Back to Search Start Over

Data-driven subspace predictive control: lab demonstration and future outlook

Authors :
Shaklan, Stuart B.
Ruane, Garreth J.
Haffert, Sebastiaan Y.
Males, Jared R.
Close, Laird M.
Van Gorkom, Kyle
Long, Joseph D.
Hedglen, Alexander D.
Guyon, Olivier
Schatz, Lauren
Kautz, Maggie
Lumbres, Jennifer
Rodack, Alexander
Knight, Justin M.
Sun, He
Fogarty, Kevin
Shaklan, Stuart B.
Ruane, Garreth J.
Haffert, Sebastiaan Y.
Males, Jared R.
Close, Laird M.
Van Gorkom, Kyle
Long, Joseph D.
Hedglen, Alexander D.
Guyon, Olivier
Schatz, Lauren
Kautz, Maggie
Lumbres, Jennifer
Rodack, Alexander
Knight, Justin M.
Sun, He
Fogarty, Kevin
Publication Year :
2021

Abstract

The search for exoplanets is pushing adaptive optics systems on ground-based telescopes to their limits. A major limitation is the temporal error of the adaptive optics systems. The temporal error can be reduced with predictive control. We use a linear data-driven integral predictive controller that learns while running in closed-loop. This is a new algorithm that has recently been developed. The controller is tested in the lab with MagAO-X under various conditions, where we gain several orders of magnitude in contrast compared to a classic integrator. We will present the lab results, and we will show how this controller can be implemented with current hardware for future extremely large telescopes.

Details

Database :
OAIster
Notes :
application/pdf, Data-driven subspace predictive control: lab demonstration and future outlook, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1334067837
Document Type :
Electronic Resource