Uncertainty-Aware Learning for Improvements in Image Quality of the Canada-France-Hawaii Telescope
Sankalp Gilda, Stark C. Draper, Sebastien Fabbro, William, Mahoney, Simon Prunet, Kanoa Withington, Matthew Wilson, Yuan-Sen, Ting, Andrew Sheinis

TL;DR
This paper develops machine learning models to predict and improve the image quality of the CFHT observatory by analyzing environmental data, enabling optimized operations and reduced observation time.
Contribution
It introduces accurate, interpretable probabilistic models of image quality based on environmental and operational data, with novel uncertainty-aware optimization of observatory parameters.
Findings
Achieved a mean absolute error of ~0.07'' in IQ prediction.
Predicted a ~12% reduction in required observing time.
Identified key predictive features for image quality.
Abstract
We leverage state-of-the-art machine learning methods and a decade's worth of archival data from CFHT to predict observatory image quality (IQ) from environmental conditions and observatory operating parameters. Specifically, we develop accurate and interpretable models of the complex dependence between data features and observed IQ for CFHT's wide-field camera, MegaCam. Our contributions are several-fold. First, we collect, collate and reprocess several disparate data sets gathered by CFHT scientists. Second, we predict probability distribution functions (PDFs) of IQ and achieve a mean absolute error of for the predicted medians. Third, we explore the data-driven actuation of the 12 dome "vents" installed in 2013-14 to accelerate the flushing of hot air from the dome. We leverage epistemic and aleatoric uncertainties in conjunction with probabilistic generative modeling to…
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