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    Self-optimizing adaptive optics control with reinforcement learning for high-contrast imaging

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    Author
    Landman, R.
    Haffert, S.Y.
    Radhakrishnan, V.M.
    Keller, C.U.
    Affiliation
    Unversity of Arizona, Steward Observatory
    Issue Date
    2021
    Keywords
    adaptive optics
    high contrast imaging
    machine learning
    predictive control
    reinforcement learning
    
    Metadata
    Show full item record
    Publisher
    SPIE
    Citation
    Landman, R., Haffert, S. Y., Radhakrishnan, V. M., & Keller, C. U. (2021). Self-optimizing adaptive optics control with reinforcement learning for high-contrast imaging. Journal of Astronomical Telescopes, Instruments, and Systems.
    Journal
    Journal of Astronomical Telescopes, Instruments, and Systems
    Rights
    Copyright © 2021 SPIE.
    Collection Information
    This item from the UA Faculty Publications collection is made available by the University of Arizona with support from the University of Arizona Libraries. If you have questions, please contact us at repository@u.library.arizona.edu.
    Abstract
    Current and future high-contrast imaging instruments require extreme adaptive optics systems to reach contrasts necessary to directly imaged exoplanets. Telescope vibrations and the temporal error induced by the latency of the control loop limit the performance of these systems. One way to reduce these effects is to use predictive control. We describe how model-free reinforcement learning can be used to optimize a recurrent neural network controller for closed-loop predictive control. First, we verify our proposed approach for tip-tilt control in simulations and a lab setup. The results show that this algorithm can effectively learn to mitigate vibrations and reduce the residuals for power-law input turbulence as compared to an optimal gain integrator. We also show that the controller can learn to minimize random vibrations without requiring online updating of the control law. Next, we show in simulations that our algorithm can also be applied to the control of a high-order deformable mirror. We demonstrate that our controller can provide two orders of magnitude improvement in contrast at small separations under stationary turbulence. Furthermore, we show more than an order of magnitude improvement in contrast for different wind velocities and directions without requiring online updating of the control law. © 2021 Society of Photo-Optical Instrumentation Engineers (SPIE).
    Note
    Immediate access
    ISSN
    2329-4124
    DOI
    10.1117/1.JATIS.7.3.039002
    Version
    Final published version
    ae974a485f413a2113503eed53cd6c53
    10.1117/1.JATIS.7.3.039002
    Scopus Count
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    UA Faculty Publications

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