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Empirical Contrast Model for High-Contrast Imaging -- A VLT/SPHERE Case Study

Authors :
Courtney-Barre, Benjamin
De Rosa, Robert
Kokotanekova, Rosita
Romero, Cristian
Jones, Matias
Milli, Julien
Wahhaj, Zahed
Source :
A&A 680, A34 (2023)
Publication Year :
2023

Abstract

The ability to accurately predict the contrast achieved from high contrast imagers is important for efficient scheduling and quality control measures in modern observatories. We aim to consistently predict and measure the raw contrast achieved by SPHERE/IRDIS on a frame by frame basis to improve the efficiency and scientific yield with SPHERE at the Very Large Telescope (VLT).Contrast curves were calculated for over 5 years of archival data using the most common SPHERE/IRDIS coronagraphic mode in the H2/H3 dual band filter, consisting of approximately 80,000 individual frames. These were merged and interpolated with atmospheric data to create a large data-base of contrast curves with associated features. An empirical power law model for contrast, motivated by physical considerations, was then trained and finally tested on an out-of-sample test data set. At an angular separation of 300 mas, the contrast model achieved a mean (out-of-sample) test error of 0.13 magnitudes with the residual 5-95% percentiles between -0.23 and 0.64 magnitude respectively. The models test set root mean square error (RMSE) between 250-600 mas was between 0.31 - 0.40 magnitudes which is equivalent with other state-of-the-art contrast models presented in the literature. In general, the model performed best for targets between 5-9 G-band magnitude, with degraded performance for targets outside this range. This model is currently being incorporated into the Paranal SCUBA software for first level quality control and real time scheduling support.

Details

Database :
arXiv
Journal :
A&A 680, A34 (2023)
Publication Type :
Report
Accession number :
edsarx.2310.00882
Document Type :
Working Paper
Full Text :
https://doi.org/10.1051/0004-6361/202346984