Predicting the global far-infrared SED of galaxies via machine learning techniques
W. Dobbels, M. Baes, S. Viaene, S. Bianchi, J. I. Davies, V. Casasola,, C. J. R. Clark, J. Fritz, M. Galametz, F. Galliano, A. Mosenkov, A., Nersesian, A. Tr\v{c}ka

TL;DR
This paper introduces a machine learning approach to predict far-infrared galaxy emission from UV to MIR data, enabling FIR property estimation without direct FIR observations, thus bridging current observational gaps.
Contribution
The study develops a neural network framework that outperforms traditional SED fitting in predicting FIR fluxes and dust properties from UV-MIR data, providing a new tool for galaxy analysis.
Findings
RMSE of 0.19 dex in FIR flux prediction
Outperforms energy balance SED fitting (RMSE 0.38 dex)
Identifies when predictions are unreliable
Abstract
Dust plays an important role in shaping a galaxy's spectral energy distribution (SED). It absorbs ultraviolet (UV) to near-infrared (NIR) radiation and re-emits this energy in the far-infrared (FIR). The FIR is essential to understand dust in galaxies. However, deep FIR observations require a space mission, none of which are still active today. We aim to infer the FIR emission across six Herschel bands, along with dust luminosity, mass, and effective temperature, based on the available UV to mid-infrared (MIR) observations. We also want to estimate the uncertainties of these predictions, compare our method to energy balance SED fitting, and determine possible limitations of the model. We propose a machine learning framework to predict the FIR fluxes from 14 UV-MIR broadband fluxes. We used a low redshift sample by combining DustPedia and H-ATLAS, and extracted Bayesian flux posteriors…
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