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                                       Details for article 17 of 31 found articles
 
 
  Learning Sunspot Classification
 
 
Title: Learning Sunspot Classification
Author: Nguyen, Trung Thanh
Willis, Claire P.
Paddon, Derek J.
Nguyen, Sinh Hoa
Nguyen, Hung Son
Appeared in: Fundamenta informaticae
Paging: Volume 72 (2006) nr. 1-3 pages 295-309
Year: 2006-08-08
Contents: Sunspots are the subject of interest to many astronomers and solar physicists. Sunspot observation, analysis and classification form an important part of furthering the knowledge about the Sun. Sunspot classification is a manual and very labor intensive process that could be automated if successfully learned by a machine. This paper presents machine learning approaches to the problem of sunspot classification. The classification scheme attempted was the seven-class Modified Zurich scheme [18]. The data was obtained by processing NASA SOHO/MDI satellite images to extract individual sunspots and their attributes. A series of experiments were performed on the training dataset with an aim of learning sunspot classification and improving prediction accuracy. The experiments involved using decision trees, rough sets, hierarchical clustering and layered learning methods. Sunspots were characterized by their visual properties like size, shape, positions, and were manually classified by comparing extracted sunspots with corresponding active region maps (ARMaps) from the Mees Observatory at the Institute for Astronomy, University of Hawaii.
Publisher: IOS Press
Source file: Elektronische Wetenschappelijke Tijdschriften
 
 

                             Details for article 17 of 31 found articles
 
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