Testing LSST Dither Strategies for Survey Uniformity and Large-Scale Structure Systematics
Humna Awan (1), Eric Gawiser (1), Peter Kurczynski (1), R. Lynne Jones, (2), Hu Zhan (3), Nelson D. Padilla (4), Alejandra M. Mu\~noz Arancibia, (4,5), Alvaro Orsi (6), Sof\'ia A. Cora (7,8,9), and Peter Yoachim (2) ((1), Department of Physics, Astronomy, Rutgers University

TL;DR
This study evaluates various dithering strategies for LSST to optimize survey uniformity and minimize systematic errors in large-scale structure measurements, finding that certain dithers significantly reduce biases in galaxy counts.
Contribution
It systematically compares different dithering patterns and timescales, identifying strategies that improve survey uniformity and reduce large-scale structure systematics.
Findings
Per night and per visit dithers outperform per season.
Hexagonal lattice dithers are sensitive to implementation timescales.
Random dithers perform well across all timescales.
Abstract
The Large Synoptic Survey Telescope (LSST) will survey the southern sky from 2022--2032 with unprecedented detail. Since the observing strategy can lead to artifacts in the data, we investigate the effects of telescope-pointing offsets (called dithers) on the -band coadded 5 depth yielded after the 10-year survey. We analyze this survey depth for several geometric patterns of dithers (e.g., random, hexagonal lattice, spiral) with amplitude as large as the radius of the LSST field-of-view, implemented on different timescales (per season, per night, per visit). Our results illustrate that per night and per visit dither assignments are more effective than per season. Also, we find that some dither geometries (e.g., hexagonal lattice) are particularly sensitive to the timescale on which the dithers are implemented, while others like random dithers perform well on all timescales.…
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