Selection of Three (E)UV Channels for Solar Satellite Missions by Deep Learning

  • Lim, Daye (Department of Astronomy and Space Science, Kyung Hee University) ;
  • Moon, Yong-Jae (Department of Astronomy and Space Science, Kyung Hee University) ;
  • Park, Eunsu (Department of Astronomy and Space Science, Kyung Hee University) ;
  • Lee, Jin-Yi (Department of Astronomy and Space Science, Kyung Hee University)
  • Published : 2021.04.13

Abstract

We address a question of what are three main channels that can best translate other channels in ultraviolet (UV) and extreme UV (EUV) observations. For this, we compare the image translations among the nine channels of the Atmospheric Imaging Assembly on the Solar Dynamics Observatory using a deep learning model based on conditional generative adversarial networks. In this study, we develop 170 deep learning models: 72 models for single-channel input, 56 models for double-channel input, and 42 models for triple-channel input. All models have a single-channel output. Then we evaluate the model results by pixel-to-pixel correlation coefficients (CCs) within the solar disk. Major results from this study are as follows. First, the model with 131 Å shows the best performance (average CC = 0.84) among single-channel models. Second, the model with 131 and 1600 Å shows the best translation (average CC = 0.95) among double-channel models. Third, among the triple-channel models with the highest average CC (0.97), the model with 131, 1600, and 304 Å is suggested in that the minimum CC (0.96) is the highest. Interestingly they are representative coronal, photospheric, and chromospheric lines, respectively. Our results may be used as a secondary perspective in addition to primary scientific purposes in selecting a few channels of an UV/EUV imaging instrument for future solar satellite missions.

Keywords