Fried Parameter Estimation from Single Wavefront Sensor Image with Artificial Neural Networks
Journal:
arXiv
Published Date:
Apr 23, 2025
Abstract
Atmospheric turbulence degrades the quality of astronomical observations in
ground-based telescopes, leading to distorted and blurry images. Adaptive
Optics (AO) systems are designed to counteract these effects, using atmospheric
measurements captured by a wavefront sensor to make real-time corrections to
the incoming wavefront. The Fried parameter, r0, characterises the strength of
atmospheric turbulence and is an essential control parameter for optimising the
performance of AO systems and more recently sky profiling for Free Space
Optical (FSO) communication channels. In this paper, we develop a novel
data-driven approach, adapting machine learning methods from computer vision
for Fried parameter estimation from a single Shack-Hartmann or pyramid
wavefront sensor image. Using these data-driven methods, we present a detailed
simulation-based evaluation of our approach using the open-source COMPASS AO
simulation tool to evaluate both the Shack-Hartmann and pyramid wavefront
sensors. Our evaluation is over a range of guide star magnitudes, and realistic
noise, atmospheric and instrument conditions. Remarkably, we are able to
develop a single network-based estimator that is accurate in both open and
closed-loop AO configurations. Our method accurately estimates the Fried
parameter from a single WFS image directly from AO telemetry to a few
millimetres. Our approach is suitable for real time control, exhibiting 0.83ms
r0 inference times on retail NVIDIA RTX 3090 GPU hardware, and thereby
demonstrating a compelling economic solution for use in real-time instrument
control.