Emission line predictions for mock galaxy catalogues: a new differentiable and empirical mapping from DESI

DOI: 
10.1093/mnras/stae1189
Publication date: 
11/06/2024
Main author: 
Khederlarian, Ashod
IAA authors: 
Prada, Francisco
Authors: 
Khederlarian, Ashod;Newman, Jeffrey A.;Andrews, Brett H.;Dey, Biprateep;Moustakas, John;Hearin, Andrew;Juneau, Stéphanie;Tortorelli, Luca;Gruen, Daniel;Hahn, ChangHoon;Canning, Rebecca E. A.;Aguilar, Jessica Nicole;Ahlen, Steven;Brooks, David;Claybaugh, Todd;de la Macorra, Axel;Doel, Peter;Fanning, Kevin;Ferraro, Simone;Forero-Romero, Jaime;Gaztañaga, Enrique;Gontcho, Satya Gontcho A.;Kehoe, Robert;Kisner, Theodore;Kremin, Anthony;Lambert, Andrew;Landriau, Martin;Manera, Marc;Meisner, Aaron;Miquel, Ramon;Mueller, Eva-Maria;Muñoz-Gutiérrez, Andrea;Myers, Adam;Nie, Jundan;Poppett, Claire;Prada, Francisco;Rezaie, Mehdi;Rossi, Graziano;Sanchez, Eusebio;Schubnell, Michael;Silber, Joseph Harry;Sprayberry, David;Tarlé, Gregory;Weaver, Benjamin Alan;Zhou, Zhimin;Zou, Hu
Journal: 
Monthly Notices of the Royal Astronomical Society
Publication type: 
Article
Volume: 
531
Pages: 
1454-1470
Abstract: 
We present a simple, differentiable method for predicting emission line strengths from rest-frame optical continua using an empirically determined mapping. Extensive work has been done to develop mock galaxy catalogues that include robust predictions for galaxy photometry, but reliably predicting the strengths of emission lines has remained challenging. Our new mapping is a simple neural network implemented using the JAX Python automatic differentiation library. It is trained on Dark Energy Spectroscopic Instrument Early Release data to predict the equivalent widths (EWs) of the eight brightest optical emission lines (including H α, H β, [O II], and [O III]) from a galaxy's rest-frame optical continuum. The predicted EW distributions are consistent with the observed ones when noise is accounted for, and we find Spearman's rank correlation coefficient ρ<SUB>s</SUB> &gt; 0.87 between predictions and observations for most lines. Using a non-linear dimensionality reduction technique, we show that this is true for galaxies across the full range of observed spectral energy distributions. In addition, we find that adding measurement uncertainties to the predicted line strengths is essential for reproducing the distribution of observed line-ratios in the BPT diagram. Our trained network can easily be incorporated into a differentiable stellar population synthesis pipeline without hindering differentiability or scalability with GPUs. A synthetic catalogue generated with such a pipeline can be used to characterize and account for biases in the spectroscopic training sets used for training and calibration of photo-z's, improving the modelling of systematic incompleteness for the Rubin Observatory LSST and other surveys.
Database: 
ADS
SCOPUS
URL: 
https://ui.adsabs.harvard.edu/#abs/2024MNRAS.531.1454K/abstract
ADS Bibcode: 
2024MNRAS.531.1454K
Keywords: 
Astrophysics - Astrophysics of Galaxies