The Subaru/XMM-Newton Deep Survey (SXDS) - V. Optically Faint Variable Object Survey
Tomoki Morokuma, Mamoru Doi, Naoki Yasuda, Masayuki Akiyama, Kazuhiro, Sekiguchi, Hisanori Furusawa, Yoshihiro Ueda, Tomonori Totani, Takeshi Oda,, Tohru Nagao, Nobunari Kashikawa, Takashi Murayama, Masami Ouchi, Mike G., Watson, Michael W. Richmond, Christopher Lidman

TL;DR
This study conducted a deep, multi-epoch optical survey over nearly 1 square degree, identifying and classifying 1040 faint variable objects, including stars, supernovae, and active galactic nuclei, with implications for understanding their populations and distributions.
Contribution
First statistical sample of optically faint variable objects at depths achieved with 8-10m class telescopes, providing detailed classifications and density estimates.
Findings
Detected 1040 variable objects in the SXDF.
Variable object densities: stars 120, SNe 489, AGN 579 per deg$^2$.
Bimodal color-magnitude distribution of variable stars.
Abstract
We present our survey for optically faint variable objects using multi-epoch (8-10 epochs over 2-4 years) -band imaging data obtained with Subaru Suprime-Cam over 0.918 deg in the Subaru/XMM-Newton Deep Field (SXDF). We found 1040 optically variable objects by image subtraction for all the combinations of images at different epochs. This is the first statistical sample of variable objects at depths achieved with 8-10m class telescopes or HST. The detection limit for variable components is mag. These variable objects were classified into variable stars, supernovae (SNe), and active galactic nuclei (AGN), based on the optical morphologies, magnitudes, colors, and optical-mid-infrared colors of the host objects, spatial offsets of variable components from the host objects, and light curves. Detection completeness was examined by simulating light curves for…
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