A Pilot Study for the CSST Slitless Spectroscopic Quasar Survey Based on Mock Data
Yuxuan Pang, Xue-Bing Wu, Yuming Fu, Rui Zhu, Bing Lyu, Huimei Wang,, Xiaotong Feng

TL;DR
This study demonstrates that the CSST slitless spectroscopic survey can effectively identify and characterize quasars across a wide redshift range, promising significant contributions to AGN research and cosmology.
Contribution
The paper introduces a pipeline using mock data and neural networks for quasar identification, redshift measurement, and physical property estimation in the CSST survey.
Findings
99% accuracy in quasar-star-galaxy separation
90% of quasars have redshift errors within 0.002
Potential to discover about 0.9 million new quasars
Abstract
The wide survey of the Chinese Space Station Telescope (CSST) will observe a large field of 17,500 . The GU, GV, and GI grism observations of CSST will cover a wavelength range from 2550 to 10000\r{A} at a resolution of and a depth of about 22 AB magnitude for the continuum. In this paper, we present a pipeline to identify quasars and measure their physical properties with the CSST mock data. We simulate the raw images and extract the one-dimensional grism spectra for quasars, galaxies, and stars with the r-band magnitudes of using the CSST Cycle 6 simulation code. Using a convolution neural network, we separate quasars from stars and galaxies. We measure the redshifts by identifying the strong emission lines of quasars. We also fit the 1D slitless spectra with QSOFITMORE to estimate the black hole masses and Eddington ratios. Our…
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Taxonomy
TopicsCalibration and Measurement Techniques · Astronomy and Astrophysical Research
