Improved detection of farside solar active regions using deep learning
T. Felipe, A. Asensio Ramos

TL;DR
This paper introduces a deep learning approach to improve the detection of farside solar active regions using helioseismic data, significantly increasing detection sensitivity over traditional methods.
Contribution
A novel deep neural network methodology that enhances farside active region detection from helioseismic maps, surpassing existing techniques in sensitivity.
Findings
Higher sensitivity to farside active regions than standard methods
Increased detection rate of farside active regions
Potential for improved space weather forecasting
Abstract
The analysis of waves in the visible side of the Sun allows the detection of active regions in the farside through local helioseismology techniques. The knowledge of the magnetism in the whole Sun, including the non-visible hemisphere, is fundamental for several space weather forecasting applications. Seismic identification of farside active regions is challenged by the reduced signal-to-noise, and only large and strong active regions can be reliable detected. Here we develop a new methodology to improve the identification of active region signatures in farside seismic maps. We have constructed a deep neural network that associates the farside seismic maps obtained from helioseismic holography with the probability of presence of active regions in the farside. The network has been trained with pairs of helioseismic phase shift maps and Helioseismic and Magnetic Imager magnetograms…
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