (SMGs) up to $z \approx 6$. A Bayesian method is used to produce galaxy-scale universal calibrations of these molecular gas indicators, that hold over 3-4 orders of magnitude in infrared luminosity, $L_{\rm IR}$. Regarding the dust continuum, we use a mass-weighted dust temperature, $T_{\rm mw}$, determined using new empirical relations between temperature and luminosity. We find the average $L/M_{\rm mol}$ gas mass conversion factors to be $\alpha_{850}= 6.9\times10^{12}\,\rm W\,Hz^{-1}\,M_{\odot}^{-1}$, $\alpha_{\rm CO} = \rm 4\,M_{\odot} (K\,km\,s^{-1}\,pc^2)^{-1}$ and $\alpha_{\rm CI} = \rm 17.0 \,M_{\odot} (K\,km\,s^{-1}\,pc^2)^{-1}$, based on the assumption that the mean dust properties of the sample ($\kappa_H$ = gas-to-dust ratio/dust emissivity) will be similar to those of local metal rich galaxies and the MW. The tracer with the least intrinsic scatter is [CI](1-0), while CO(1-0) has the highest. The conversion factors show a weak but significant correlation with $L_{\rm IR}$. Assuming dust properties typical of metal-rich galaxies, we infer a neutral carbon abundance $X_{\rm CI} = [C^0/\rm mol]=1.6\times 10^{-5}$, similar to that in the MW. We find no evidence for bimodality of $\alpha_{\rm CO}$ between main-sequence (MS) galaxies and those with extreme star-formation intensity, i.e. ULIRGs and SMGs. The means of the three conversion factors are found to be similar between MS galaxies and ULIRGs/SMGs, to within 10-20%. We show that for metal-rich galaxies, near-universal average values for $\alpha_{\rm CO}$, $X_{\rm CI}$ and $\kappa_H$ are adequate for global molecular gas estimates.
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