Towards a time and cost effective approach to water quality index class prediction

The development of water quality prediction models is an important step towards better water quality management of rivers. The traditional method for computing WQI is always associated with errors due to the protracted analysis of the water quality parameters in addition to the great effort and time...

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Main Authors: Ho, J.Y., Afan, H.A., El-Shafie, A.H., Koting, S.B., Mohd, N.S., Jaafar, W.Z.B., Lai Sai, H., Malek, M.A., Ahmed, A.N., Mohtar, W.H.M.W., Elshorbagy, A., El-Shafie, A.
Format: Article
Language:English
Published: 2020
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Institution: Universiti Tenaga Nasional
Language: English
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spelling my.uniten.dspace-128982020-07-07T04:34:27Z Towards a time and cost effective approach to water quality index class prediction Ho, J.Y. Afan, H.A. El-Shafie, A.H. Koting, S.B. Mohd, N.S. Jaafar, W.Z.B. Lai Sai, H. Malek, M.A. Ahmed, A.N. Mohtar, W.H.M.W. Elshorbagy, A. El-Shafie, A. The development of water quality prediction models is an important step towards better water quality management of rivers. The traditional method for computing WQI is always associated with errors due to the protracted analysis of the water quality parameters in addition to the great effort and time involved in gathering and analyzing water samples. In addition, the cost of identifying the magnitude of some of the parameters through experimental testing is very high. The water quality of rivers in Malaysia is ranked into five classes based on water quality index (WQI). WQI is function of six water quality parameters: ammoniac nitrogen (NH3-N), biochemical oxygen demand (BOD), chemical oxygen demand (COD), dissolved oxygen (DO), pH, and suspended solids (SS). In this research, the decision tree machine learning technique is used to predict the WQI for the Klang River and its classification within a specific water quality class. Klang River is one of the most polluted rivers in Malaysia. Modeling experiments are designed to test the prediction and classification accuracy of the model based on various scenarios composed of different water quality parameters. Results show that the proposed prediction model has a promising potential to predict the class of the WQI. Moreover, the proposed model offers a more efficient process and cost-effective approach for the computation and prediction of WQI. © 2019 Elsevier B.V. 2020-02-03T03:27:39Z 2020-02-03T03:27:39Z 2019 Article 10.1016/j.jhydrol.2019.05.016 en
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
language English
description The development of water quality prediction models is an important step towards better water quality management of rivers. The traditional method for computing WQI is always associated with errors due to the protracted analysis of the water quality parameters in addition to the great effort and time involved in gathering and analyzing water samples. In addition, the cost of identifying the magnitude of some of the parameters through experimental testing is very high. The water quality of rivers in Malaysia is ranked into five classes based on water quality index (WQI). WQI is function of six water quality parameters: ammoniac nitrogen (NH3-N), biochemical oxygen demand (BOD), chemical oxygen demand (COD), dissolved oxygen (DO), pH, and suspended solids (SS). In this research, the decision tree machine learning technique is used to predict the WQI for the Klang River and its classification within a specific water quality class. Klang River is one of the most polluted rivers in Malaysia. Modeling experiments are designed to test the prediction and classification accuracy of the model based on various scenarios composed of different water quality parameters. Results show that the proposed prediction model has a promising potential to predict the class of the WQI. Moreover, the proposed model offers a more efficient process and cost-effective approach for the computation and prediction of WQI. © 2019 Elsevier B.V.
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author Ho, J.Y.
Afan, H.A.
El-Shafie, A.H.
Koting, S.B.
Mohd, N.S.
Jaafar, W.Z.B.
Lai Sai, H.
Malek, M.A.
Ahmed, A.N.
Mohtar, W.H.M.W.
Elshorbagy, A.
El-Shafie, A.
spellingShingle Ho, J.Y.
Afan, H.A.
El-Shafie, A.H.
Koting, S.B.
Mohd, N.S.
Jaafar, W.Z.B.
Lai Sai, H.
Malek, M.A.
Ahmed, A.N.
Mohtar, W.H.M.W.
Elshorbagy, A.
El-Shafie, A.
Towards a time and cost effective approach to water quality index class prediction
author_facet Ho, J.Y.
Afan, H.A.
El-Shafie, A.H.
Koting, S.B.
Mohd, N.S.
Jaafar, W.Z.B.
Lai Sai, H.
Malek, M.A.
Ahmed, A.N.
Mohtar, W.H.M.W.
Elshorbagy, A.
El-Shafie, A.
author_sort Ho, J.Y.
title Towards a time and cost effective approach to water quality index class prediction
title_short Towards a time and cost effective approach to water quality index class prediction
title_full Towards a time and cost effective approach to water quality index class prediction
title_fullStr Towards a time and cost effective approach to water quality index class prediction
title_full_unstemmed Towards a time and cost effective approach to water quality index class prediction
title_sort towards a time and cost effective approach to water quality index class prediction
publishDate 2020
_version_ 1672614188171657216