Study of clustering trechniques in data mining for climate data

The acquisition of useful information from meteorological data dumps is difficult due to the increase in the amount of data stored in JPKM. This is because the parameters and amount of meteorological data are increasing from time to time. This large amount of data has made it difficult to analyze th...

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Main Authors: Bahari, Mahadi, Dollah @ Md. Zain, Rozilawati, Md. Sap, Mohd. Noor, Bakri, Aryati
Format: Monograph
Language:English
Published: Faculty of Computer Science and Information System 2006
Subjects:
Online Access:http://eprints.utm.my/4399/1/75056.pdf
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author Bahari, Mahadi
Dollah @ Md. Zain, Rozilawati
Md. Sap, Mohd. Noor
Bakri, Aryati
author_facet Bahari, Mahadi
Dollah @ Md. Zain, Rozilawati
Md. Sap, Mohd. Noor
Bakri, Aryati
author_sort Bahari, Mahadi
collection ePrints
description The acquisition of useful information from meteorological data dumps is difficult due to the increase in the amount of data stored in JPKM. This is because the parameters and amount of meteorological data are increasing from time to time. This large amount of data has made it difficult to analyze the meteorological data for the purpose of forecasting the rainfall. In the process of forecasting the rain distribution, it is unreasonable to use all the meteorological parameters to do the forecasting. Therefore, one of the ways to identify which parameter gives an impact to the accuracy or performance of the rainfall distribution forecasting is to group the meteorological data. The purpose of this study is to study and compare between two grouping techniques, namely partial and hierarchical method to carry out grouping of meteorological data for the purposes of forecasting of rainfall. The results of this study found that partial groupings were more suitable for use in grouping of meteorological data than hierarchical grouping. In addition, the use of meteorological data attributes within different groups provides better forecasting performance than the use of meteorological data attributes within the same group.
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spelling utm.eprints-43992017-08-07T03:24:53Z http://eprints.utm.my/4399/ Study of clustering trechniques in data mining for climate data Bahari, Mahadi Dollah @ Md. Zain, Rozilawati Md. Sap, Mohd. Noor Bakri, Aryati ZA4050 Electronic information resources The acquisition of useful information from meteorological data dumps is difficult due to the increase in the amount of data stored in JPKM. This is because the parameters and amount of meteorological data are increasing from time to time. This large amount of data has made it difficult to analyze the meteorological data for the purpose of forecasting the rainfall. In the process of forecasting the rain distribution, it is unreasonable to use all the meteorological parameters to do the forecasting. Therefore, one of the ways to identify which parameter gives an impact to the accuracy or performance of the rainfall distribution forecasting is to group the meteorological data. The purpose of this study is to study and compare between two grouping techniques, namely partial and hierarchical method to carry out grouping of meteorological data for the purposes of forecasting of rainfall. The results of this study found that partial groupings were more suitable for use in grouping of meteorological data than hierarchical grouping. In addition, the use of meteorological data attributes within different groups provides better forecasting performance than the use of meteorological data attributes within the same group. Faculty of Computer Science and Information System 2006 Monograph NonPeerReviewed application/pdf en http://eprints.utm.my/4399/1/75056.pdf Bahari, Mahadi and Dollah @ Md. Zain, Rozilawati and Md. Sap, Mohd. Noor and Bakri, Aryati (2006) Study of clustering trechniques in data mining for climate data. Project Report. Faculty of Computer Science and Information System, Skudai Johor. (Unpublished)
spellingShingle ZA4050 Electronic information resources
Bahari, Mahadi
Dollah @ Md. Zain, Rozilawati
Md. Sap, Mohd. Noor
Bakri, Aryati
Study of clustering trechniques in data mining for climate data
title Study of clustering trechniques in data mining for climate data
title_full Study of clustering trechniques in data mining for climate data
title_fullStr Study of clustering trechniques in data mining for climate data
title_full_unstemmed Study of clustering trechniques in data mining for climate data
title_short Study of clustering trechniques in data mining for climate data
title_sort study of clustering trechniques in data mining for climate data
topic ZA4050 Electronic information resources
url http://eprints.utm.my/4399/1/75056.pdf
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