Bailey, R.L.; Leonhardt, R.; Möstl, C.; Beggan, C.; Reiss, M.A.; Bhaskar, A.; Weiss, A.J.. 2022 Forecasting GICs and Geoelectric Fields From Solar Wind Data Using LSTMs: application in Austria. Space Weather, 20 (3), e2021SW002907. 10.1029/2021SW002907
Abstract
The forecasting of local GIC effects has largely relied on the forecasting of dB/dt as a proxy and, to date, little attention has been paid to directly forecasting the geoelectric field or GICs themselves. We approach this problem with machine learning tools, specifically recurrent neural networks or LSTMs by taking solar wind observations as input and training the models to predict two different kinds of output: first, the geoelectric field components Ex and Ey; and second, the GICs in specific substations in Austria. The training is carried out on the geoelectric field and GICs modeled from 26 years of one-minute geomagnetic field measurements, and results are compared to GIC measurements from recent years. The GICs are generally predicted better by an LSTM trained on values from a specific substation, but only a fraction of the largest GICs are correctly predicted. This model has a correlation with measurements of around 0.6, and a root-mean-square error of 0.7 A. The probability of detecting mild activity in GICs is around 50%, and 15% for larger GICs.
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532918:187314
Open Access Paper
Bailey-et-al_SW_ForecastingGICsUsing LSTMs.pdf - Published Version
Available under License Creative Commons Attribution 4.0.
Bailey-et-al_SW_ForecastingGICsUsing LSTMs.pdf - Published Version
Available under License Creative Commons Attribution 4.0.
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Programmes:
BGS Programmes 2020 > Multihazards & resilience
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