TL;DR
This paper employs deep learning to predict solar wind speed from solar corona images, outperforming traditional models and revealing correlations between coronal features and wind properties.
Contribution
It introduces a novel deep learning approach using EUV images to forecast solar wind, capturing key coronal features associated with wind speed without explicit physics modeling.
Findings
Deep learning model outperforms autoregressive and naive benchmarks.
Model identifies coronal holes as indicators of fast wind.
Coronal features correlate with wind speed predictions.
Abstract
Emanating from the base of the Sun's corona, the solar wind fills the interplanetary medium with a magnetized stream of charged particles whose interaction with the Earth's magnetosphere has space-weather consequences such as geomagnetic storms. Accurately predicting the solar wind through measurements of the spatio-temporally evolving conditions in the solar atmosphere is important but remains an unsolved problem in heliophysics and space-weather research. In this work, we use deep learning for prediction of solar wind (SW) properties. We use Extreme Ultraviolet images of the solar corona from space based observations to predict the SW speed from the NASA OMNIWEB dataset, measured at Lagragian point 1. We evaluate our model against autoregressive and naive models, and find that our model outperforms the benchmark models, obtaining a best-fit correlation of 0.55 0.03 with the…
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