Solar farside magnetograms from deep learning analysis of STEREO/EUVI data

Solar magnetograms are important for studying solar activity and predicting space weather disturbances 1 . Farside magnetograms can be constructed from local helioseismology without any farside data 2 - 4 , but their quality is lower than that of typical frontside magnetograms. Here we generate fars...

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Veröffentlicht in:Nature astronomy 2019-05, Vol.3 (5), p.397-400
Hauptverfasser: Kim, Taeyoung, Park, Eunsu, Lee, Harim, Moon, Yong-Jae, Bae, Sung-Ho, Lim, Daye, Jang, Soojeong, Kim, Lokwon, Cho, Il-Hyun, Choi, Myungjin, Cho, Kyung-Suk
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Sprache:eng
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Zusammenfassung:Solar magnetograms are important for studying solar activity and predicting space weather disturbances 1 . Farside magnetograms can be constructed from local helioseismology without any farside data 2 - 4 , but their quality is lower than that of typical frontside magnetograms. Here we generate farside solar magnetograms from STEREO/Extreme UltraViolet Imager (EUVI) 304-Å images using a deep learning model based on conditional generative adversarial networks (cGANs). We train the model using pairs of Solar Dynamics Observatory (SDO)/Atmospheric Imaging Assembly (AIA) 304-Å images and SDO/Helioseismic and Magnetic Imager (HMI) magnetograms taken from 2011 to 2017 except for September and October each year. We evaluate the model by comparing pairs of SDO/HMI magnetograms and cGAN-generated magnetograms in September and October. Our method successfully generates frontside solar magnetograms from SDO/AIA 304-Å images and these are similar to those of the SDO/HMI, with Hale-patterned active regions being well replicated. Thus we can monitor the temporal evolution of magnetic fields from the farside to the frontside of the Sun using SDO/HMI and farside magnetograms generated by our model when farside extreme-ultraviolet data are available. This study presents an application of image-to-image translation based on cGANs to scientific data. Farside solar magnetograms are generated from STEREO images using deep learning, with Hale-patterned active regions being well reproduced. These images can be used to monitor the temporal evolution of magnetic fields from the farside to the frontside.
ISSN:2397-3366
2397-3366
DOI:10.1038/s41550-019-0711-5