Reinforcement learning for phasing giant telescopes
The Giant Magellan Telescope (GMT) requires real-time phasing of its primary mirror segments. Each instrument of GMT is required to provide phasing telemetry from guide-star images.
Research themes
Project status
Content navigation
About

The Giant Magellan Telescope (GMT) requires real-time phasing of its primary mirror segments. Each instrument of GMT is required to provide phasing telemetry from guide-star images. The required phasing data is embedded in these images in a highly non-linear way. Neural-network based solutions ought to be capable of extracting this data efficiently, and in a way that is tuned online to perform optimally under time-varying conditions.
Learning outcomes for a student undertaking this project include:
-
Proficiency in real-time data processing and analysis.
-
Skill development in utilizing neural network-based solutions for efficient data extraction.
-
Understanding of complex data structures and their analysis.
-
Application of adaptive techniques for optimal performance in dynamic conditions.
Competency in Python programming is required. Prior experience in control and estimation theory, Machine Learning, and Fourier Optics is valued.