Wavelet decomposition-NNARX model for flood prediction of Kelantan River, Malaysia

Flood is a major disaster that happens around the world. It has caused the loss of many precious lives and massive destruction of property. The possibility of flood can be determined depends on many factors that consist of rainfall, structure of the river, flow rate of the river et...

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Main Author: Anuar, Mohd Azrol Syafiee
Format: Thesis
Language:English
Published: 2018
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Online Access:http://psasir.upm.edu.my/id/eprint/84219/1/FK%202019%2095%20-%20ir.pdf
http://psasir.upm.edu.my/id/eprint/84219/
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spelling my.upm.eprints.842192022-01-04T02:27:53Z http://psasir.upm.edu.my/id/eprint/84219/ Wavelet decomposition-NNARX model for flood prediction of Kelantan River, Malaysia Anuar, Mohd Azrol Syafiee Flood is a major disaster that happens around the world. It has caused the loss of many precious lives and massive destruction of property. The possibility of flood can be determined depends on many factors that consist of rainfall, structure of the river, flow rate of the river etc. One of the research challenges is to develop accurate prediction models and what improvement can be made to the forecasting model. The objective of this thesis is to improve the performance of the neural network model to predict the flood on the Kelantan River, Malaysia. A technique for modelling of nonlinear data of flood forecasting using wavelet decomposition-neural network autoregressive exogenous input (NNARX) approach is proposed. This thesis discusses the identification of parameters that involved in the forecasting field as rainfall value, flow rate of the river and the river water level. With the original data acquired, the data had been processing through to wavelet decomposition and filtered to generate a new set of input data for NNARX prediction model. This proposed technique has been compared with the non-wavelet NNARX. The experimental result show that the proposed approach provides better testing performance compared to its counterpart, which the mean square error obtained is 2.0491e⁻⁴ while the normal NNARX is 6.1642e⁻⁴. 2018-12-23 Thesis NonPeerReviewed text en http://psasir.upm.edu.my/id/eprint/84219/1/FK%202019%2095%20-%20ir.pdf Anuar, Mohd Azrol Syafiee (2018) Wavelet decomposition-NNARX model for flood prediction of Kelantan River, Malaysia. Masters thesis, Universiti Putra Malaysia. Wavelets (Mathematics) Flood prediction
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
language English
topic Wavelets (Mathematics)
Flood prediction
spellingShingle Wavelets (Mathematics)
Flood prediction
Anuar, Mohd Azrol Syafiee
Wavelet decomposition-NNARX model for flood prediction of Kelantan River, Malaysia
description Flood is a major disaster that happens around the world. It has caused the loss of many precious lives and massive destruction of property. The possibility of flood can be determined depends on many factors that consist of rainfall, structure of the river, flow rate of the river etc. One of the research challenges is to develop accurate prediction models and what improvement can be made to the forecasting model. The objective of this thesis is to improve the performance of the neural network model to predict the flood on the Kelantan River, Malaysia. A technique for modelling of nonlinear data of flood forecasting using wavelet decomposition-neural network autoregressive exogenous input (NNARX) approach is proposed. This thesis discusses the identification of parameters that involved in the forecasting field as rainfall value, flow rate of the river and the river water level. With the original data acquired, the data had been processing through to wavelet decomposition and filtered to generate a new set of input data for NNARX prediction model. This proposed technique has been compared with the non-wavelet NNARX. The experimental result show that the proposed approach provides better testing performance compared to its counterpart, which the mean square error obtained is 2.0491e⁻⁴ while the normal NNARX is 6.1642e⁻⁴.
format Thesis
author Anuar, Mohd Azrol Syafiee
author_facet Anuar, Mohd Azrol Syafiee
author_sort Anuar, Mohd Azrol Syafiee
title Wavelet decomposition-NNARX model for flood prediction of Kelantan River, Malaysia
title_short Wavelet decomposition-NNARX model for flood prediction of Kelantan River, Malaysia
title_full Wavelet decomposition-NNARX model for flood prediction of Kelantan River, Malaysia
title_fullStr Wavelet decomposition-NNARX model for flood prediction of Kelantan River, Malaysia
title_full_unstemmed Wavelet decomposition-NNARX model for flood prediction of Kelantan River, Malaysia
title_sort wavelet decomposition-nnarx model for flood prediction of kelantan river, malaysia
publishDate 2018
url http://psasir.upm.edu.my/id/eprint/84219/1/FK%202019%2095%20-%20ir.pdf
http://psasir.upm.edu.my/id/eprint/84219/
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score 13.188404