Flood disaster prediction model based on artificial neural network : a case study of Kuala Kangsar Perak.

Natural flood disaster frequently happens in Malaysia especially during monsoon season and Kuala Kangsar, Perak is one of the cities with the frequent record of a natural flood disaster. Previous flood disaster faced by this city showed the failure in notify ing the citizen with sufficient time for...

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Main Authors: Shahrir, Nurul Syarafina, Ahmad, Norulhusna, Ahmad, Robiah, Dziyauddin, Rudzidatul Akmam
Format: Conference or Workshop Item
Published: ASIAN NETWORK ON CLIMATE SCIENCE AND TECHNOLOGY 2016
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Online Access:http://eprints.utm.my/id/eprint/66679/
http://mjiit.utm.my/dppc/2016/11/11/cfcce2016/
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Institution: Universiti Teknologi Malaysia
id my.utm.66679
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spelling my.utm.666792017-11-22T00:45:04Z http://eprints.utm.my/id/eprint/66679/ Flood disaster prediction model based on artificial neural network : a case study of Kuala Kangsar Perak. Shahrir, Nurul Syarafina Ahmad, Norulhusna Ahmad, Robiah Dziyauddin, Rudzidatul Akmam G70.212-70.215 Geographic information system Natural flood disaster frequently happens in Malaysia especially during monsoon season and Kuala Kangsar, Perak is one of the cities with the frequent record of a natural flood disaster. Previous flood disaster faced by this city showed the failure in notify ing the citizen with sufficient time for preparation and evacuation. The authority in charge of the flood disaster in Kuala Kangsar depends on the real time monitoring from the hydrological sensor located at several stations along the main river. The real time information from hydrological sensor failed to provide early notification and warning to the public. Although many hydrological sensors available at the stations, only water level sensors and rainfall sensors are used by authority for flood monitoring. This study developed flood prediction model using artificial intelligent to predict the incoming flood in Kuala Kangsar area based on Artificial Neural Network (ANN). The flood prediction model is expected to predict the incoming flood disaster by using information from the variety of hydrological sensors. The study finds that the proposed ANN model based on Nonlinear Autoregressive Network with Exogenous Inputs (NARX) has better performance than other models with the correlation coefficient is equal to 0.98930. The NARX model of flood prediction developed in this study can be referred to future flood prediction model in Kuala Kangsar, Perak. ASIAN NETWORK ON CLIMATE SCIENCE AND TECHNOLOGY 2016-01-11 Conference or Workshop Item PeerReviewed Shahrir, Nurul Syarafina and Ahmad, Norulhusna and Ahmad, Robiah and Dziyauddin, Rudzidatul Akmam (2016) Flood disaster prediction model based on artificial neural network : a case study of Kuala Kangsar Perak. In: Conference on Flood Catastrophes in a Changing Environment (CFCCE2016), 2016, Kuala Lumpur, Malaysia. http://mjiit.utm.my/dppc/2016/11/11/cfcce2016/
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic G70.212-70.215 Geographic information system
spellingShingle G70.212-70.215 Geographic information system
Shahrir, Nurul Syarafina
Ahmad, Norulhusna
Ahmad, Robiah
Dziyauddin, Rudzidatul Akmam
Flood disaster prediction model based on artificial neural network : a case study of Kuala Kangsar Perak.
description Natural flood disaster frequently happens in Malaysia especially during monsoon season and Kuala Kangsar, Perak is one of the cities with the frequent record of a natural flood disaster. Previous flood disaster faced by this city showed the failure in notify ing the citizen with sufficient time for preparation and evacuation. The authority in charge of the flood disaster in Kuala Kangsar depends on the real time monitoring from the hydrological sensor located at several stations along the main river. The real time information from hydrological sensor failed to provide early notification and warning to the public. Although many hydrological sensors available at the stations, only water level sensors and rainfall sensors are used by authority for flood monitoring. This study developed flood prediction model using artificial intelligent to predict the incoming flood in Kuala Kangsar area based on Artificial Neural Network (ANN). The flood prediction model is expected to predict the incoming flood disaster by using information from the variety of hydrological sensors. The study finds that the proposed ANN model based on Nonlinear Autoregressive Network with Exogenous Inputs (NARX) has better performance than other models with the correlation coefficient is equal to 0.98930. The NARX model of flood prediction developed in this study can be referred to future flood prediction model in Kuala Kangsar, Perak.
format Conference or Workshop Item
author Shahrir, Nurul Syarafina
Ahmad, Norulhusna
Ahmad, Robiah
Dziyauddin, Rudzidatul Akmam
author_facet Shahrir, Nurul Syarafina
Ahmad, Norulhusna
Ahmad, Robiah
Dziyauddin, Rudzidatul Akmam
author_sort Shahrir, Nurul Syarafina
title Flood disaster prediction model based on artificial neural network : a case study of Kuala Kangsar Perak.
title_short Flood disaster prediction model based on artificial neural network : a case study of Kuala Kangsar Perak.
title_full Flood disaster prediction model based on artificial neural network : a case study of Kuala Kangsar Perak.
title_fullStr Flood disaster prediction model based on artificial neural network : a case study of Kuala Kangsar Perak.
title_full_unstemmed Flood disaster prediction model based on artificial neural network : a case study of Kuala Kangsar Perak.
title_sort flood disaster prediction model based on artificial neural network : a case study of kuala kangsar perak.
publisher ASIAN NETWORK ON CLIMATE SCIENCE AND TECHNOLOGY
publishDate 2016
url http://eprints.utm.my/id/eprint/66679/
http://mjiit.utm.my/dppc/2016/11/11/cfcce2016/
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