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Fast reconstruction and prediction of frozen flow turbulence based on structured Kalman filtering
Author(s) -
Rufus Fraanje,
Justin K. Rice,
Michel Verhaegen,
Niek Doelman
Publication year - 2010
Publication title -
journal of the optical society of america a
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.803
H-Index - 158
eISSN - 1520-8532
pISSN - 1084-7529
DOI - 10.1364/josaa.27.00a235
Subject(s) - wavefront , kalman filter , computer science , turbulence , adaptive optics , computational complexity theory , algorithm , computation , filter (signal processing) , grid , flow (mathematics) , mathematical optimization , optics , mathematics , physics , artificial intelligence , computer vision , geometry , thermodynamics
Efficient and optimal prediction of frozen flow turbulence using the complete observation history of the wavefront sensor is an important issue in adaptive optics for large ground-based telescopes. At least for the sake of error budgeting and algorithm performance, the evaluation of an accurate estimate of the optimal performance of a particular adaptive optics configuration is important. However, due to the large number of grid points, high sampling rates, and the non-rationality of the turbulence power spectral density, the computational complexity of the optimal predictor is huge. This paper shows how a structure in the frozen flow propagation can be exploited to obtain a state-space innovation model with a particular sparsity structure. This sparsity structure enables one to efficiently compute a structured Kalman filter. By simulation it is shown that the performance can be improved and the computational complexity can be reduced in comparison with auto-regressive predictors of low order.

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