Enhancing sediment transport predictions through machine learning-based multi-scenario regression models

Machine learning is one effective way of increasing the accuracy of sediment transport models. Machine learning captures patterns in the sequence of both structured and unstructured data and uses it for forecasting. In this research, the different regression models were train to forecast sediment da...

Full description

Saved in:
Bibliographic Details
Main Authors: Abid Almubaidin M.A., Latif S.D., Balan K., Ahmed A.N., El-Shafie A.
Other Authors: 58729517300
Format: Article
Published: Elsevier B.V. 2024
Subjects:
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.uniten.dspace-33845
record_format dspace
spelling my.uniten.dspace-338452024-10-14T11:17:20Z Enhancing sediment transport predictions through machine learning-based multi-scenario regression models Abid Almubaidin M.A. Latif S.D. Balan K. Ahmed A.N. El-Shafie A. 58729517300 57216081524 58729125400 57214837520 16068189400 ediment transport modelling Ensemble of trees Gaussian process regression Kernel approximation Linear regression Regression trees Support vector machines Forecasting Gaussian distribution Gaussian noise (electronic) Learning systems Linear regression Mean square error Sediment transport Sedimentation Suspended sediments Ediment transport modeling Ensemble of tree Gaussian process regression Kernel approximation Machine-learning Percentage error Regression modelling Regression trees Support vectors machine Transport modelling Support vector machines Machine learning is one effective way of increasing the accuracy of sediment transport models. Machine learning captures patterns in the sequence of both structured and unstructured data and uses it for forecasting. In this research, the different regression models were train to forecast sediment data using 8 years of measured sediment data collected in Sg. Linggui suspended sediment station. Data from different scenarios were used where each scenario indicates the number of lags. Seven regression models, namely, Linear Regression, Regression Trees, Support Vector Machines, Gaussian Process Regression, Kernel Approximation, Ensemble of Trees, and Neural Network were trained using the data and compared. The trained models were evaluated using Root Mean Square Error (RMSE) and Coefficient of Determination (R2). The best-performing models from two different types of regression models were chosen and they were tested using the test data to find the Relative Percentage Error (RPE) of the predicted data. The Exponential Gaussian Process Regression model performs much better than the other models in terms of RMSE and R2 values. When the exponential models from all 3 scenarios are compared, scenario 3 seems to have a better-performing model but only by a very small margin, after using testing data, the result shows scenario 3 has less RPE compared to other models. Hence, it can be deduced that the exponential gaussian process regression model from scenario 3 is the best-performing model overall in terms of RSME, R2, and RPE. � 2023 Final 2024-10-14T03:17:20Z 2024-10-14T03:17:20Z 2023 Article 10.1016/j.rineng.2023.101585 2-s2.0-85178166466 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85178166466&doi=10.1016%2fj.rineng.2023.101585&partnerID=40&md5=cc27c78e558cddf089fc77ef35a0146a https://irepository.uniten.edu.my/handle/123456789/33845 20 101585 All Open Access Gold Open Access Elsevier B.V. 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/
topic ediment transport modelling
Ensemble of trees
Gaussian process regression
Kernel approximation
Linear regression
Regression trees
Support vector machines
Forecasting
Gaussian distribution
Gaussian noise (electronic)
Learning systems
Linear regression
Mean square error
Sediment transport
Sedimentation
Suspended sediments
Ediment transport modeling
Ensemble of tree
Gaussian process regression
Kernel approximation
Machine-learning
Percentage error
Regression modelling
Regression trees
Support vectors machine
Transport modelling
Support vector machines
spellingShingle ediment transport modelling
Ensemble of trees
Gaussian process regression
Kernel approximation
Linear regression
Regression trees
Support vector machines
Forecasting
Gaussian distribution
Gaussian noise (electronic)
Learning systems
Linear regression
Mean square error
Sediment transport
Sedimentation
Suspended sediments
Ediment transport modeling
Ensemble of tree
Gaussian process regression
Kernel approximation
Machine-learning
Percentage error
Regression modelling
Regression trees
Support vectors machine
Transport modelling
Support vector machines
Abid Almubaidin M.A.
Latif S.D.
Balan K.
Ahmed A.N.
El-Shafie A.
Enhancing sediment transport predictions through machine learning-based multi-scenario regression models
description Machine learning is one effective way of increasing the accuracy of sediment transport models. Machine learning captures patterns in the sequence of both structured and unstructured data and uses it for forecasting. In this research, the different regression models were train to forecast sediment data using 8 years of measured sediment data collected in Sg. Linggui suspended sediment station. Data from different scenarios were used where each scenario indicates the number of lags. Seven regression models, namely, Linear Regression, Regression Trees, Support Vector Machines, Gaussian Process Regression, Kernel Approximation, Ensemble of Trees, and Neural Network were trained using the data and compared. The trained models were evaluated using Root Mean Square Error (RMSE) and Coefficient of Determination (R2). The best-performing models from two different types of regression models were chosen and they were tested using the test data to find the Relative Percentage Error (RPE) of the predicted data. The Exponential Gaussian Process Regression model performs much better than the other models in terms of RMSE and R2 values. When the exponential models from all 3 scenarios are compared, scenario 3 seems to have a better-performing model but only by a very small margin, after using testing data, the result shows scenario 3 has less RPE compared to other models. Hence, it can be deduced that the exponential gaussian process regression model from scenario 3 is the best-performing model overall in terms of RSME, R2, and RPE. � 2023
author2 58729517300
author_facet 58729517300
Abid Almubaidin M.A.
Latif S.D.
Balan K.
Ahmed A.N.
El-Shafie A.
format Article
author Abid Almubaidin M.A.
Latif S.D.
Balan K.
Ahmed A.N.
El-Shafie A.
author_sort Abid Almubaidin M.A.
title Enhancing sediment transport predictions through machine learning-based multi-scenario regression models
title_short Enhancing sediment transport predictions through machine learning-based multi-scenario regression models
title_full Enhancing sediment transport predictions through machine learning-based multi-scenario regression models
title_fullStr Enhancing sediment transport predictions through machine learning-based multi-scenario regression models
title_full_unstemmed Enhancing sediment transport predictions through machine learning-based multi-scenario regression models
title_sort enhancing sediment transport predictions through machine learning-based multi-scenario regression models
publisher Elsevier B.V.
publishDate 2024
_version_ 1814061026549694464
score 13.214268