THE 10–DAY RAINFALL PREDICTION MODEL IN INDRAMAYU DISTRICT : Abstract

</i><b>Abstract: <i></b><p align="justify"> Rainfall clustering can overcome the unfavourable data problem. Rainfall cluster have to revised as the effect of land use, land cover, climate and weather changes. Rainfall prediction by using ANFIS and wavelet demo...

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Main Author: <br> NIM. 224 03 010, Indragustari
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/6278
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Institution: Institut Teknologi Bandung
Language: Indonesia
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spelling id-itb.:62782007-03-13T17:55:43ZTHE 10–DAY RAINFALL PREDICTION MODEL IN INDRAMAYU DISTRICT : Abstract <br> NIM. 224 03 010, Indragustari Indonesia Theses INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/6278 </i><b>Abstract: <i></b><p align="justify"> Rainfall clustering can overcome the unfavourable data problem. Rainfall cluster have to revised as the effect of land use, land cover, climate and weather changes. Rainfall prediction by using ANFIS and wavelet demonstrate good skill for rainfall prediction.<p align="justify"> In this research clustering of rainfall using smallest euclidian distance from some principal components that obtained from principal component analysis and the test of the rainfall prediction technique with wavelet transform and ANFIS has been applied to mean of ten days rainfall data each group with variation length of input data at district of Indramayu.<p align="justify"> Cluster analysis of rainfall yield 6 (six) rainfall group referred as season prediction area. Here in after, wavelet spectrum analysis indicate that rainfall in all group dominant influent by monsoon, while effect from El Niño, inter–tropical convergence zone and Madden–Julian oscillation occur with weak intensity, and rainfall prediction verification in each season prediction area from both of technique using value of RMSE and Pearson Correlation. This verification show that longer input length yield more accurate prediction, accuracy of prediction both of technique differ to every season. Combination both of technique can yield more accurate prediction.</p> text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description </i><b>Abstract: <i></b><p align="justify"> Rainfall clustering can overcome the unfavourable data problem. Rainfall cluster have to revised as the effect of land use, land cover, climate and weather changes. Rainfall prediction by using ANFIS and wavelet demonstrate good skill for rainfall prediction.<p align="justify"> In this research clustering of rainfall using smallest euclidian distance from some principal components that obtained from principal component analysis and the test of the rainfall prediction technique with wavelet transform and ANFIS has been applied to mean of ten days rainfall data each group with variation length of input data at district of Indramayu.<p align="justify"> Cluster analysis of rainfall yield 6 (six) rainfall group referred as season prediction area. Here in after, wavelet spectrum analysis indicate that rainfall in all group dominant influent by monsoon, while effect from El Niño, inter–tropical convergence zone and Madden–Julian oscillation occur with weak intensity, and rainfall prediction verification in each season prediction area from both of technique using value of RMSE and Pearson Correlation. This verification show that longer input length yield more accurate prediction, accuracy of prediction both of technique differ to every season. Combination both of technique can yield more accurate prediction.</p>
format Theses
author <br> NIM. 224 03 010, Indragustari
spellingShingle <br> NIM. 224 03 010, Indragustari
THE 10–DAY RAINFALL PREDICTION MODEL IN INDRAMAYU DISTRICT : Abstract
author_facet <br> NIM. 224 03 010, Indragustari
author_sort <br> NIM. 224 03 010, Indragustari
title THE 10–DAY RAINFALL PREDICTION MODEL IN INDRAMAYU DISTRICT : Abstract
title_short THE 10–DAY RAINFALL PREDICTION MODEL IN INDRAMAYU DISTRICT : Abstract
title_full THE 10–DAY RAINFALL PREDICTION MODEL IN INDRAMAYU DISTRICT : Abstract
title_fullStr THE 10–DAY RAINFALL PREDICTION MODEL IN INDRAMAYU DISTRICT : Abstract
title_full_unstemmed THE 10–DAY RAINFALL PREDICTION MODEL IN INDRAMAYU DISTRICT : Abstract
title_sort 10ã‚–day rainfall prediction model in indramayu district : abstract
url https://digilib.itb.ac.id/gdl/view/6278
_version_ 1820663854251638784