Classification of High-resolution Solar H{\alpha} Spectra using t-distributed Stochastic Neighbor Embedding
Meetu Verma, Gal Matijevi\v{c}, Carsten Denker, Andrea Diercke,, Ekaterina Dineva, Horst Balthasar, Robert Kamlah, Ioannis Kontogiannis,, Christoph Kuckein, Partha S. Pal

TL;DR
This study applies t-SNE, a machine learning technique, to classify high-resolution solar H-alpha spectra, effectively distinguishing different chromospheric features and aiding solar physics research.
Contribution
It demonstrates the use of t-SNE for nonlinear dimensionality reduction and classification of solar spectra, linking spectral clusters to chromospheric features with detailed parameter analysis.
Findings
t-SNE effectively separates quiet-Sun and plage spectra
Classification accuracy depends on t-SNE parameters and seeing conditions
Clusters correspond to distinct chromospheric features
Abstract
The H{\alpha} spectral line is a well-studied absorption line revealing properties of the highly structured and dynamic solar chromosphere. Typical features with distinct spectral signatures in H{\alpha} include filaments and prominences, bright active-region plages, superpenumbrae around sunspots, surges, flares, Ellerman bombs, filigree, and mottles and rosettes, among others. This study is based on high-spectral resolution H{\alpha} spectra obtained with the echelle spectrograph of the Vacuum Tower Telescope (VTT) located at Observatorio del Teide (ODT), Tenerife, Spain. The t-distributed Stochastic Neighbor Embedding (t-SNE) is a machine learning algorithm, which is used for nonlinear dimensionality reduction. In this application, it projects H{\alpha} spectra onto a two-dimensional map, where it becomes possible to classify the spectra according to results of Cloud Model (CM)…
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