4.7 Article

RETURN TO [Log-] NORMALCY: RETHINKING QUENCHING, THE STAR FORMATION MAIN SEQUENCE, AND PERHAPS MUCH MORE

Journal

ASTROPHYSICAL JOURNAL
Volume 832, Issue 1, Pages -

Publisher

IOP PUBLISHING LTD
DOI: 10.3847/0004-637X/832/1/7

Keywords

galaxies: evolution; galaxies: formation; galaxies: luminosity function, mass function; galaxies: star formation

Ask authors/readers for more resources

Knowledge of galaxy evolution rests on cross-sectional observations of different objects at different times. Understanding of galaxy evolution rests on longitudinal interpretations of how these data relate to individual objects moving through time. The connection between the two is often assumed to be clear, but we use a simple physics-free model to show that it is not and that exploring its nuances can yield new insights. Comprising nothing more than 2094 loosely constrained lognormal star formation histories (SFHs), the model faithfully reproduces the following data it was not designed to match: stellar mass functions at z <= 8; the slope of the star formation rate/stellar mass relation (the SFR Main Sequence) at z <= 6; the mean sSFR(equivalent to SFR/M-*) of low-mass galaxies at z <= 7; fast- and slow-track quenching; downsizing; and a correlation between formation timescale and sSFR(M-*, t) similar to results from simulations that provides a natural connection to bulge growth. We take these findings-which suggest that quenching is the natural downturn of all SFHs affecting galaxies at rates/times correlated with their densities-to mean that: (1) models in which galaxies are diversified on Hubble timescales by something like initial conditions rival the dominant grow-and-quench framework as good descriptions of the data; or (2) absent spatial information, many metrics of galaxy evolution are too undiscriminating-if not inherently misleading-to confirm a unique explanation. We outline future tests of our model but stress that, even if ultimately incorrect, it illustrates how exploring different paradigms can aid learning and, we hope, more detailed modeling efforts.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available