Abstract
We use a suite of cosmological zoom galaxy formation simulations and dust radiative transfer calculations to explore the use of the monochromatic 850 μ m luminosity ( L ν ,850 ) as a molecular gas mass ( M mol ) estimator in galaxies between 0 < z < 9.5 for a broad range of masses. For our fiducial simulations, where we assume that the dust mass is linearly related to the metal mass, we find that empirical L ν ,850 – M mol calibrations accurately recover the molecular gas mass of our model galaxies and that the L ν ,850 -dependent calibration is preferred. We argue that the major driver of scatter in the L ν ,850 – M mol relation arises from variations in the molecular gas-to-dust mass ratio, rather than variations in the dust temperature, in agreement with the previous study of Liang et al. Emulating a realistic measurement strategy with ALMA observing bands that are dependent on the source redshift, we find that estimating S ν ,850 from continuum emission at a different frequency contributes 10%–20% scatter to the L ν ,850 – M mol relation. This additional scatter arises from a combination of mismatches in assumed T dust and β values, as well as the fact that the SEDs are not single-temperature blackbodies. However, this observationally induced scatter is a subdominant source of uncertainty. Finally, we explore the impact of a dust prescription in which the dust-to-metals ratio varies with metallicity. Though the resulting mean dust temperatures are ∼50% higher, the dust mass is significantly decreased for low-metallicity halos. As a result, the observationally calibrated L ν ,850 – M mol relation holds for massive galaxies, independent of the dust model, but below L ν ,850 ≲ 10 28 erg s −1 (metallicities ) we expect that galaxies may deviate from literature observational calibrations by ≳0.5 dex.
Cite
CITATION STYLE
Privon, G. C., Narayanan, D., & Davé, R. (2018). On the Interpretation of Far-infrared Spectral Energy Distributions. I. The 850 μm Molecular Mass Estimator. The Astrophysical Journal, 867(2), 102. https://doi.org/10.3847/1538-4357/aae485
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