Improving the LSST dithering pattern and cadence for dark energy studies
Christopher M. Carroll, Eric Gawiser, Peter L. Kurczynski, Rachel A., Bailey, Rahul Biswas, David Cinabro, Saurabh W. Jha, R. Lynne Jones, K. Simon, Krughoff, Aneesa Sonawalla, W. Michael Wood-Vasey

TL;DR
This paper investigates how optimized dithering strategies in LSST can reduce artificial power in galaxy surveys, improve uniformity, and enhance dark energy measurements, especially for BAO and Type Ia supernovae.
Contribution
It introduces a dithering approach that significantly reduces artificial survey artifacts and proposes an observing strategy to maximize science return for dark energy studies.
Findings
Large dithers reduce artificial power by a factor of ~10.
Applying a magnitude cutoff of r<27.3 minimizes spurious power.
A concentrated survey increases Type Ia SNe detection by ~50%.
Abstract
The Large Synoptic Survey Telescope (LSST) will explore the entire southern sky over 10 years starting in 2022 with unprecedented depth and time sampling in six filters, . Artificial power on the scale of the 3.5 deg LSST field-of-view will contaminate measurements of baryonic acoustic oscillations (BAO), which fall at the same angular scale at redshift . Using the HEALPix framework, we demonstrate the impact of an "un-dithered" survey, in which of each LSST field-of-view is overlapped by neighboring observations, generating a honeycomb pattern of strongly varying survey depth and significant artificial power on BAO angular scales. We find that adopting large dithers (i.e., telescope pointing offsets) of amplitude close to the LSST field-of-view radius reduces artificial structure in the galaxy distribution by a factor of 10. We propose an observing…
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