Predicting sea levels using ML algorithms in selected locations along coastal Malaysia

In consideration of the distinct behavior of machine learning (ML) algorithms, six well-defined ML used were carried out in this study for predicting sea level on a day-to-day basis. Data compiled from 1985 to 2018 was utilized for training and testing the developed models. An assessment of the mult...

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Main Authors: Hazrin N.A., Chong K.L., Huang Y.F., Ahmed A.N., Ng J.L., Koo C.H., Tan K.W., Sherif M., El-shafie A.
Other Authors: 58550394200
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Published: Elsevier Ltd 2024
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spelling my.uniten.dspace-340452024-10-14T11:17:46Z Predicting sea levels using ML algorithms in selected locations along coastal Malaysia Hazrin N.A. Chong K.L. Huang Y.F. Ahmed A.N. Ng J.L. Koo C.H. Tan K.W. Sherif M. El-shafie A. 58550394200 57208482172 55807263900 57214837520 57192698412 57204843657 54786091800 7005414714 16068189400 Coastal regions Machine learning Sea level rise prediction In consideration of the distinct behavior of machine learning (ML) algorithms, six well-defined ML used were carried out in this study for predicting sea level on a day-to-day basis. Data compiled from 1985 to 2018 was utilized for training and testing the developed models. An assessment of the multiple statistics-driven regression algorithms resulted such that each tested location was associated with a particular preferred model. The following were the developed best models for their respective study areas: In Peninsular Malaysia, the interactions linear regression model was the best at Pulau Langkawi (RMSE = 19.066), the Matern 5/2 gaussian process regression model at Geting (RMSE = 49.891), and the trilayered artificial neural network at Pulau Pinang (RMSE = 20.026), while the linear regression model was the best at Sandakan in Sabah, East Malaysia (RMSE = 14.054). Other metrics, such as MAE and R-square, were also at their best values, each providing its best values, further substantiating the RMSE respectively, at each of the study areas. These empirical statistics (or metrics) also revealed that despite employing sea level as the sole parameter, results obtained were exceptional better when utilizing a 7-day lag, regardless of the model used. Notably, lag variables with less than a 7-day lag could degrade the model's accuracy in representing ground reality. The study emphasizes the importance of thorough training and testing of ML to aid decision-makers in developing mitigation actions for the climate change phenomena of sea level rise through reliable ML. � 2023 Final 2024-10-14T03:17:45Z 2024-10-14T03:17:45Z 2023 Article 10.1016/j.heliyon.2023.e19426 2-s2.0-85168853997 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85168853997&doi=10.1016%2fj.heliyon.2023.e19426&partnerID=40&md5=8125708b70c895e264e6c132019e0772 https://irepository.uniten.edu.my/handle/123456789/34045 9 9 e19426 All Open Access Gold Open Access Green Open Access Elsevier 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/
topic Coastal regions
Machine learning
Sea level rise prediction
spellingShingle Coastal regions
Machine learning
Sea level rise prediction
Hazrin N.A.
Chong K.L.
Huang Y.F.
Ahmed A.N.
Ng J.L.
Koo C.H.
Tan K.W.
Sherif M.
El-shafie A.
Predicting sea levels using ML algorithms in selected locations along coastal Malaysia
description In consideration of the distinct behavior of machine learning (ML) algorithms, six well-defined ML used were carried out in this study for predicting sea level on a day-to-day basis. Data compiled from 1985 to 2018 was utilized for training and testing the developed models. An assessment of the multiple statistics-driven regression algorithms resulted such that each tested location was associated with a particular preferred model. The following were the developed best models for their respective study areas: In Peninsular Malaysia, the interactions linear regression model was the best at Pulau Langkawi (RMSE = 19.066), the Matern 5/2 gaussian process regression model at Geting (RMSE = 49.891), and the trilayered artificial neural network at Pulau Pinang (RMSE = 20.026), while the linear regression model was the best at Sandakan in Sabah, East Malaysia (RMSE = 14.054). Other metrics, such as MAE and R-square, were also at their best values, each providing its best values, further substantiating the RMSE respectively, at each of the study areas. These empirical statistics (or metrics) also revealed that despite employing sea level as the sole parameter, results obtained were exceptional better when utilizing a 7-day lag, regardless of the model used. Notably, lag variables with less than a 7-day lag could degrade the model's accuracy in representing ground reality. The study emphasizes the importance of thorough training and testing of ML to aid decision-makers in developing mitigation actions for the climate change phenomena of sea level rise through reliable ML. � 2023
author2 58550394200
author_facet 58550394200
Hazrin N.A.
Chong K.L.
Huang Y.F.
Ahmed A.N.
Ng J.L.
Koo C.H.
Tan K.W.
Sherif M.
El-shafie A.
format Article
author Hazrin N.A.
Chong K.L.
Huang Y.F.
Ahmed A.N.
Ng J.L.
Koo C.H.
Tan K.W.
Sherif M.
El-shafie A.
author_sort Hazrin N.A.
title Predicting sea levels using ML algorithms in selected locations along coastal Malaysia
title_short Predicting sea levels using ML algorithms in selected locations along coastal Malaysia
title_full Predicting sea levels using ML algorithms in selected locations along coastal Malaysia
title_fullStr Predicting sea levels using ML algorithms in selected locations along coastal Malaysia
title_full_unstemmed Predicting sea levels using ML algorithms in selected locations along coastal Malaysia
title_sort predicting sea levels using ml algorithms in selected locations along coastal malaysia
publisher Elsevier Ltd
publishDate 2024
_version_ 1814061101445283840
score 13.222552