J-PAS: Measuring emission lines with artificial neural networks
G. Mart\'inez-Solaeche, R. M. Gonz\'alez Delgado, R. Garc\'ia-Benito,, A. de Amorim, E. P\'erez, J. E. Rodr\'iguez-Mart\'in, L. A. D\'iaz-Garc\'ia,, R. Cid Fernandes, C. L\'opez-Sanjuan, S. Bonoli, A. J. Cenarro, R. A. Dupke,, A. Mar\'in-Franch, J. Varela, H. V\'azquez Rami\'o

TL;DR
This paper introduces a machine learning approach using artificial neural networks to detect and measure emission lines in J-PAS photometric data, enabling improved galaxy classification and emission line ratio estimation.
Contribution
The study develops and tests ANNs trained on synthetic and real spectra to accurately classify galaxies and measure emission line ratios in photometric surveys like J-PAS.
Findings
ANNs accurately classify galaxy groups with typical photometric redshift uncertainties.
The method reproduces main star-forming galaxy sequences from emission line measurements.
Training dataset choice significantly impacts model performance and accuracy.
Abstract
Throughout this paper we present a new method to detect and measure emission lines in J-PAS up to . J-PAS will observe ~deg of the northern sky in the upcoming years with 56 photometric bands. The release of such amount of data brings us the opportunity to employ machine learning methods in order to overcome the difficulties associated with photometric data. We used Artificial Neural Networks (ANNs) trained and tested with synthetic J-PAS photometry from CALIFA, MaNGA, and SDSS spectra. We carry out two tasks: firstly, we cluster galaxies in two groups according to the values of the equivalent width (EW) of , , , and lines measured in the spectra. Then, we train an ANN to assign to each galaxy a group. We are able to classify them with the uncertainties typical of the photometric redshift measurable in…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
