Prediction of Space Weather Events through Analysis of Active Region Magnetograms using Convolutional Neural Network
Shlesh Sakpal

TL;DR
This paper presents a CNN-based model that predicts space weather events like solar flares, CMEs, and geomagnetic storms using active region magnetograms, achieving over 90% accuracy and demonstrating the viability of machine learning for space weather forecasting.
Contribution
The study introduces a novel CNN architecture trained on magnetogram data to predict multiple space weather events with high accuracy, advancing current prediction methods.
Findings
Achieved 90.27% overall accuracy in predicting space weather events.
High precision and recall indicate reliable predictions across classes.
Demonstrated the effectiveness of magnetogram data as input for CNN models.
Abstract
Although space weather events may not directly affect human life, they have the potential to inflict significant harm upon our communities. Harmful space weather events can trigger atmospheric changes that result in physical and economic damages on a global scale. In 1989, Earth experienced the effects of a powerful geomagnetic storm that caused satellites to malfunction, while triggering power blackouts in Canada, along with electricity disturbances in the United States and Europe. With the solar cycle peak rapidly approaching, there is an ever-increasing need to prepare and prevent the damages that can occur, especially to modern-day technology, calling for the need of a comprehensive prediction system. This study aims to leverage machine learning techniques to predict instances of space weather (solar flares, coronal mass ejections, geomagnetic storms), based on active region…
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Taxonomy
TopicsEarthquake Detection and Analysis · Inertial Sensor and Navigation
Methodstravel james
