The CAMELS project: Expanding the galaxy formation model space with new ASTRID and 28-parameter TNG and SIMBA suites
We present CAMELS-ASTRID, the third suite of hydrodynamical simulations in the Cosmology and Astrophysics with MachinE Learning (CAMELS) project, along with new simulation sets that extend the model parameter space based on the previous frameworks of CAMELS-TNG and CAMELS-SIMBA, to provide broader t...
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Zusammenfassung: | We present CAMELS-ASTRID, the third suite of hydrodynamical simulations in
the Cosmology and Astrophysics with MachinE Learning (CAMELS) project, along
with new simulation sets that extend the model parameter space based on the
previous frameworks of CAMELS-TNG and CAMELS-SIMBA, to provide broader training
sets and testing grounds for machine-learning algorithms designed for
cosmological studies. CAMELS-ASTRID employs the galaxy formation model
following the ASTRID simulation and contains 2,124 hydrodynamic simulation runs
that vary 3 cosmological parameters ($\Omega_m$, $\sigma_8$, $\Omega_b$) and 4
parameters controlling stellar and AGN feedback. Compared to the existing TNG
and SIMBA simulation suites in CAMELS, the fiducial model of ASTRID features
the mildest AGN feedback and predicts the least baryonic effect on the matter
power spectrum. The training set of ASTRID covers a broader variation in the
galaxy populations and the baryonic impact on the matter power spectrum
compared to its TNG and SIMBA counterparts, which can make machine-learning
models trained on the ASTRID suite exhibit better extrapolation performance
when tested on other hydrodynamic simulation sets. We also introduce extension
simulation sets in CAMELS that widely explore 28 parameters in the TNG and
SIMBA models, demonstrating the enormity of the overall galaxy formation model
parameter space and the complex non-linear interplay between cosmology and
astrophysical processes. With the new simulation suites, we show that building
robust machine-learning models favors training and testing on the largest
possible diversity of galaxy formation models. We also demonstrate that it is
possible to train accurate neural networks to infer cosmological parameters
using the high-dimensional TNG-SB28 simulation set. |
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DOI: | 10.48550/arxiv.2304.02096 |