Reservoir gate opening classification using multiple classifier system with ant system-based feature decomposition

Classification of reservoir gate opening (RGO) is an important task in flood management.Reservoir water level has been used to determine the number of gates to be opened when flood is imminent to prevent disaster.Predicting the number of gates to be opened is crucial to avoid any disaster. Multiple...

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Main Authors: Husin, Abdullah, Ku-Mahamud, Ku Ruhana
Format: Conference or Workshop Item
Language:English
Published: 2017
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Online Access:http://repo.uum.edu.my/22805/1/ICOCI%202017%2099-104.pdf
http://repo.uum.edu.my/22805/
http://icoci.cms.net.my/PROCEEDINGS/2017/Pdf_Version_Chap02e/PID85-99-104e.pdf
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spelling my.uum.repo.228052017-07-26T07:55:58Z http://repo.uum.edu.my/22805/ Reservoir gate opening classification using multiple classifier system with ant system-based feature decomposition Husin, Abdullah Ku-Mahamud, Ku Ruhana QA75 Electronic computers. Computer science Classification of reservoir gate opening (RGO) is an important task in flood management.Reservoir water level has been used to determine the number of gates to be opened when flood is imminent to prevent disaster.Predicting the number of gates to be opened is crucial to avoid any disaster. Multiple classifier system has been shown to provide better classification accuracy as compared to single classifier system.However, there is no guideline on the number of classifiers to be combined and no measurement was proposed to measure the compactness of the classifiers.This study proposes an ant system-based feature decomposition approach to develop a multiple classifier ensemble for classification of RGO.Experiments have been conducted using the k-nearest neighbour, decision tree, nearest mean classifier and linear discriminant analysis as base classifier, and performance of ant system has been compared with random subspace method.Based on the results, it can be concluded that the multiple classifier with ant system-based feature decomposition produced better classification accuracy than random subspace method. Best classification results were obtained when multiple decision tree is constructed to make predictions of RGO with an average accuracy of 89.17%. This method is expected to be useful to apply for RGO classification and future work can be done to include rainfall precipitation besides reservoir water level. 2017-04-25 Conference or Workshop Item PeerReviewed application/pdf en http://repo.uum.edu.my/22805/1/ICOCI%202017%2099-104.pdf Husin, Abdullah and Ku-Mahamud, Ku Ruhana (2017) Reservoir gate opening classification using multiple classifier system with ant system-based feature decomposition. In: 6th International Conference on Computing & Informatics (ICOCI2017), 25 - 27 April 2017, Kuala Lumpur. http://icoci.cms.net.my/PROCEEDINGS/2017/Pdf_Version_Chap02e/PID85-99-104e.pdf
institution Universiti Utara Malaysia
building UUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Utara Malaysia
content_source UUM Institutionali Repository
url_provider http://repo.uum.edu.my/
language English
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Husin, Abdullah
Ku-Mahamud, Ku Ruhana
Reservoir gate opening classification using multiple classifier system with ant system-based feature decomposition
description Classification of reservoir gate opening (RGO) is an important task in flood management.Reservoir water level has been used to determine the number of gates to be opened when flood is imminent to prevent disaster.Predicting the number of gates to be opened is crucial to avoid any disaster. Multiple classifier system has been shown to provide better classification accuracy as compared to single classifier system.However, there is no guideline on the number of classifiers to be combined and no measurement was proposed to measure the compactness of the classifiers.This study proposes an ant system-based feature decomposition approach to develop a multiple classifier ensemble for classification of RGO.Experiments have been conducted using the k-nearest neighbour, decision tree, nearest mean classifier and linear discriminant analysis as base classifier, and performance of ant system has been compared with random subspace method.Based on the results, it can be concluded that the multiple classifier with ant system-based feature decomposition produced better classification accuracy than random subspace method. Best classification results were obtained when multiple decision tree is constructed to make predictions of RGO with an average accuracy of 89.17%. This method is expected to be useful to apply for RGO classification and future work can be done to include rainfall precipitation besides reservoir water level.
format Conference or Workshop Item
author Husin, Abdullah
Ku-Mahamud, Ku Ruhana
author_facet Husin, Abdullah
Ku-Mahamud, Ku Ruhana
author_sort Husin, Abdullah
title Reservoir gate opening classification using multiple classifier system with ant system-based feature decomposition
title_short Reservoir gate opening classification using multiple classifier system with ant system-based feature decomposition
title_full Reservoir gate opening classification using multiple classifier system with ant system-based feature decomposition
title_fullStr Reservoir gate opening classification using multiple classifier system with ant system-based feature decomposition
title_full_unstemmed Reservoir gate opening classification using multiple classifier system with ant system-based feature decomposition
title_sort reservoir gate opening classification using multiple classifier system with ant system-based feature decomposition
publishDate 2017
url http://repo.uum.edu.my/22805/1/ICOCI%202017%2099-104.pdf
http://repo.uum.edu.my/22805/
http://icoci.cms.net.my/PROCEEDINGS/2017/Pdf_Version_Chap02e/PID85-99-104e.pdf
_version_ 1644283621570248704
score 13.159267