SRIMLGSPACE-PHApr 29, 2023

Ensemble Learning for CME Arrival Time Prediction

arXiv:2305.00258v1h-index: 10
Originality Incremental advance
AI Analysis

This work addresses the problem of minimizing damage to human systems like power grids and satellites by improving CME prediction accuracy, though it is incremental as it builds on prior machine learning methods.

The study tackled predicting coronal mass ejection (CME) arrival times from the Sun to Earth using an ensemble learning approach called CMETNet, achieving a Pearson correlation coefficient of 0.83 and a mean absolute error of 9.75 hours, outperforming existing methods.

The Sun constantly releases radiation and plasma into the heliosphere. Sporadically, the Sun launches solar eruptions such as flares and coronal mass ejections (CMEs). CMEs carry away a huge amount of mass and magnetic flux with them. An Earth-directed CME can cause serious consequences to the human system. It can destroy power grids/pipelines, satellites, and communications. Therefore, accurately monitoring and predicting CMEs is important to minimize damages to the human system. In this study we propose an ensemble learning approach, named CMETNet, for predicting the arrival time of CMEs from the Sun to the Earth. We collect and integrate eruptive events from two solar cycles, #23 and #24, from 1996 to 2021 with a total of 363 geoeffective CMEs. The data used for making predictions include CME features, solar wind parameters and CME images obtained from the SOHO/LASCO C2 coronagraph. Our ensemble learning framework comprises regression algorithms for numerical data analysis and a convolutional neural network for image processing. Experimental results show that CMETNet performs better than existing machine learning methods reported in the literature, with a Pearson product-moment correlation coefficient of 0.83 and a mean absolute error of 9.75 hours.

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