The time-scales probed by star formation rate indicators for realistic, bursty star formation histories from the FIRE simulations
Jos\'e A. Flores Vel\'azquez, Alexander B. Gurvich, Claude-Andr\'e, Faucher-Gigu\`ere, James S. Bullock, Tjitske K. Starkenburg, Jorge Moreno,, Alexandres Lazar, Francisco J. Mercado, Jonathan Stern, Martin Sparre,, Christopher C. Hayward, Andrew Wetzel, Kareem El-Badry

TL;DR
This study uses FIRE simulations to analyze how star formation rate indicators like Hα and FUV respond to bursty and steady star formation histories, revealing that FUV is sensitive to longer timescales during bursts, while Hα remains consistently short-term.
Contribution
It provides new insights into the time-scales of SFR indicators in realistic, bursty star formation histories from cosmological simulations.
Findings
FUV time-scale varies from ~10 Myr to >100 Myr during bursts.
Hα SFR indicator remains ~5 Myr regardless of burstiness.
Ratios of Hα to FUV SFRs can diagnose star formation burstiness.
Abstract
Understanding the rate at which stars form is central to studies of galaxy formation. Observationally, the star formation rates (SFRs) of galaxies are measured using the luminosity in different frequency bands, often under the assumption of a time-steady SFR in the recent past. We use star formation histories (SFHs) extracted from cosmological simulations of star-forming galaxies from the FIRE project to analyze the time-scales to which the H and far-ultraviolet (FUV) continuum SFR indicators are sensitive. In these simulations, the SFRs are highly time variable for all galaxies at high redshift, and continue to be bursty to z=0 in dwarf galaxies. When FIRE SFHs are partitioned into their bursty and time-steady phases, the best-fitting FUV time-scale fluctuates from its ~10 Myr value when the SFR is time-steady to >~100 Myr immediately following particularly extreme bursts of…
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