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Bibliographic Details
Main Authors: Kelebek, Halil S., Wolniewicz, Linnea M., Vergalla, Michael D., Mestici, Simone, Acciarini, Giacomo, Poduval, Bala, Verkhoglyadova, Olga, Guhathakurta, Madhulika, Berger, Thomas E., Soboczenski, Frank, Baydin, Atılım Güneş
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.15004
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Table of Contents:
  • The ionosphere is a critical component of near-Earth space, shaping GNSS accuracy, high-frequency communications, and aviation operations. For these reasons, accurate forecasting and modeling of ionospheric variability has become increasingly relevant. To address this gap, we present IonCast, a suite of deep learning models that include a GraphCast-inspired model tailored for ionospheric dynamics. IonCast leverages spatiotemporal learning to forecast global Total Electron Content (TEC), integrating diverse physical drivers and observational datasets. Validating on held-out storm-time and quiet conditions highlights improved skill compared to persistence. By unifying heterogeneous data with scalable graph-based spatiotemporal learning, IonCast demonstrates how machine learning can augment physical understanding of ionospheric variability and advance operational space weather resilience.