Transfer Learning in Spatial-Temporal Forecasting of the Solar Magnetic Field
Eurico Covas

TL;DR
This paper explores transfer learning with spatial-temporal neural networks to improve solar magnetic field forecasting by leveraging longer sunspot data, demonstrating enhanced prediction capabilities despite limited magnetic data.
Contribution
It introduces a transfer learning approach in solar magnetic field forecasting, utilizing sunspot data to improve neural network predictions with limited magnetic field observations.
Findings
Transfer learning improves magnetic field forecast accuracy.
Neural networks identify key solar cycle features.
Transfer learning leverages longer sunspot datasets effectively.
Abstract
Machine learning techniques have been widely used in attempts to forecast several solar datasets. Most of these approaches employ supervised machine learning algorithms which are, in general, very data hungry. This hampers the attempts to forecast some of these data series, particularly the ones that depend on (relatively) recent space observations. Here we focus on an attempt to forecast the solar surface longitudinally averaged radial magnetic field distribution using a form of spatial-temporal neural networks. Given that the recording of these spatial-temporal datasets only started in 1975 and are therefore quite short, the forecasts are predictably quite modest. However, given that there is a potential physical relationship between sunspots and the magnetic field, we employ another machine learning technique called transfer learning which has recently received considerable attention…
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