Ground-Based Transmission Spectroscopy with FORS2: A featureless optical transmission spectrum and detection of H$_2$O for the ultra-hot Jupiter WASP-103b
J. Wilson (1), N. P. Gibson (2), N. Nikolov (3), S. Constantinou (4),, N. Madhusudhan (4), J. Goyal (5), J. K. Barstow (6), A. L. Carter (7), E. J., W. de Mooij (1), B. Drummond (7), T. Mikal-Evans (8), C. Helling (9), N. J., Mayne (7)

TL;DR
This study used ground-based FORS2 observations to analyze the atmosphere of exoplanet WASP-103b, finding a featureless optical spectrum but detecting water vapor when combined with other data, highlighting the potential and challenges of ground-based exoplanet spectroscopy.
Contribution
First ground-based optical transmission spectrum of WASP-103b showing a featureless spectrum and combined atmospheric retrieval revealing water vapor presence.
Findings
No Na absorption detected in optical spectrum.
Water vapor detected at 4.0σ significance in combined data.
Ground-based spectroscopy can detect atmospheric features despite systematics.
Abstract
We report ground-based transmission spectroscopy of the highly irradiated and ultra-short period hot-Jupiter WASP-103b covering the wavelength range 400-600 nm using the FORS2 instrument on the Very Large Telescope. The light curves show significant time-correlated noise which is mainly invariant in wavelength and which we model using a Gaussian process. The precision of our transmission spectrum is improved by applying a common-mode correction derived from the white light curve, reaching typical uncertainties in transit depth of 2x10 in wavelength bins of 15 nm. After correction for flux contamination from a blended companion star, our observations reveal a featureless spectrum across the full range of the FORS2 observations and we are unable to confirm the Na absorption previously inferred using Gemini/GMOS or the strong Rayleigh scattering observed using…
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