Leveraging the mathematics of shape for solar magnetic eruption prediction

Current operational forecasts of solar eruptions are made by human experts using a combination of qualitative shape-based classification systems and historical data about flaring frequencies. In the past decade, there has been a great deal of interest in crafting machine-learning (ML) flare-predicti...

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Main Authors: Deshmukh Varad, Berger Thomas E., Bradley Elizabeth, Meiss James D.
Format: Article
Language:English
Published: EDP Sciences 2020-01-01
Series:Journal of Space Weather and Space Climate
Subjects:
Online Access:https://www.swsc-journal.org/articles/swsc/full_html/2020/01/swsc190060/swsc190060.html
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spelling doaj-fd5210a8c4c84b97a74a51e027031cc52021-04-02T10:11:49ZengEDP SciencesJournal of Space Weather and Space Climate2115-72512020-01-01101310.1051/swsc/2020014swsc190060Leveraging the mathematics of shape for solar magnetic eruption predictionDeshmukh Varad0https://orcid.org/0000-0003-1858-8044Berger Thomas E.1Bradley ElizabethMeiss James D.2Department of Computer Science, University of Colorado 430 UCBSpace Weather Technology, Research, and Education Center (SWx TREC), University of Colorado 429 UCBDepartment of Applied Mathematics, University of Colorado 526 UCBCurrent operational forecasts of solar eruptions are made by human experts using a combination of qualitative shape-based classification systems and historical data about flaring frequencies. In the past decade, there has been a great deal of interest in crafting machine-learning (ML) flare-prediction methods to extract underlying patterns from a training set – e.g. a set of solar magnetogram images, each characterized by features derived from the magnetic field and labeled as to whether it was an eruption precursor. These patterns, captured by various methods (neural nets, support vector machines, etc.), can then be used to classify new images. A major challenge with any ML method is the featurization of the data: pre-processing the raw images to extract higher-level properties, such as characteristics of the magnetic field, that can streamline the training and use of these methods. It is key to choose features that are informative, from the standpoint of the task at hand. To date, the majority of ML-based solar eruption methods have used physics-based magnetic and electric field features such as the total unsigned magnetic flux, the gradients of the fields, the vertical current density, etc. In this paper, we extend the relevant feature set to include characteristics of the magnetic field that are based purely on the geometry and topology of 2D magnetogram images and show that this improves the prediction accuracy of a neural-net based flare-prediction method.https://www.swsc-journal.org/articles/swsc/full_html/2020/01/swsc190060/swsc190060.htmlsolar eruption predictionmachine learningcomputational geometrycomputational topology
collection DOAJ
language English
format Article
sources DOAJ
author Deshmukh Varad
Berger Thomas E.
Bradley Elizabeth
Meiss James D.
spellingShingle Deshmukh Varad
Berger Thomas E.
Bradley Elizabeth
Meiss James D.
Leveraging the mathematics of shape for solar magnetic eruption prediction
Journal of Space Weather and Space Climate
solar eruption prediction
machine learning
computational geometry
computational topology
author_facet Deshmukh Varad
Berger Thomas E.
Bradley Elizabeth
Meiss James D.
author_sort Deshmukh Varad
title Leveraging the mathematics of shape for solar magnetic eruption prediction
title_short Leveraging the mathematics of shape for solar magnetic eruption prediction
title_full Leveraging the mathematics of shape for solar magnetic eruption prediction
title_fullStr Leveraging the mathematics of shape for solar magnetic eruption prediction
title_full_unstemmed Leveraging the mathematics of shape for solar magnetic eruption prediction
title_sort leveraging the mathematics of shape for solar magnetic eruption prediction
publisher EDP Sciences
series Journal of Space Weather and Space Climate
issn 2115-7251
publishDate 2020-01-01
description Current operational forecasts of solar eruptions are made by human experts using a combination of qualitative shape-based classification systems and historical data about flaring frequencies. In the past decade, there has been a great deal of interest in crafting machine-learning (ML) flare-prediction methods to extract underlying patterns from a training set – e.g. a set of solar magnetogram images, each characterized by features derived from the magnetic field and labeled as to whether it was an eruption precursor. These patterns, captured by various methods (neural nets, support vector machines, etc.), can then be used to classify new images. A major challenge with any ML method is the featurization of the data: pre-processing the raw images to extract higher-level properties, such as characteristics of the magnetic field, that can streamline the training and use of these methods. It is key to choose features that are informative, from the standpoint of the task at hand. To date, the majority of ML-based solar eruption methods have used physics-based magnetic and electric field features such as the total unsigned magnetic flux, the gradients of the fields, the vertical current density, etc. In this paper, we extend the relevant feature set to include characteristics of the magnetic field that are based purely on the geometry and topology of 2D magnetogram images and show that this improves the prediction accuracy of a neural-net based flare-prediction method.
topic solar eruption prediction
machine learning
computational geometry
computational topology
url https://www.swsc-journal.org/articles/swsc/full_html/2020/01/swsc190060/swsc190060.html
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