3D Solar Coronal Loop Reconstructions with Machine Learning

DOI: 
10.3847/2041-8213/abed53
Publication date: 
24/03/2021
Main author: 
Chifu, Iulia
IAA authors: 
Gafeira, Ricardo
Authors: 
Chifu, Iulia;Gafeira, Ricardo
Journal: 
The Astrophysical Journal
Publication type: 
Article
Volume: 
910
Pages: 
L10
Abstract: 
The magnetic field plays an essential role in the initiation and evolution of different solar phenomena in the corona. The structure and evolution of the 3D coronal magnetic field are still not very well known. A way to ascertain the 3D structure of the coronal magnetic field is by performing magnetic field extrapolations from the photosphere to the corona. In previous work, it was shown that by prescribing the 3D-reconstructed loops' geometry, the magnetic field extrapolation produces a solution with a better agreement between the modeled field and the reconstructed loops. This also improves the quality of the field extrapolation. Stereoscopy, which uses at least two view directions, is the traditional method for performing 3D coronal loop reconstruction. When only one vantage point of the coronal loops is available, other 3D reconstruction methods must be applied. Within this work, we present a method for the 3D loop reconstruction based on machine learning. Our purpose for developing this method is to use as many observed coronal loops in space and time for the modeling of the coronal magnetic field. Our results show that we can build machine-learning models that can retrieve 3D loops based only on their projection information. Ultimately, the neural network model will be able to use only 2D information of the coronal loops, identified, traced, and extracted from the extreme-ultraviolet images, for the calculation of their 3D geometry.
Database: 
ADS
URL: 
https://ui.adsabs.harvard.edu/#abs/2021ApJ...910L..10C/abstract
ADS Bibcode: 
2021ApJ...910L..10C
Keywords: 
Solar coronal loops;Convolutional neural networks;1485;1938;Astrophysics - Solar and Stellar Astrophysics