Uncertainty-Aware Learning for Improvements in Image Quality of the
Canada-France-Hawaii Telescope
- URL: http://arxiv.org/abs/2107.00048v1
- Date: Wed, 30 Jun 2021 18:10:20 GMT
- Title: Uncertainty-Aware Learning for Improvements in Image Quality of the
Canada-France-Hawaii Telescope
- Authors: Sankalp Gilda and Stark C. Draper and Sebastien Fabbro and William
Mahoney and Simon Prunet and Kanoa Withington and Matthew Wilson and Yuan-Sen
Ting and Andrew Sheinis
- Abstract summary: We leverage state-of-the-art machine learning methods to predict observatory image quality (IQ) from environmental conditions and observatory operating parameters.
We develop accurate and interpretable models of the complex dependence between data features and observed IQ for CFHT's wide field camera, MegaCam.
- Score: 9.963669010212012
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: We leverage state-of-the-art machine learning methods and a decade's worth of
archival data from the Canada-France-Hawaii Telescope (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 $\sim0.07''$ for the predicted medians.
Third, we explore 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 identify candidate vent adjustments that are
in-distribution (ID) and, for the optimal configuration for each ID sample, we
predict the reduction in required observing time to achieve a fixed SNR. On
average, the reduction is $\sim15\%$. Finally, we rank sensor data features by
Shapley values to identify the most predictive variables for each observation.
Our long-term goal is to construct reliable and real-time models that can
forecast optimal observatory operating parameters for optimization of IQ. Such
forecasts can then be fed into scheduling protocols and predictive maintenance
routines. We anticipate that such approaches will become standard in automating
observatory operations and maintenance by the time CFHT's successor, the
Maunakea Spectroscopic Explorer (MSE), is installed in the next decade.
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