SynthIA: A Synthetic Inversion Approximation for the Stokes Vector Fusing SDO and Hinode into a Virtual Observatory
Richard E.L. Higgins, David F. Fouhey, Spiro K. Antiochos, Graham, Barnes, Mark C.M. Cheung, J. Todd Hoeksema, KD Leka, Yang Liu, Peter W., Schuck, Tamas I. Gombosi

TL;DR
SynthIA is a deep-learning system that synthesizes high-resolution Hinode-like magnetograms from full-disk SDO/HMI data, improving magnetic field measurements and reducing oscillations for space weather applications.
Contribution
This work introduces SynthIA, a novel deep-learning approach that approximates Hinode SOT-SP inversions using SDO/HMI data, enabling high-fidelity, high-cadence magnetograms.
Findings
SynodeP closely matches Hinode/SOT-SP inversions
Reduces 24-hour oscillations in SDO/HMI data
Demonstrates flexibility with different input data sets
Abstract
Both NASA's Solar Dynamics Observatory (SDO) and the JAXA/NASA Hinode mission include spectropolarimetric instruments designed to measure the photospheric magnetic field. SDO's Helioseismic and Magnetic Imager (HMI) emphasizes full-disk high-cadence and good spatial resolution data acquisition while Hinode's Solar Optical Telescope Spectro-Polarimeter (SOT-SP) focuses on high spatial resolution and spectral sampling at the cost of a limited field of view and slower temporal cadence. This work introduces a deep-learning system named SynthIA (Synthetic Inversion Approximation), that can enhance both missions by capturing the best of each instrument's characteristics. We use SynthIA to produce a new magnetogram data product, SynodeP (Synthetic Hinode Pipeline), that mimics magnetograms from the higher spectral resolution Hinode/SOT-SP pipeline, but is derived from full-disk, high-cadence,…
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