Abstract
We present an emulator that accurately predicts the power spectrum of galaxies in redshift space as a function of cosmological parameters. Our emulator is based on a second-order Lagrangian bias expansion that is displaced to Eulerian space using cosmological N-body simulations. Redshift space distortions are then imprinted using the non-linear velocity field of simulated particles and haloes. We build the emulator using a forward neural network trained with the simulations of the BACCO project, which covers an eight-dimensional parameter space including massive neutrinos and dynamical dark energy. We show that our emulator provides unbiased cosmological constraints from the monopole, quadrupole, and hexadecapole of a mock galaxy catalogue that mimics the BOSS-CMASS sample down to non-linear scales (k ∼ 0.6hMpc−1). This work opens up the possibility of robustly extracting cosmological information from small scales using observations of the large-scale structure of the universe.
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CITATION STYLE
Ibañez, M. P., Angulo, R. E., Zennaro, M., Stücker, J., Contreras, S., Aricò, G., & Maion, F. (2023). The bacco simulation project: bacco hybrid Lagrangian bias expansion model in redshift space. Monthly Notices of the Royal Astronomical Society, 520(3), 3725–3741. https://doi.org/10.1093/mnras/stad368
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