A probabilistic approach to direction-dependent ionospheric calibration
J. G. Albert, M. S. S. L. Oei, R. J. van Weeren, H. T. Intema, and H., J. A. R\"ottgering

TL;DR
This paper introduces a novel probabilistic Gaussian process-based tomographic method for calibrating direction-dependent ionospheric distortions in low-frequency radio interferometry, improving accuracy over existing models.
Contribution
It proposes a new Gaussian process model for ionospheric calibration that outperforms existing models in representing data and generalizing to unseen conditions.
Findings
Model better represents observed data across conditions
Predictive errors cause half the source shift of competitors
Partial hyperparameter constraints from sparse data
Abstract
Calibrating for direction-dependent ionospheric distortions in visibility data is one of the main technical challenges that must be overcome to advance low-frequency radio astronomy. In this paper, we propose a novel probabilistic, tomographic approach that utilises Gaussian processes to calibrate direction-dependent ionospheric phase distortions in low-frequency interferometric data. We suggest that the ionospheric free electron density can be modelled to good approximation by a Gaussian process restricted to a thick single layer, and show that under this assumption the differential total electron content must also be a Gaussian process. We perform a comparison with a number of other widely successful Gaussian processes on simulated differential total electron contents over a wide range of experimental conditions, and find that, in all experimental conditions, our model is better able…
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