Emulating Radiative Transfer with Artificial Neural Networks
Snigdaa S. Sethuram, Rachel K. Cochrane, Christopher C. Hayward,, Viviana Acquaviva, Francisco Villaescusa-Navarro, Gergo Popping, John H. Wise

TL;DR
This paper introduces ANNgelina, an artificial neural network emulator that efficiently predicts galaxy spectral energy distributions from key properties, significantly reducing computational costs compared to traditional radiative transfer methods.
Contribution
The paper presents a novel neural network model trained on cosmological simulation data to accurately emulate radiative transfer calculations for galaxy SEDs.
Findings
Predicts galaxy SEDs with ~7% median error from UV to millimetre wavelengths.
Performs well across different galaxy properties with reduced computational time.
Most accurate predictions in the UV, highlighting viewing-angle effects.
Abstract
Forward-modeling observables from galaxy simulations enables direct comparisons between theory and observations. To generate synthetic spectral energy distributions (SEDs) that include dust absorption, re-emission, and scattering, Monte Carlo radiative transfer is often used in post-processing on a galaxy-by-galaxy basis. However, this is computationally expensive, especially if one wants to make predictions for suites of many cosmological simulations. To alleviate this computational burden, we have developed a radiative transfer emulator using an artificial neural network (ANN), ANNgelina, that can reliably predict SEDs of simulated galaxies using a small number of integrated properties of the simulated galaxies: star formation rate, stellar and dust masses, and mass-weighted metallicities of all star particles and of only star particles with age <10 Myr. Here, we present the…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Impact of Light on Environment and Health
