Runoff forecasting artificial neural network for an idealized catchment

A study investigating the forecast of runoff for an overland flow using the artificial neural network was carried out. Data from an experiment which includes rainfall data collected from 6 October 2002, 14 October 2002, 27 October 2002, 3 November 2002, 13 November 2002, 17 November 2002, 18 Novem...

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Main Author: Muhammad Shafi Bueari.
Other Authors: Chua Hock Chye Lloyd
Format: Final Year Project
Language:English
Published: 2010
Subjects:
Online Access:http://hdl.handle.net/10356/40940
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-409402023-03-03T16:52:48Z Runoff forecasting artificial neural network for an idealized catchment Muhammad Shafi Bueari. Chua Hock Chye Lloyd School of Civil and Environmental Engineering DRNTU::Engineering::Civil engineering::Water resources A study investigating the forecast of runoff for an overland flow using the artificial neural network was carried out. Data from an experiment which includes rainfall data collected from 6 October 2002, 14 October 2002, 27 October 2002, 3 November 2002, 13 November 2002, 17 November 2002, 18 November 2002, 22 November 2002 and 5 December 2002, 7 December 2002 was analyzed. In this study, a total of six ANN models were used. They are Rt_Rt-8, Rt_Rt-8Qt, Rt-4_Rt-6, Rt-4_Rt-6Qt, Qt and Qt- 1_Qt. Feed forward neural network with back-propagation algorithm was selected as the modeling tool. MATLAB will be used to run the artificial neural network. Different sets of ANN models were used and their accuracy was based on the comparison of Nash‐Sutcliffe efficiency (NS), R2, mean absolute error(MAE) and root mean square error (RMSE). Results from the ANN model were compared with Constant model and Autoregressive moving average (ARMA). It has been found that among all the models used in this study, ANN models show a good generalization of rainfall-runoff relationship and is better than the other two models that have been used in this study. Upon comparing the NS, R2, MAE, RMSE and the number of shift, Rt_Rt-8 and Rt_Rt-8Qt shows that it is the best rainfall runoff model for this study. Rt_Rt-8 will be useful to forecast early lead time and Rt_Rt-8Qt will be useful to forecast at lead time greater than Qt+4. ANN models are still preferred in the forecasting of rainfall runoff in this study due to its ability to train and learn the data inputs much efficiently as compared to ARMA and Constant models. Bachelor of Engineering 2010-06-25T00:57:27Z 2010-06-25T00:57:27Z 2010 2010 Final Year Project (FYP) http://hdl.handle.net/10356/40940 en Nanyang Technological University 38 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Civil engineering::Water resources
spellingShingle DRNTU::Engineering::Civil engineering::Water resources
Muhammad Shafi Bueari.
Runoff forecasting artificial neural network for an idealized catchment
description A study investigating the forecast of runoff for an overland flow using the artificial neural network was carried out. Data from an experiment which includes rainfall data collected from 6 October 2002, 14 October 2002, 27 October 2002, 3 November 2002, 13 November 2002, 17 November 2002, 18 November 2002, 22 November 2002 and 5 December 2002, 7 December 2002 was analyzed. In this study, a total of six ANN models were used. They are Rt_Rt-8, Rt_Rt-8Qt, Rt-4_Rt-6, Rt-4_Rt-6Qt, Qt and Qt- 1_Qt. Feed forward neural network with back-propagation algorithm was selected as the modeling tool. MATLAB will be used to run the artificial neural network. Different sets of ANN models were used and their accuracy was based on the comparison of Nash‐Sutcliffe efficiency (NS), R2, mean absolute error(MAE) and root mean square error (RMSE). Results from the ANN model were compared with Constant model and Autoregressive moving average (ARMA). It has been found that among all the models used in this study, ANN models show a good generalization of rainfall-runoff relationship and is better than the other two models that have been used in this study. Upon comparing the NS, R2, MAE, RMSE and the number of shift, Rt_Rt-8 and Rt_Rt-8Qt shows that it is the best rainfall runoff model for this study. Rt_Rt-8 will be useful to forecast early lead time and Rt_Rt-8Qt will be useful to forecast at lead time greater than Qt+4. ANN models are still preferred in the forecasting of rainfall runoff in this study due to its ability to train and learn the data inputs much efficiently as compared to ARMA and Constant models.
author2 Chua Hock Chye Lloyd
author_facet Chua Hock Chye Lloyd
Muhammad Shafi Bueari.
format Final Year Project
author Muhammad Shafi Bueari.
author_sort Muhammad Shafi Bueari.
title Runoff forecasting artificial neural network for an idealized catchment
title_short Runoff forecasting artificial neural network for an idealized catchment
title_full Runoff forecasting artificial neural network for an idealized catchment
title_fullStr Runoff forecasting artificial neural network for an idealized catchment
title_full_unstemmed Runoff forecasting artificial neural network for an idealized catchment
title_sort runoff forecasting artificial neural network for an idealized catchment
publishDate 2010
url http://hdl.handle.net/10356/40940
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