4.6 Article

A deep learning approach to solar radio flux forecasting

Journal

ACTA ASTRONAUTICA
Volume 193, Issue -, Pages 595-606

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.actaastro.2021.08.004

Keywords

Solar radio flux; Space weather; Deep learning; Time series forecasting; Ensemble

Funding

  1. EU [813644]

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This study employs a novel deep learning method, N-BEATS, for predicting solar proxy index in space operations a few days ahead. The experimental results show that this method performs well in single point forecasting and can generate uncertainty estimates. The N-BEATS model outperforms baseline models and statistical methods, demonstrating significant advantages in performance.
The effect of atmospheric drag on spacecraft dynamics is considered one of the predominant sources of uncertainty in Low Earth Orbit. These effects are characterised in part by the atmospheric density, a quantity highly correlated to space weather. Current atmosphere models typically account for this through proxy indices such as the F10.7, but with variations in solar radio flux forecasts leading to significant orbit differences over just a few days, prediction of these quantities is a limiting factor in the accurate estimation of future drag conditions, and consequently orbital prediction. In this work, a novel deep residual architecture for univariate time series forecasting, N-BEATS, is employed for the prediction of the F10.7 solar proxy on the days-ahead timescales relevant to space operations. This untailored, pure deep learning approach has recently achieved state-of-the-art performance in time series forecasting competitions, outperforming well-established statistical, as well as statistical hybrid models, across a range of domains. The approach was found to be effective in single point forecasting up to 27-days ahead, and was additionally extended to produce forecast uncertainty estimates using deep ensembles. These forecasts were then compared to a persistence baseline and two operationally available forecasts: one statistical (provided by BGS, ESA), and one multi-flux neural network (by CLS, CNES). It was found that the N-BEATS model systematically outperformed the baseline and statistical approaches, and achieved an improved or similar performance to the mull-flux neural network approach despite only learning from a single variable.

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