Feb. 7, 2024, 5:43 a.m. | Anli Ji Berkay Aydin

cs.LG updates on arXiv.org arxiv.org

Over the past few decades, many applications of physics-based simulations and data-driven techniques (including machine learning and deep learning) have emerged to analyze and predict solar flares. These approaches are pivotal in understanding the dynamics of solar flares, primarily aiming to forecast these events and minimize potential risks they may pose to Earth. Although current methods have made significant progress, there are still limitations to these data-driven approaches. One prominent drawback is the lack of consideration for the temporal evolution …

analyze applications astro-ph.sr classifiers cs.lg data data-driven deep learning dynamics events forecast forecasting machine machine learning multivariate physics pivotal risks series simulations solar stat.ap time series understanding

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