Potential scientific synergies in weak lensing studies between the CSST and Euclid space probes
D.Z. Liu, X.M. Meng, X.Z. Er, Z.H. Fan, M. Kilbinger, G.L. Li, R. Li,, T. Schrabback, D. Scognamiglio, H.Y. Shan, C. Tao, Y.S. Ting, J. Zhang, S.H., Cheng, S. Farrens, L.P. Fu, H. Hildebrandt, X. Kang, J.P. Kneib, X.K. Liu, Y., Mellier, R. Nakajima, P. Schneider, J.L. Starck

TL;DR
This study explores how the upcoming Euclid and CSST space missions can synergistically improve weak lensing cosmology by combining their data for better photometric redshifts, calibration, and blending analysis.
Contribution
It demonstrates the potential of combining Euclid and CSST data to enhance weak lensing measurements, especially in calibrating biases and improving photometric redshift accuracy.
Findings
Euclid and CSST combined can achieve $\sigma_{ m NMAD} \\approx 0.04$ for photo-z.
CSST data can calibrate Euclid's color-gradient biases to 0.1%.
The joint data coverage simplifies photometry and reduces blending issues.
Abstract
Aims. With the next generation of large surveys coming to the stage of observational cosmology soon, it is important to explore their potential synergies and to maximise their scientific outcomes. In this study, we aim to investigate the complementarity of the two upcoming space missions Euclid and the China Space Station Telescope (CSST), focusing on weak lensing (WL) cosmology. In particular, we analyse the photometric redshifts (photo-zs) and the galaxy blending effects. For Euclid, WL measurements suffer from chromatic PSF effects. For this, CSST can provide valuable information for Euclid to obtain more accurate PSF, and to calibrate the color and color-gradient biases for WL measurements. Methods. We create image simulations for different surveys, and quantify the photo-z performance. For blending analyses, we employ high-resolution HST/CANDELS data to mock Euclid, CSST, and an…
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