Deep learning inference with the Event Horizon Telescope I. Calibration improvements and a comprehensive synthetic data library
M. Janssen, C.-k. Chan, J. Davelaar, I. Natarajan, H. Olivares, B. Ripperda, J. R\"oder, M. Rynge, M. Wielgus

TL;DR
This paper enhances the EHT data reduction pipeline, creates an extensive synthetic data library from advanced simulations, and improves model discrimination and parameter inference for black hole observations.
Contribution
It introduces calibration improvements, a large synthetic data library, and methods for better model comparison and parameter estimation in EHT data analysis.
Findings
Improved data calibration leads to higher quality EHT datasets.
Generated 962,000 synthetic datasets matching EHT observations.
Identified model features resilient to data corruption effects.
Abstract
(abridged) In a series of publications, we describe a comprehensive comparison of Event Horizon Telescope (EHT) data with theoretical models of Sgr A* and M87*. Here, we report on improvements made to our observational data reduction pipeline and present the generation of observables derived from the EHT models. We make use of ray-traced GRMHD simulations that are based on different black hole spacetime metrics and accretion physics parameters. These broad classes of models provide a good representation of the primary targets observed by the EHT. To generate realistic synthetic data from our models, we took the signal path as well as the calibration process, and thereby the aforementioned improvements, into account. We could thus produce synthetic visibilities akin to calibrated EHT data and identify salient features for the discrimination of model parameters. We have produced a library…
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