Towards an automatic system for monitoring of CN2 and wind speed profiles with GeMS
E. Masciadri (1), B. Neichel (2), A. Guesalaga (3), A. Turchi (1) ((1), INAF - Osservatorio Astrofisico di Arcetri, Largo E. Fermi 5, 50125 Florence,, Italy (2) Aix Marseille Universite, CNRS, LAM (Laboratoire d'Astrophysique de, Marseille) UMR 7326, 13388, Marseille

TL;DR
This study evaluates the reliability of GeMS in monitoring CN2 and wind speed profiles by comparing its telemetry data with the Meso-Nh atmospheric model across 43 nights, aiming to enhance adaptive optics performance.
Contribution
The paper demonstrates that Meso-Nh model estimates can reliably supplement GeMS measurements for real-time AO system optimization.
Findings
High correlation between GeMS and Meso-Nh wind speed profiles.
Extended analysis confirms previous promising results.
Potential for operational use of Meso-Nh estimates in AO systems.
Abstract
Wide Field Adaptive Optics (WFAO) systems represent the more sophisticated AO systems available today at large telescopes. A critical aspect for these WFAO systems in order to deliver an optimised performance is the knowledge of the vertical spatiotemporal distribution of the CN2 and the wind speed. Previous studies (Cortes et al., 2012) already proved the ability of GeMS (the Gemini Multi-Conjugated AO system) in retrieving CN2 and wind vertical stratification using the telemetry data. To assess the reliability of the GeMS wind speed estimates a preliminary study (Neichel et al., 2014) compared wind speed retrieved from GeMS with that obtained with the atmospherical model Meso-Nh on a small sample of nights providing promising results. The latter technique is very reliable for the wind speed vertical stratification. The model outputs gave, indeed, an excellent agreement with a large…
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