Application of Long-Short Term Memory for Accurate Biochemical Oxygen Demand Prediction in Rivers through Water Quality Parameters
Evaluating water quality is crucial for preserving the quality of river water. However, the typical technique of getting biochemical oxygen demand (BOD) values via laboratory testing might take several days, delaying the application of real-time measurement to improve water quality. This paper sugge...
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2-s2.0-85176742856 Thamrin N.M.; Jaffar A.; Ali M.S.A.M.; Misnan M.F.; Yassin A.I.M.; Zan N.M.; Ibrahim N.N.L.N. Application of Long-Short Term Memory for Accurate Biochemical Oxygen Demand Prediction in Rivers through Water Quality Parameters 2023 Applications of Modelling and Simulation 7 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85176742856&partnerID=40&md5=291ab7bb967892afb27a0474a221a803 Evaluating water quality is crucial for preserving the quality of river water. However, the typical technique of getting biochemical oxygen demand (BOD) values via laboratory testing might take several days, delaying the application of real-time measurement to improve water quality. This paper suggests using machine learning to predict BOD values from eight water quality measurements. The BOD rate in the Klang River, Selangor, Malaysia, was estimated using the long short-term memory (LSTM) method. The model was trained using historical data collected from eleven water collection points along the river. The predictive test results indicated that the LSTM model with 8 water parameters as input gave the most accurate predictions compared to the models with 5 and 3 water parameters. The results of this study indicate that machine learning methods can be used to predict BOD levels in real-time. It enables water quality managers to enhance water quality and safeguard human health proactively. © 2023 The Authors. ARQII Publication 26008084 English Article |
author |
Thamrin N.M.; Jaffar A.; Ali M.S.A.M.; Misnan M.F.; Yassin A.I.M.; Zan N.M.; Ibrahim N.N.L.N. |
spellingShingle |
Thamrin N.M.; Jaffar A.; Ali M.S.A.M.; Misnan M.F.; Yassin A.I.M.; Zan N.M.; Ibrahim N.N.L.N. Application of Long-Short Term Memory for Accurate Biochemical Oxygen Demand Prediction in Rivers through Water Quality Parameters |
author_facet |
Thamrin N.M.; Jaffar A.; Ali M.S.A.M.; Misnan M.F.; Yassin A.I.M.; Zan N.M.; Ibrahim N.N.L.N. |
author_sort |
Thamrin N.M.; Jaffar A.; Ali M.S.A.M.; Misnan M.F.; Yassin A.I.M.; Zan N.M.; Ibrahim N.N.L.N. |
title |
Application of Long-Short Term Memory for Accurate Biochemical Oxygen Demand Prediction in Rivers through Water Quality Parameters |
title_short |
Application of Long-Short Term Memory for Accurate Biochemical Oxygen Demand Prediction in Rivers through Water Quality Parameters |
title_full |
Application of Long-Short Term Memory for Accurate Biochemical Oxygen Demand Prediction in Rivers through Water Quality Parameters |
title_fullStr |
Application of Long-Short Term Memory for Accurate Biochemical Oxygen Demand Prediction in Rivers through Water Quality Parameters |
title_full_unstemmed |
Application of Long-Short Term Memory for Accurate Biochemical Oxygen Demand Prediction in Rivers through Water Quality Parameters |
title_sort |
Application of Long-Short Term Memory for Accurate Biochemical Oxygen Demand Prediction in Rivers through Water Quality Parameters |
publishDate |
2023 |
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Applications of Modelling and Simulation |
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7 |
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url |
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85176742856&partnerID=40&md5=291ab7bb967892afb27a0474a221a803 |
description |
Evaluating water quality is crucial for preserving the quality of river water. However, the typical technique of getting biochemical oxygen demand (BOD) values via laboratory testing might take several days, delaying the application of real-time measurement to improve water quality. This paper suggests using machine learning to predict BOD values from eight water quality measurements. The BOD rate in the Klang River, Selangor, Malaysia, was estimated using the long short-term memory (LSTM) method. The model was trained using historical data collected from eleven water collection points along the river. The predictive test results indicated that the LSTM model with 8 water parameters as input gave the most accurate predictions compared to the models with 5 and 3 water parameters. The results of this study indicate that machine learning methods can be used to predict BOD levels in real-time. It enables water quality managers to enhance water quality and safeguard human health proactively. © 2023 The Authors. |
publisher |
ARQII Publication |
issn |
26008084 |
language |
English |
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Article |
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scopus |
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Scopus |
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1809677589035352064 |