The low redshift Lyman-$\alpha$ Forest as a constraint for models of AGN feedback
Blakesley Burkhart, Megan Tillman, Alexander B. Gurvich, Simeon Bird,, Stephanie Tonnesen, Greg L. Bryan, Lars E. Hernquist, and Rachel S., Somerville

TL;DR
This study investigates how different models of AGN feedback in cosmological simulations affect low-redshift Lyman-alpha forest observables, demonstrating that these observables can serve as diagnostics for feedback models.
Contribution
It compares the impact of AGN feedback models in Illustris and TNG simulations on Lyman-alpha forest statistics, highlighting the potential of these observables to constrain feedback models.
Findings
TNG matches observed flux power spectrum better than Illustris.
Neither simulation reproduces the slope of the absorber distribution.
Lyman-alpha forest observables can help distinguish between feedback and UVB effects.
Abstract
We study the sensitivity of the Lyman- Forest observables, such as the column density distribution function (CDD), flux PDF, flux power spectrum, and line width distribution, to sub-grid models of active galactic nuclei (AGN) feedback using the Illustris and IllustrisTNG (TNG) cosmological simulations. The two simulations share an identical Ultraviolet Background (UVB) prescription and similar cosmological parameters, but TNG features an entirely reworked AGN feedback model. Due to changes in the AGN radio mode model, the original Illustris simulations have a factor of 2-3 fewer Lyman- absorbers than TNG at column densities cm. We compare the simulated forest statistics to UV data from the Cosmic Origins Spectrograph (COS) and find that neither simulation can reproduce the slope of the absorber distribution. Both Illustris and TNG…
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