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Modeling the Spatiotemporal Variatio...
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Mensah, Godwill Asare Mensah.
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Modeling the Spatiotemporal Variations of the Magnetic Field in Active Regions on the Sun Using Deep Neural Networks.
Record Type:
Electronic resources : Monograph/item
Title/Author:
Modeling the Spatiotemporal Variations of the Magnetic Field in Active Regions on the Sun Using Deep Neural Networks./
Author:
Mensah, Godwill Asare Mensah.
Published:
Ann Arbor : ProQuest Dissertations & Theses, : 2024,
Description:
103 p.
Notes:
Source: Dissertations Abstracts International, Volume: 85-11, Section: B.
Contained By:
Dissertations Abstracts International85-11B.
Subject:
Computer science. -
Online resource:
https://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=31298383
ISBN:
9798382747279
Modeling the Spatiotemporal Variations of the Magnetic Field in Active Regions on the Sun Using Deep Neural Networks.
Mensah, Godwill Asare Mensah.
Modeling the Spatiotemporal Variations of the Magnetic Field in Active Regions on the Sun Using Deep Neural Networks.
- Ann Arbor : ProQuest Dissertations & Theses, 2024 - 103 p.
Source: Dissertations Abstracts International, Volume: 85-11, Section: B.
Thesis (Ph.D.)--The University of Texas at El Paso, 2024.
Solar active regions are areas on the Sun's surface that have especially strong magnetic fields. Active regions are usually linked to a number of phenomena that can have serious detrimental consequences on technology and, in turn, human life. Examples of these phenomena include solar flares and coronal mass ejections, or CMEs. The precise prediction of solar flares and coronal mass ejections is still an open problem since the fundamental processes underpinning the formation and development of active regions are still not well understood. One key area of research at the intersection of solar physics and artificial intelligence is deriving insights from the available datasets of solar activity that can help us understand solar active regions better. Some machine learning models have been employed to forecast solar flares from a 6-hour to 48-hour time span, thanks to advancements in artificial intelligence. Support Vector Machine (SVM), K-Nearest-Neighbor (KNN), Extremely Randomized Trees (ERT), and deep neural network are some of the machine learning models that have been used in forecasting solar flares, but the results are not good. This is due to the models being trained with a specific set of active region parameters and an imbalanced dataset with few positive flare cases. As a result, there is a need to understand space weather and the basis by which these events occur. In this study, we applied a deep learning architecture originally designed for video prediction to predict the changes happening on the Sun in continuous time by using time series Helioseismic and Magnetic Imager data captured by the Solar Dynamics Observatory (SDO) and compared it against a no-change baseline and a regression baseline. In addition, we expanded our study to examine the changes in active regions by incorporating the 3D viewing geometry and the sun's rotation, which helped the models focus on the changes in the active regions. We proposed using log-scale normalization to normalize the data and using the Cascading Convolutional Neural Network to predict the changes in active regions. To improve the performance of the model, we included the gradient information and the Structural Similarity Index in the training of the model by adding them as part of the loss function. In this dissertation, we demonstrated that deep neural networks can be trained to predict changes in active regions. It is our hope that further development of this work will lead to a better understanding of various physical phenomena related to space weather.
ISBN: 9798382747279Subjects--Topical Terms:
523869
Computer science.
Subjects--Index Terms:
Deep learning
Modeling the Spatiotemporal Variations of the Magnetic Field in Active Regions on the Sun Using Deep Neural Networks.
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Solar active regions are areas on the Sun's surface that have especially strong magnetic fields. Active regions are usually linked to a number of phenomena that can have serious detrimental consequences on technology and, in turn, human life. Examples of these phenomena include solar flares and coronal mass ejections, or CMEs. The precise prediction of solar flares and coronal mass ejections is still an open problem since the fundamental processes underpinning the formation and development of active regions are still not well understood. One key area of research at the intersection of solar physics and artificial intelligence is deriving insights from the available datasets of solar activity that can help us understand solar active regions better. Some machine learning models have been employed to forecast solar flares from a 6-hour to 48-hour time span, thanks to advancements in artificial intelligence. Support Vector Machine (SVM), K-Nearest-Neighbor (KNN), Extremely Randomized Trees (ERT), and deep neural network are some of the machine learning models that have been used in forecasting solar flares, but the results are not good. This is due to the models being trained with a specific set of active region parameters and an imbalanced dataset with few positive flare cases. As a result, there is a need to understand space weather and the basis by which these events occur. In this study, we applied a deep learning architecture originally designed for video prediction to predict the changes happening on the Sun in continuous time by using time series Helioseismic and Magnetic Imager data captured by the Solar Dynamics Observatory (SDO) and compared it against a no-change baseline and a regression baseline. In addition, we expanded our study to examine the changes in active regions by incorporating the 3D viewing geometry and the sun's rotation, which helped the models focus on the changes in the active regions. We proposed using log-scale normalization to normalize the data and using the Cascading Convolutional Neural Network to predict the changes in active regions. To improve the performance of the model, we included the gradient information and the Structural Similarity Index in the training of the model by adding them as part of the loss function. In this dissertation, we demonstrated that deep neural networks can be trained to predict changes in active regions. It is our hope that further development of this work will lead to a better understanding of various physical phenomena related to space weather.
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https://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=31298383
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