Target Selection and Sample Characterization for the DESI LOW-Z Secondary Target Program
Abstract
We introduce the DESI LOW-Z Secondary Target Survey, which combines the wide-area capabilities of the Dark Energy Spectroscopic Instrument (DESI) with an efficient, low-redshift target selection method. Our selection consists of a set of color and surface brightness cuts, combined with modern machine learning methods, to target low-redshift dwarf galaxies ( < 0.03) between with high completeness. We employ a convolutional neural network (CNN) to select high-priority targets. The LOW-Z survey has already obtained over 22,000 redshifts of dwarf galaxies (M M), comparable to the number of dwarf galaxies discovered in SDSS-DR8 and GAMA. As a spare fiber survey, LOW-Z currently receives fiber allocation for just ~50% of its targets. However, we estimate that our selection is highly complete: for galaxies at within our magnitude limits, we achieve better than 95% completeness with ~1% efficiency using catalog-level photometric cuts. We also demonstrate that our CNN selections galaxies from the photometric cuts subsample at least ten times more efficiently while maintaining high completeness. The full five-year DESI program will expand the LOW-Z sample, densely mapping the low-redshift Universe, providing an unprecedented sample of dwarf galaxies, and providing critical information about how to pursue effective and efficient low-redshift surveys.
Keywords
Cite
@article{arxiv.2212.07433,
title = {Target Selection and Sample Characterization for the DESI LOW-Z Secondary Target Program},
author = {Elise Darragh-Ford and John F. Wu and Yao-Yuan Mao and Risa H. Wechsler and Marla Geha and Jaime E. Forero-Romero and ChangHoon Hahn and Nitya Kallivayalil and John Moustakas and Ethan O. Nadler and Marta Nowotka and J. E. G. Peek and Erik J. Tollerud and Benjamin Weiner and J. Aguilar and S. Ahlen and D. Brooks and A. P. Cooper and A. de la Macorra and A. Dey and K. Fanning and A. Font-Ribera and S. Gontcho A Gontcho and K. Honscheid and T. Kisner and Anthony Kremin and M. Landriau and Michael E. Levi and P. Martini and Aaron M. Meisner and R. Miquel and Adam D. Myers and Jundan Nie and N. Palanque-Delabrouille and W. J. Percival and F. Prada and D. Schlegel and M. Schubnell and Gregory Tarlé and M. Vargas-Magaña and Zhimin Zhou and H. Zou},
journal= {arXiv preprint arXiv:2212.07433},
year = {2023}
}
Comments
24 pages, 14 figures, data to reproduce figures: https://zenodo.org/record/7422591