Solar Storm Type Classification Using Probabilistic Neural Network compared with the Self-Organizing Map
Main Authors: | Satiabudhi, Gregorius, Adipranata, Rudy, Setiahadi, Bambang, N, ADRIAN HARTANTO |
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Format: | Article PeerReviewed application/pdf |
Terbitan: |
, 2012
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Subjects: | |
Online Access: |
https://repository.petra.ac.id/16280/1/Publikasi1_02030_1104.pdf http://kursor.trunojoyo.ac.id/?p=494 https://repository.petra.ac.id/16280/ |
Daftar Isi:
- One of the task of the LAPAN is making observation and forecasting of solar storms disturbance. This disturbances can affect the earths electromagnetic field that disrupt the electronic and navigational equipment on earth. LAPAN wanted a computer application that can automatically classify the type of solar storms, which became part of early warning systems to be created. The classification of the digital images of solar storm / sunspot is based on Modified - Zurich Sunspot Classification System. Classification method that we use here is the Probabilistic Neural Networks. The result of testing is promising because it has an accuracy of 94 for testing data. The accuracy is better than the accuracy of similar applications weve built with a combination of methods Self-Organizing Map and K-Nearest Neighbor.