Back to Search Start Over

The LSST-DESC 3x2pt Tomography Optimization Challenge

Authors :
Joe Zuntz
François Lanusse
Alex I. Malz
Angus H. Wright
Anže Slosar
Bela Abolfathi
David Alonso
Abby Bault
Clécio R. Bom
Massimo Brescia
Adam Broussard
Jean-Eric Campagne
Stefano Cavuoti
Eduardo S. Cypriano
Bernardo M. O. Fraga
Eric Gawiser
Elizabeth J. Gonzalez
Dylan Green
Peter Hatfield
Kartheik Iyer
David Kirkby
Andrina Nicola
Erfan Nourbakhsh
Andy Park
Gabriel Teixeira
Katrin Heitmann
Eve Kovacs
Yao-Yuan Mao
LSST Dark Energy Science Collaboration
Source :
The Open Journal of Astrophysics, Vol 4 (2021)
Publication Year :
2021
Publisher :
Maynooth Academic Publishing, 2021.

Abstract

This paper presents the results of the Rubin Observatory Dark Energy Science Collaboration (DESC) 3x2pt tomography challenge, which served as a first step toward optimizing the tomographic binning strategy for the main DESC analysis. The task of choosing an optimal tomographic binning scheme for a photometric survey is made particularly delicate in the context of a metacalibrated lensing catalogue, as only the photometry from the bands included in the metacalibration process (usually riz and potentially g) can be used in sample definition. The goal of the challenge was to collect and compare bin assignment strategies under various metrics of a standard 3x2pt cosmology analysis in a highly idealized setting to establish a baseline for realistically complex follow-up studies; in this preliminary study, we used two sets of cosmological simulations of galaxy redshifts and photometry under a simple noise model neglecting photometric outliers and variation in observing conditions, and contributed algorithms were provided with a representative and complete training set. We review and evaluate the entries to the challenge, finding that even from this limited photometry information, multiple algorithms can separate tomographic bins reasonably well, reaching figures-of-merit scores close to the attainable maximum. We further find that adding the g band to riz photometry improves metric performance by ~15% and that the optimal bin assignment strategy depends strongly on the science case: which figure-of-merit is to be optimized, and which observables (clustering, lensing, or both) are included.

Details

Language :
English
ISSN :
25656120
Volume :
4
Database :
Directory of Open Access Journals
Journal :
The Open Journal of Astrophysics
Publication Type :
Academic Journal
Accession number :
edsdoj.5cdd6ab16e214246a6a9e185b2819235
Document Type :
article
Full Text :
https://doi.org/10.21105/astro.2108.13418