Subaru High-z Exploration of Low-Luminosity Quasars (SHELLQs). II. Discovery of 32 Quasars and Luminous Galaxies at 5.7 < z < 6.8
Yoshiki Matsuoka, Masafusa Onoue, Nobunari Kashikawa, Kazushi Iwasawa,, Michael A. Strauss, Tohru Nagao, Masatoshi Imanishi, Chien-Hsiu Lee, Masayuki, Akiyama, Naoko Asami, James Bosch, Sebastien Foucaud, Hisanori Furusawa,, Tomotsugu Goto, James E. Gunn, Yuichi Harikane

TL;DR
This paper reports the discovery of 32 new high-redshift quasars and luminous galaxies at z between 5.7 and 6.8, expanding the known population and exploring new parameter spaces in the early universe.
Contribution
It presents the identification of a significant number of low-luminosity high-z quasars and luminous galaxies using the Subaru HSC survey, revealing objects with unique spectral features.
Findings
Discovered 32 new high-z quasars and luminous galaxies
Identified quasars with lower luminosity than previously known
Found high-luminosity high-z galaxies with unique spectral properties
Abstract
We present spectroscopic identification of 32 new quasars and luminous galaxies discovered at 5.7 < z < 6.8. This is the second in a series of papers presenting the results of the Subaru High-z Exploration of Low-Luminosity Quasars (SHELLQs) project, which exploits the deep multi-band imaging data produced by the Hyper Suprime-Cam (HSC) Subaru Strategic Program survey. The photometric candidates were selected by a Bayesian probabilistic algorithm, and then observed with spectrographs on the Gran Telescopio Canarias and the Subaru Telescope. Combined with the sample presented in the previous paper, we have now identified 64 HSC sources over about 430 deg2, which include 33 high-z quasars, 14 high-z luminous galaxies, 2 [O III] emitters at z ~ 0.8, and 15 Galactic brown dwarfs. The new quasars have considerably lower luminosity (M1450 ~ -25 to -22 mag) than most of the previously known…
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