The authors release a heterogeneous, temporally and spatially aligned dataset combining solar, geomagnetic, and ionospheric sources and benchmark spatiotemporal ML models for vertical TEC forecasting.
Collins, Michael S
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Connecting the Dots: A Machine Learning Ready Dataset for Ionospheric Forecasting Models
The authors release a heterogeneous, temporally and spatially aligned dataset combining solar, geomagnetic, and ionospheric sources and benchmark spatiotemporal ML models for vertical TEC forecasting.