The LSST DESC Data Challenge 1: Generation and Analysis of Synthetic Images for Next Generation Surveys
F. Javier S\'anchez, Chris W. Walter, Humna Awan, James Chiang, Scott, F. Daniel, Eric Gawiser, Tom Glanzman, David P. Kirkby, Rachel Mandelbaum,, An\v{z}e Slosar, W. Michael Wood-Vasey, Yusra AlSayyad, Colin J. Burke, Seth, W. Digel, Mike Jarvis, Tony Johnson, Heather Kelly

TL;DR
This paper describes the creation and analysis of a synthetic dataset for the LSST DESC, validating data processing pipelines and studying systematic effects on galaxy clustering measurements.
Contribution
It introduces the first synthetic LSST dataset (DC1), detailing the simulation, reduction, and validation processes, and analyzing systematic impacts on clustering studies.
Findings
Survey properties impact 50% of statistical uncertainty.
Artifact removal is essential to prevent clustering biases.
Bright objects significantly affect small-scale power spectrum estimates.
Abstract
Data Challenge 1 (DC1) is the first synthetic dataset produced by the Rubin Observatory Legacy Survey of Space and Time (LSST) Dark Energy Science Collaboration (DESC). DC1 is designed to develop and validate data reduction and analysis and to study the impact of systematic effects that will affect the LSST dataset. DC1 is comprised of -band observations of 40 deg to 10-year LSST depth. We present each stage of the simulation and analysis process: a) generation, by synthesizing sources from cosmological N-body simulations in individual sensor-visit images with different observing conditions; b) reduction using a development version of the LSST Science Pipelines; and c) matching to the input cosmological catalog for validation and testing. We verify that testable LSST requirements pass within the fidelity of DC1. We establish a selection procedure that produces a sufficiently…
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