Assessing the Impact of Source Confusion for GREX-PLUS based on Deep JWST NIRCam Imaging
Yoshiaki Ono, Akio K. Inoue, Yuma Sugahara, Takeshi Hashigaya, Fumihide Iwamuro, Taiki Bessho, Yuji Ikeda, Matthew L. N. Ashby, Yuichi Harikane, Jarron Leisenring, Takao Nakagawa, and Howard A. Smith

TL;DR
This study evaluates how source confusion affects the depth and completeness of GREX-PLUS infrared observations by simulating images based on JWST data, revealing limitations and feasibility for faint galaxy studies.
Contribution
It provides a detailed analysis of source confusion impacts on GREX-PLUS imaging depth and completeness, using simulations based on JWST data and Monte Carlo methods.
Findings
GREX-PLUS images are shallower than JWST images due to unresolved sources and PSF wings.
Depth improvement continues with longer integrations but at diminishing returns.
Confusion reduces detection completeness, but statistical studies of faint galaxies remain feasible.
Abstract
We investigate the effects of source confusion expected in observations with GREX-PLUS, a JAXA L-class space infrared telescope mission candidate with a wide-field infrared camera covering 2-8 um with a field of view of 0.50 deg. For the deep imaging band near 4 um, we calculate the GREX-PLUS PSF and ghost based on the latest optical design, and consider two representative imaging performance cases with PSF FWHM values of 0.9 and 1.2 arcsec. We construct simulated GREX-PLUS images at different depths by convolving JWST NIRCam imaging data from JADES, GLASS, CEERS, and COSMOS-Web with the PSF+ghost kernel. Comparing the limiting magnitudes estimated from random aperture photometry using the same aperture sizes, we find that the simulated GREX-PLUS images are shallower than the original JWST images, with larger deviations for deeper original JWST images. This likely reflects…
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