The Sloan Digital Sky Survey Reverberation Mapping Project: Technical Overview
Yue Shen, W. N. Brandt, Kyle S. Dawson, Patrick B. Hall, Ian D., McGreer, Scott F. Anderson, Yuguang Chen, Kelly D. Denney, Sarah, Eftekharzadeh, Xiaohui Fan, Yang Gao, Paul J. Green, Jenny E. Greene, Luis C., Ho, Keith Horne, Linhua Jiang, Brandon C. Kelly, Karen Kinemuchi

TL;DR
The SDSS-RM project is a large-scale, multi-object reverberation mapping survey of quasars that aims to measure black hole masses and quasar structure across a wide redshift range using spectroscopic and photometric monitoring.
Contribution
This paper presents the design, implementation, and expected scientific impact of the first major multi-object reverberation mapping survey targeting broad-line quasars at z>0.3.
Findings
Monitored 849 quasars over 7 square degrees with multi-epoch spectroscopy.
Collected over 30 epochs of spectroscopic data with ~4 day cadence.
Supported by photometric data from multiple telescopes to enhance lag detection.
Abstract
The Sloan Digital Sky Survey Reverberation Mapping project (SDSS-RM) is a dedicated multi-object RM experiment that has spectroscopically monitored a sample of 849 broad-line quasars in a single 7 deg field with the SDSS-III BOSS spectrograph. The RM quasar sample is flux-limited to i_psf=21.7 mag, and covers a redshift range of 0.1<z<4.5. Optical spectroscopy was performed during 2014 Jan-Jul dark/grey time, with an average cadence of ~4 days, totaling more than 30 epochs. Supporting photometric monitoring in the g and i bands was conducted at multiple facilities including the CFHT and the Steward Observatory Bok telescopes in 2014, with a cadence of ~2 days and covering all lunar phases. The RM field (RA, DEC=14:14:49.00, +53:05:00.0) lies within the CFHT-LS W3 field, and coincides with the Pan-STARRS 1 (PS1) Medium Deep Field MD07, with three prior years of multi-band PS1 light…
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