Extragalactic Science, Cosmology and Galactic Archaeology with the Subaru Prime Focus Spectrograph (PFS)
Masahiro Takada, Richard Ellis, Masashi Chiba, Jenny E. Greene,, Hiroaki Aihara, Nobuo Arimoto, Kevin Bundy, Judith Cohen, Olivier Dor\'e,, Genevieve Graves, James E. Gunn, Timothy Heckman, Chris Hirata, Paul Ho,, Jean-Paul Kneib, Olivier Le F\`evre, Lihwai Lin, Surhud More

TL;DR
The Subaru PFS will enable comprehensive extragalactic, cosmological, and galactic archaeology surveys, providing precise measurements of dark energy, galaxy evolution, and Milky Way structure through multi-object spectroscopy over a wide redshift range.
Contribution
This paper presents the science case and survey plans for the Subaru PFS, highlighting its capabilities for cosmology and galactic archaeology in unprecedented detail.
Findings
Constrains dark energy via BAO with 3% distance precision
Measures structure growth with 6% accuracy using redshift-space distortions
Provides detailed chemo-dynamical data for Milky Way and M31 stars
Abstract
The Subaru Prime Focus Spectrograph (PFS) is a massively-multiplexed fiber-fed optical and near-infrared 3-arm spectrograph (N_fiber=2400, 380<lambda<1260nm, 1.3 degree diameter FoV), offering unique opportunities in survey astronomy. Here we summarize the science case feasible for a survey of Subaru 300 nights. We describe plans to constrain the nature of dark energy via a survey of emission line galaxies spanning a comoving volume of 9.3 (Gpc/h)^3 in the redshift range 0.8<z<2.4. In each of 6 redshift bins, the cosmological distances will be measured to 3% precision via BAO, and redshift-space distortions will be used to constrain structure growth to 6% precision. In the GA program, radial velocities and chemical abundances of stars in the Milky Way and M31 will be used to infer the past assembly histories of spiral galaxies and the structure of their dark matter halos. Data will be…
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