The ESPRESSO Redshift Drift Experiment I -- High-resolution spectra of the Lyman-$\alpha$ forest of QSO J052915.80-435152.0
Andrea Trost, Catarina M. J. Marques, Stefano Cristiani, Guido Cupani, Simona Di Stefano, Valentina D'Odorico, Francesco Guarneri, Carlos J. A. P. Martins, Dinko Milakovi\'c, Luca Pasquini, Ricardo G\'enova Santos, Paolo Molaro, Michael T. Murphy, Nelson J. Nunes

TL;DR
This study demonstrates the feasibility of measuring cosmic redshift drift using high-resolution spectra of a quasar’s Lyman-alpha forest, achieving precision aligned with theoretical expectations and outlining the extensive observational effort needed for detection.
Contribution
First to assess the measurement precision of redshift drift using ESPRESSO spectra of a quasar, validating methods with simulations, and estimating the long-term observational campaign required.
Findings
Velocity drift measurement consistent with zero within uncertainties
Achieved measurement precision comparable to theoretical predictions
Estimated 54-year monitoring campaign needed for 99% detection probability
Abstract
The measurement of the temporal evolution in the redshift of distant objects, the redshift drift, is a probe of universal expansion and cosmology. We perform the first steps towards a measurement of such effect using the Lyman- forest in the spectra of bright quasars as a tracer of cosmological expansion. Our goal is to determine to which precision a velocity shift measurement can be carried out with the signal-to-noise (S/N) level currently available and whether this precision aligns with previous theoretical expectations. A precise assessment of the achievable measurement precision is fundamental for estimating the time required to carry out the whole project. We acquire 12 hours of ESPRESSO observations distributed over 0.875 years of the brightest quasar known, J052915.80-435152.0 (z=3.962), to obtain high-resolution spectra of the Lyman- forest, with median S/N of…
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