Estimation of the lateral mis-registrations of the GRAVITY + adaptive optics system
Anthony Berdeu (LESIA), H. Bonnet (ESO), J.-B. Le Bouquin (IPAG), C., \'Edouard (LESIA), T. Gomes (CENTRA), P. Shchekaturov (ESO), R. Dembet, (LESIA), T. Paumard (LESIA), S. Oberti (ESO), J. Kolb (ESO), F. Millour, (OCA), P. Berio (OCA), O. Lai (UniCA, CNRS), F. Eisenhauer (MPE)

TL;DR
This paper presents novel perturbative and non-perturbative methods for estimating and correcting lateral mis-registrations in the complex adaptive optics system of GRAVITY+, validated through simulations and bench tests, enhancing AO system calibration.
Contribution
It introduces two new methods for monitoring and correcting lateral mis-registrations in AO systems, suitable for complex and future large-telescope systems.
Findings
Robust open-loop estimation of mis-registrations with sub-subaperture resolution.
Effective closed-loop correction reducing mis-registration errors.
Methods are adaptable to various AO instruments and scalable for next-generation telescopes.
Abstract
Context. The GRAVITY+ upgrade implies a complete renewal of its adaptive optics (AO) systems. Its complex design, featuring moving components between the deformable mirrors and the wavefront sensors, requires the monitoring and auto-calibrating of the lateral mis-registrations of the system while in operation. Aims. For preset and target acquisition, large lateral registration errors must be assessed in open loop to bring the system to a state where the AO loop closes. In closed loop, these errors must be monitored and corrected, without impacting the science. Methods. With respect to the first requirement, our method is perturbative, with two-dimensional modes intentionally applied to the system and correlated to a reference interaction matrix. For the second requirement, we applied a non-perturbative approach that searches for specific patterns in temporal correlations in the closed…
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Taxonomy
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