Litcius/Paper detail

Predictive control for adaptive optics using neural networks

Alison Wong, Barnaby Norris, Peter Tuthill, R. Scalzo, Julien Lozi, Sébastien Vievard, Olivier Guyon

2021Journal of Astronomical Telescopes Instruments and Systems28 citationsDOIOpen Access PDF

Abstract

Adaptive optics (AO) has become an indispensable tool for ground-based telescopes to mitigate atmospheric seeing and obtain high angular resolution observations. Predictive control aims to overcome latency in AO systems: the inevitable time delay between wavefront measurement and correction. A current method of predictive control uses the empirical orthogonal functions (EOFs) framework borrowed from weather prediction, but the advent of modern machine learning and the rise of neural networks (NNs) offer scope for further improvement. Here, we evaluate the potential application of NNs to predictive control and highlight the advantages that they offer. We first show their superior regularization over the standard truncation regularization used by the linear EOF method with on-sky data before demonstrating the NNs’ capacity to model nonlinearities on simulated data. This is highly relevant to the operation of pyramid wavefront sensors (PyWFSs), as the handling of nonlinearities would enable a PyWFS to be used with low modulation and deliver extremely sensitive wavefront measurements.

Topics & Concepts

Adaptive opticsArtificial neural networkComputer scienceOpticsArtificial intelligencePhysicsAdaptive optics and wavefront sensingAdvanced optical system designOptical Systems and Laser Technology
Predictive control for adaptive optics using neural networks | Litcius