Global geomagnetic perturbation forecasting using Deep Learning
Vishal Upendran, Panagiotis Tigas, Banafsheh Ferdousi, Teo Bloch, Mark, C. M. Cheung, Siddha Ganju, Asti Bhatt, Ryan M. McGranaghan, Yarin Gal

TL;DR
This paper presents a fast, global deep learning model that forecasts geomagnetic perturbations 30 minutes ahead using solar wind data, enabling timely mitigation of geomagnetically induced currents.
Contribution
It introduces a novel deep learning approach that provides rapid, high-resolution global forecasts of magnetic field perturbations from solar wind measurements.
Findings
Model forecasts 30 minutes ahead in under a second.
Outperforms existing local and global models in storm event predictions.
Enables high-cadence, global geomagnetic disturbance forecasting.
Abstract
Geomagnetically Induced Currents (GICs) arise from spatio-temporal changes to Earth's magnetic field which arise from the interaction of the solar wind with Earth's magnetosphere, and drive catastrophic destruction to our technologically dependent society. Hence, computational models to forecast GICs globally with large forecast horizon, high spatial resolution and temporal cadence are of increasing importance to perform prompt necessary mitigation. Since GIC data is proprietary, the time variability of horizontal component of the magnetic field perturbation (dB/dt) is used as a proxy for GICs. In this work, we develop a fast, global dB/dt forecasting model, which forecasts 30 minutes into the future using only solar wind measurements as input. The model summarizes 2 hours of solar wind measurement using a Gated Recurrent Unit, and generates forecasts of coefficients which are folded…
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