Modelling the spectral energy distribution of galaxies: introducing the artificial neural network
L. Silva (1), A. Schurer (2), G.L. Granato (1), C. Almeida (3,4), C.M., Baugh (3), C.S. Frenk (3), C.G. Lacey (3), L. Paoletti (5), A. Petrella (5),, D. Selvestrel (5) ((1) INAF-OATs, (2) Univ. Edinburgh, (3) ICC-Univ. Durham,, (4) Shanghai Astronomical Observatory

TL;DR
This paper introduces an artificial neural network integrated into the GRASIL code to rapidly compute galaxy spectral energy distributions, significantly reducing computation time while maintaining accuracy for different galaxy types.
Contribution
The authors developed and implemented an ANN within GRASIL to efficiently model dust emission spectra, applicable across various galaxy geometries and independent of specific galaxy formation models.
Findings
ANN accurately reproduces SEDs of disc and starburst galaxies
ANN-based predictions match full GRASIL results in galaxy counts
Method reduces computation time significantly
Abstract
The spectral energy distribution of galaxies is a complex function of the star formation history and geometrical arrangement of stars and gas in galaxies. The computation of the radiative transfer of stellar radiation through the dust distribution is time-consuming. This aspect becomes unacceptable in particular when dealing with the predictions by semi-analytical galaxy formation models populating cosmological volumes, to be then compared with multi-wavelength surveys. Mainly for this aim, we have implemented an artificial neural network algorithm into the spectro-photometric and radiative transfer code GRASIL in order to compute the spectral energy distribution of galaxies in a short computing time. This allows to avoid the adoption of empirical templates that may have nothing to do with the mock galaxies output by models. The ANN has been implemented to compute the dust emission…
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