Tracing the Mass-Dependent Star Formation History of Late-Type Galaxies using X-ray Emission: Results from the Chandra Deep Fields
B. D. Lehmer, W. N. Brandt, D. M. Alexander, E. F. Bell, A. E., Hornschemeier, D. H. McIntosh, F. E. Bauer, R. Gilli, V. Mainieri, D. P., Schneider, J. D. Silverman, A. T. Steffen, P. Tozzi, C. Wolf

TL;DR
This study investigates the evolution of X-ray emission in late-type galaxies over the last 9 billion years, revealing how star formation activity correlates with X-ray luminosity and stellar mass across different redshifts.
Contribution
It provides new insights into the mass-dependent star formation history of late-type galaxies using X-ray stacking in deep field surveys, extending analyses to higher redshifts.
Findings
X-ray to optical and stellar mass ratios increase significantly from z=0 to z=1.4.
X-ray emission remains a reliable indicator of star formation activity up to z=1.4.
Star formation activity per unit stellar mass increases with decreasing stellar mass at z=0.2--1.
Abstract
We report on the X-ray evolution over the last ~9 Gyr of cosmic history (i.e., since z = 1.4) of late-type galaxy populations in the Chandra Deep Field-North and Extended Chandra Deep Field-South (CDF-N and E-CDF-S, respectively; jointly CDFs) survey fields. Our late-type galaxy sample consists of 2568 galaxies, which were identified using rest-frame optical colors and HST morphologies. We utilized X-ray stacking analyses to investigate the X-ray emission from these galaxies, emphasizing the contributions from normal galaxies that are not dominated by active galactic nuclei (AGNs). Over this redshift range, we find significant increases (factors of ~5--10) in the X-ray--to--optical mean luminosity ratio (L_X/L_B) and the X-ray--to--stellar-mass mean ratio (L_X/M*) for galaxy populations selected by L_B and M*, respectively. When analyzing galaxy samples selected via SFR, we find that…
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