Abstract

The flare-productivity of an active region is observed to be related to its spatial complexity. Mount Wilson or McIntosh sunspot classifications measure such complexity but in a categorical way, and may therefore not use all the information present in the observations. Moreover, such categorical schemes hinder a systematic study of an active region's evolution for example. We propose fine-scale quantitative descriptors for an active region's complexity and relate them to the Mount Wilson classification. We analyze the local correlation structure within continuum and magnetogram data, as well as the cross-correlation between continuum and magnetogram data. We compute the intrinsic dimension, partial correlation, and canonical correlation analysis (CCA) of image patches of continuum and magnetogram active region images taken from the SOHO-MDI instrument. We use masks of sunspots derived from continuum as well as larger masks of magnetic active regions derived from the magnetogram to analyze separately the core part of an active region from its surrounding part. We find the relationship between complexity of an active region as measured by Mount Wilson and the intrinsic dimension of its image patches. Partial correlation patterns exhibit approximately a third-order Markov structure. CCA reveals different patterns of correlation between continuum and magnetogram within the sunspots and in the region surrounding the sunspots. These results also pave the way for patch-based dictionary learning with a view towards automatic clustering of active regions.

Highlights

  • Active regions (ARs) in the solar atmosphere have intense and intricate magnetic fields that emerge from subsurface layers to form loops which extend into the corona

  • We compute the intrinsic dimension, partial correlation, and canonical correlation analysis (CCA) of image patches of continuum and magnetogram active region images taken from the Solar and Heliospheric Observatory (SOHO)-Michelson Doppler Imager (MDI) instrument

  • We use masks of sunspots derived from continuum as well as larger masks of magnetic active regions derived from magnetogram to analyze separately the core part of an active region from its surrounding part

Read more

Summary

Introduction

Active regions (ARs) in the solar atmosphere have intense and intricate magnetic fields that emerge from subsurface layers to form loops which extend into the corona. We carry out a patch analysis of a set of sunspots and active region magnetogram images that span the four main Mount Wilson classes. This gives insight into relationships that may exist between active region complexity and the correlation patterns. Since some sunspot and active region features can be quite small and to limit the effects of high dimensionality on our analysis, we primarily use 3 · 3 patches in each modality larger patches are used in Section 4 when analyzing spatial correlations in the images

Intrinsic dimension estimation
PCA: a linear estimator
General results
Patterns within the Mount Wilson groups
Spatial and modal correlations
Partial correlation: methodology
Partial correlation: results
Canonical correlation analysis: methodology
Canonical correlation analysis: results
Conclusion
Findings
Partial correlation
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call