Litcius/Paper detail

Galaxy morphoto-Z with neural Networks (GaZNets)

Rui Li, N. R. Napolitano, Hai-Cheng Feng, Ran Li, Valeria Amaro, Linghua Xie, C. Tortora, Maciej Bilicki, M. Brescia, S. Cavuoti, M. Radovich

2022Astronomy and Astrophysics19 citationsDOIOpen Access PDF

Abstract

Aims. In the era of large sky surveys, photometric redshifts (photo- z ) represent crucial information for galaxy evolution and cosmology studies. In this work, we propose a new machine learning (ML) tool called Galaxy morphoto-Z with neural Networks (GaZNet-1), which uses both images and multi-band photometry measurements to predict galaxy redshifts, with accuracy, precision and outlier fraction superior to standard methods based on photometry only. Methods. As a first application of this tool, we estimate photo- z for a sample of galaxies in the Kilo-Degree Survey (KiDS). GaZNet-1 is trained and tested on ∼140 000 galaxies collected from KiDS Data Release 4 (DR4), for which spectroscopic redshifts are available from different surveys. This sample is dominated by bright (MAG_AUTO < 21) and low-redshift ( z < 0.8) systems; however, we could use ∼6500 galaxies in the range 0.8 < z < 3 to effectively extend the training to higher redshift. The inputs are the r -band galaxy images plus the nine-band magnitudes and colors from the combined catalogs of optical photometry from KiDS and near-infrared photometry from the VISTA Kilo-degree Infrared survey. Results. By combining the images and catalogs, GaZNet-1 can achieve extremely high precision in normalized median absolute deviation (NMAD = 0.014 for lower redshift and NMAD = 0.041 for higher redshift galaxies) and a low fraction of outliers (0.4% for lower and 1.27% for higher redshift galaxies). Compared to ML codes using only photometry as input, GaZNet-1 also shows a ∼10%−35% improvement in precision at different redshifts and a ∼45% reduction in the fraction of outliers. We finally discuss the finding that, by correctly separating galaxies from stars and active galactic nuclei, the overall photo- z outlier fraction of galaxies can be cut down to 0.3%.

Topics & Concepts

PhysicsAstrophysicsGalaxyAstronomyGalaxies: Formation, Evolution, PhenomenaAstronomy and Astrophysical ResearchGamma-ray bursts and supernovae