Abstract
We study the sources of biases and systematics in the derivation of galaxy properties from observational studies, focusing on stellarmasses, star formation rates, gas and stellarmetallicities, stellar ages, magnitudes and colours. We use hydrodynamical cosmological simulations of galaxy formation, for which the real quantities are known, and apply observational techniques to derive the observables. We also analyse biases that are relevant for a proper comparison between simulations and observations. For our study, we post-process the simulation outputs to calculate the galaxies' spectral energy distributions (SEDs) using stellar population synthesis models and also generate the fully consistent far-UV-submillimetre wavelength SEDs with the radiative transfer code SUNRISE. We compared the direct results of simulations with the observationally derived quantities obtained in various ways, and found that systematic differences in all studied galaxy properties appear, which are caused by: (1) purely observational biases, (2) the use of mass-weighted and luminosity-weighted quantities, with preferential sampling of more massive and luminous regions, (3) the different ways of constructing the template of models when a fit to the spectra is performed, and (4) variations due to different calibrations, most notably for gas metallicities and star formation rates. Our results show that large differences can appear depending on the technique used to derive galaxy properties. Understanding these differences is of primary importance both for simulators, to allow a better judgement of similarities and differences with observations, and for observers, to allow a proper interpretation of the data.
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Guidi, G., Scannapieco, C., & Walcher, C. J. (2015). Biases and systematics in the observational derivation of galaxy properties: Comparing different techniques on synthetic observations of simulated galaxies. Monthly Notices of the Royal Astronomical Society, 454(3), 2381–2400. https://doi.org/10.1093/mnras/stv2050
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