Wave-front error breakdown in LGS MOAO validated on-sky by CANARY
O.A. Martin, \'E. Gendron., G. Rousset, D. Gratadour, F., Vidal, T. J. Morris, A. G. Basden, R. M. Myers, C.M. Correia and, D. Henry

TL;DR
This paper presents a detailed wave-front error breakdown analysis of the CANARY MOAO system on-sky, validating models and quantifying performance improvements over GLAO under real observing conditions.
Contribution
It provides a comprehensive on-sky validation of wave-front error models for LGS MOAO, including a detailed vertical error decomposition and comparison of analytic and measured residual phase variances.
Findings
CANARY achieved Strehl ratios of 30.1%, 21.4%, and 17.1% in SCAO, MOAO, and GLAO modes.
99% correlation between analytic and measured residual phase variances over 4,500 samples.
MOAO provides significant altitude turbulence compensation compared to GLAO.
Abstract
CANARY is the multi-object adaptive optics (MOAO) on-sky pathfinder developed in the perspective of Multi-Object Spectrograph on Extremely Large Telescopes~(ELTs). In 2013, CANARY was operated on-sky at the William Herschel telescope~(WHT), using three off-axis natural guide stars~(NGS) and four off-axis Rayleigh laser guide stars~(LGS), in open-loop, with the on-axis compensated turbulence observed with a H-band imaging camera and a Truth wave-front sensor~(TS) for diagnostic purposes. Our purpose is to establish a reliable and accurate wave-front error breakdown for LGS MOAO. This will enable a comprehensive analysis of \cana on-sky results and provide tools for validating simulations of MOAO systems for ELTs. To evaluate the MOAO performance, we compared the CANARY on-sky results running in MOAO, in Single Conjugated Adaptive Optics~(SCAO) and in Ground Layer Adaptive Optics~(GLAO)…
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