TL;DR
This paper introduces a graph network model that significantly accelerates non-LTE synthesis and inversions in solar physics, enabling faster analysis of chromospheric observations and large-scale field-of-view studies.
Contribution
The authors develop and train a graph network to predict departure coefficients, providing a fast alternative to traditional non-LTE calculations in solar atmospheric modeling.
Findings
Order of magnitude speed increase in non-LTE synthesis.
Good generalization to unseen atmospheric models.
Effective integration with existing inversion codes.
Abstract
The computational cost of fast non-LTE synthesis is one of the challenges that limits the development of 2D and 3D inversion codes. It also makes the interpretation of observations of lines formed in the chromosphere and transition region a slow and computationally costly process, which limits the inference of the physical properties on rather small fields of view. Having access to a fast way of computing the deviation from the LTE regime through the departure coefficients could largely alleviate this problem. We propose to build and train a graph network that quickly predicts the atomic level populations without solving the non-LTE problem. We find an optimal architecture for the graph network for predicting the departure coefficients of the levels of an atom from the physical conditions of a model atmosphere. A suitable dataset with a representative sample of potential model…
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