Precise and Accurate Short-term Forecasting of Solar Energetic Particle Events with Multivariate Time Series Classifiers
Sumanth A. Rotti, Berkay Aydin, Petrus C. Martens

TL;DR
This paper presents a multivariate time series classification approach for short-term solar energetic particle event forecasting, achieving high accuracy using ensemble models and supervised classifiers.
Contribution
It introduces a data-driven supervised classification framework with ensemble modeling for accurate short-term SEP event prediction from multivariate time series data.
Findings
Supervised time series forest outperforms other classifiers.
Optimal prediction at 60-minute window with TSS of 0.850.
Ensemble approach improves forecasting accuracy.
Abstract
Solar energetic particle (SEP) events are one of the most crucial aspects of space weather that require continuous monitoring and forecasting using robust methods. We demonstrate a proof of concept of using a data-driven supervised classification framework on a multivariate time series data set covering solar cycles 22, 23, and 24. We implement ensemble modeling that merges the results from three proton channels (E10 MeV, 50 MeV, and 100 MeV) and the long band X-ray flux (1-8{\AA}) channel from the Geostationary Operational Environmental Satellite missions. Our task is binary classification, such that the aim of the model is to distinguish strong SEP events from nonevents. Here, strong SEP events are those crossing the Space Weather Prediction Center's "S1" threshold of solar radiation storm and proton fluxes below that are weak SEP events. In addition, we consider periods of…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Solar Radiation and Photovoltaics · Forecasting Techniques and Applications
