2024
DOI: 10.1007/s11207-024-02385-w
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Prediction of Geoeffective CMEs Using SOHO Images and Deep Learning

Khalid A. Alobaid,
Jason T. L. Wang,
Haimin Wang
et al.

Abstract: The application of machine learning to the study of coronal mass ejections (CMEs) and their impacts on Earth has seen significant growth recently. Understanding and forecasting CME geoeffectiveness are crucial for protecting infrastructure in space and ensuring the resilience of technological systems on Earth. Here we present GeoCME, a deep-learning framework designed to predict, deterministically or probabilistically, whether a CME event that arrives at Earth will cause a geomagnetic storm. A geomagnetic stor… Show more

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