A comparison of machine learning models for suspended sediment load classification

The suspended sediment load (SSL) is one of the major hydrological processes affecting the sustainability of river planning and management. Moreover, sediments have a significant impact on dam operation and reservoir capacity. To this end, reliable and applicable models are required to compute and c...

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Main Authors: AlDahoul N., Ahmed A.N., Allawi M.F., Sherif M., Sefelnasr A., Chau K.-W., El-Shafie A.
Other Authors: 56656478800
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Published: Taylor and Francis Ltd. 2023
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spelling my.uniten.dspace-271902023-05-29T17:40:44Z A comparison of machine learning models for suspended sediment load classification AlDahoul N. Ahmed A.N. Allawi M.F. Sherif M. Sefelnasr A. Chau K.-W. El-Shafie A. 56656478800 57214837520 57057678400 7005414714 6505592467 7202674661 16068189400 The suspended sediment load (SSL) is one of the major hydrological processes affecting the sustainability of river planning and management. Moreover, sediments have a significant impact on dam operation and reservoir capacity. To this end, reliable and applicable models are required to compute and classify the SSL in rivers. The application of machine learning models has become common to solve complex problems such as SSL modeling. The present research investigated the ability of several models to classify the SSL data. This investigation aims to explore a new version of machine learning classifiers for SSL classification at Johor River, Malaysia. Extreme gradient boosting, random forest, support vector machine, multi-layer perceptron and k-nearest neighbors classifiers have been used to classify the SSL data. The sediment values are divided into multiple discrete ranges, where each range can be considered as one category or class. This study illustrates two different scenarios related to the number of categories, which are five and 10 categories, with two time scales, daily and weekly. The performance of the proposed models was evaluated by several statistical indicators. Overall, the proposed models achieved excellent classification of the SSL data under various scenarios. � 2022 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group. Final 2023-05-29T09:40:44Z 2023-05-29T09:40:44Z 2022 Article 10.1080/19942060.2022.2073565 2-s2.0-85131082973 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85131082973&doi=10.1080%2f19942060.2022.2073565&partnerID=40&md5=12d87d57d37a067c1c7cd87ac65c01b8 https://irepository.uniten.edu.my/handle/123456789/27190 16 1 1211 1232 All Open Access, Gold Taylor and Francis Ltd. Scopus
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/
description The suspended sediment load (SSL) is one of the major hydrological processes affecting the sustainability of river planning and management. Moreover, sediments have a significant impact on dam operation and reservoir capacity. To this end, reliable and applicable models are required to compute and classify the SSL in rivers. The application of machine learning models has become common to solve complex problems such as SSL modeling. The present research investigated the ability of several models to classify the SSL data. This investigation aims to explore a new version of machine learning classifiers for SSL classification at Johor River, Malaysia. Extreme gradient boosting, random forest, support vector machine, multi-layer perceptron and k-nearest neighbors classifiers have been used to classify the SSL data. The sediment values are divided into multiple discrete ranges, where each range can be considered as one category or class. This study illustrates two different scenarios related to the number of categories, which are five and 10 categories, with two time scales, daily and weekly. The performance of the proposed models was evaluated by several statistical indicators. Overall, the proposed models achieved excellent classification of the SSL data under various scenarios. � 2022 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group.
author2 56656478800
author_facet 56656478800
AlDahoul N.
Ahmed A.N.
Allawi M.F.
Sherif M.
Sefelnasr A.
Chau K.-W.
El-Shafie A.
format Article
author AlDahoul N.
Ahmed A.N.
Allawi M.F.
Sherif M.
Sefelnasr A.
Chau K.-W.
El-Shafie A.
spellingShingle AlDahoul N.
Ahmed A.N.
Allawi M.F.
Sherif M.
Sefelnasr A.
Chau K.-W.
El-Shafie A.
A comparison of machine learning models for suspended sediment load classification
author_sort AlDahoul N.
title A comparison of machine learning models for suspended sediment load classification
title_short A comparison of machine learning models for suspended sediment load classification
title_full A comparison of machine learning models for suspended sediment load classification
title_fullStr A comparison of machine learning models for suspended sediment load classification
title_full_unstemmed A comparison of machine learning models for suspended sediment load classification
title_sort comparison of machine learning models for suspended sediment load classification
publisher Taylor and Francis Ltd.
publishDate 2023
_version_ 1806427657731047424
score 13.222552