Decoupled Black Hole Accretion and Quenching: The Relationship Between BHAR, SFR, and Quenching in Milky Way and Andromeda-mass Progenitors Since z = 2.5
Michael J. Cowley, Lee R. Spitler, Ryan F. Quadri, Andy D. Goulding,, Casey Papovich, Kim-Vy H. Tran, Ivo Labbe, Leo Alcorn, Rebecca J. Allen, Ben, Forrest, Karl Glazebrook, Glenn G. Kacprzak, Glenn Morrison, Themiya, Nanayakkara, Caroline M. S. Straatman, Adam R. Tomczak

TL;DR
This study examines the evolving relationship between black hole accretion and star formation in Milky Way and Andromeda-mass galaxy progenitors from redshift 2.5 to 0.2, challenging previous assumptions about AGN feedback's role in quenching.
Contribution
It provides the first detailed analysis of BHAR/SFR evolution in progenitor-matched samples, revealing a non-flat relationship and questioning AGN feedback as the primary quenching mechanism.
Findings
BHAR/SFR ratio increases with redshift for both progenitor types.
MW-mass progenitors show a steeper BHAR/SFR slope than M31-mass progenitors.
BHAR/SFR ratios do not correlate with quenching rates.
Abstract
We investigate the relationship between the black hole accretion rate (BHAR) and star-formation rate (SFR) for Milky Way (MW) and Andromeda (M31)-mass progenitors from z = 0.2 - 2.5. We source galaxies from the Ks-band selected ZFOURGE survey, which includes multi-wavelenth data spanning 0.3 - 160um. We use decomposition software to split the observed SEDs of our galaxies into their active galactic nuclei (AGN) and star-forming components, which allows us to estimate BHARs and SFRs from the infrared (IR). We perform tests to check the robustness of these estimates, including a comparison to BHARs and SFRs derived from X-ray stacking and far-IR analysis, respectively. We find as the progenit- ors evolve, their relative black hole-galaxy growth (i.e. their BHAR/SFR ratio) increases from low to high redshift. The MW-mass progenitors exhibit a log-log slope of 0.64 +/- 0.11, while the…
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