Measuring Baryon Acoustic Oscillations along the line of sight with photometric redshifs: the PAU survey
N. Benitez, E. Gaztanaga, R. Miquel, F. Castander, M. Moles, M., Crocce, A. Fernandez-Soto, P. Fosalba, F. Ballesteros, J. Campa, L., Cardiel-Sas, J. Castilla, D. Cristobal-Hornillos, M. Delfino, E. Fernandez,, C. Fernandez-Sopuerta, J. Garcia-Bellido, J.A. Lobo, V.J. Martinez

TL;DR
The paper proposes a new photometric survey method using about 40 filters to measure radial BAO with high redshift precision, aiming to improve dark energy constraints and provide extensive galaxy redshift data.
Contribution
It introduces a practical implementation of a galaxy survey with a novel filter system to achieve precise redshifts for BAO measurement along the line of sight.
Findings
Achieves redshift precision of sigma_z ~0.003(1 + z) for bright, red galaxies.
Plans to survey 8000 sq. deg. and measure over 14 million galaxy redshifts.
Expected to constrain dark energy parameters with about 5% accuracy.
Abstract
Baryon Acoustic Oscillations (BAO) provide a standard ruler of known physical length, making it a promising probe of the nature of dark energy. The detection of BAO requires measuring galaxy positions and redshifts. "Transversal" (angular distance) BAO measure the angular size of this scale, while "line-of-sight" (or "radial") BAO require precise redshifts, but provide a direct measurement of the Hubble parameter at different redshifts, a more sensitive probe of dark energy. The main goal of this paper is to show that a precision of sigma_z ~0.003(1 + z) is sufficient to measure BAO in the radial direction. This precision can be achieved for bright, red galaxies, by using a filter system comprising about 40 filters, each with a width of ~100 A, from ~ 4000 A to ~ 8000 A, supplemented by two broad-band filters. We describe a practical implementation, a new galaxy survey, PAU, to be…
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