Machine learning methods for better water quality prediction

In any aquatic system analysis, the modelling water quality parameters are of considerable significance. The traditional modelling methodologies are dependent on datasets that involve large amount of unknown or unspecified input data and generally consist of time-consuming processes. The implementat...

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Main Authors: Ahmed, Ali Najah, Othman, Faridah, Afan, Haitham Abdulmohsin, Ibrahim, Rusul Khaleel, Chow, Ming Fai, Hossain, Md Shabbir, Ehteram, Mohammad, El-Shafie, Ahmed
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Published: Elsevier 2019
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Online Access:http://eprints.um.edu.my/23899/
https://doi.org/10.1016/j.jhydrol.2019.124084
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spelling my.um.eprints.238992020-02-28T01:43:58Z http://eprints.um.edu.my/23899/ Machine learning methods for better water quality prediction Ahmed, Ali Najah Othman, Faridah Afan, Haitham Abdulmohsin Ibrahim, Rusul Khaleel Chow, Ming Fai Hossain, Md Shabbir Ehteram, Mohammad El-Shafie, Ahmed TA Engineering (General). Civil engineering (General) In any aquatic system analysis, the modelling water quality parameters are of considerable significance. The traditional modelling methodologies are dependent on datasets that involve large amount of unknown or unspecified input data and generally consist of time-consuming processes. The implementation of artificial intelligence (AI) leads to a flexible mathematical structure that has the capability to identify non-linear and complex relationships between input and output data. There has been a major degradation of the Johor River Basin because of several developmental and human activities. Therefore, setting up of a water quality prediction model for better water resource management is of critical importance and will serve as a powerful tool. The different modelling approaches that have been implemented include: Adaptive Neuro-Fuzzy Inference System (ANFIS), Radial Basis Function Neural Networks (RBF-ANN), and Multi-Layer Perceptron Neural Networks (MLP-ANN). However, data obtained from monitoring stations and experiments are possibly polluted by noise signals as a result of random and systematic errors. Due to the presence of noise in the data, it is relatively difficult to make an accurate prediction. Hence, a Neuro-Fuzzy Inference System (WDT-ANFIS) based augmented wavelet de-noising technique has been recommended that depends on historical data of the water quality parameter. In the domain of interests, the water quality parameters primarily include ammoniacal nitrogen (AN), suspended solid (SS) and pH. In order to evaluate the impacts on the model, three evaluation techniques or assessment processes have been used. The first assessment process is dependent on the partitioning of the neural network connection weights that ascertains the significance of every input parameter in the network. On the other hand, the second and third assessment processes ascertain the most effectual input that has the potential to construct the models using a single and a combination of parameters, respectively. During these processes, two scenarios were introduced: Scenario 1 and Scenario 2. Scenario 1 constructs a prediction model for water quality parameters at every station, while Scenario 2 develops a prediction model on the basis of the value of the same parameter at the previous station (upstream). Both the scenarios are based on the value of the twelve input parameters. The field data from 2009 to 2010 was used to validate WDT-ANFIS. The WDT-ANFIS model exhibited a significant improvement in predicting accuracy for all the water quality parameters and outperformed all the recommended models. Also, the performance of Scenario 2 was observed to be more adequate than Scenario 1, with substantial improvement in the range of 0.5% to 5% for all the water quality parameters at all stations. On validating the recommended model, it was found that the model satisfactorily predicted all the water quality parameters (R2 values equal or bigger than 0.9). © 2019 Elsevier 2019 Article PeerReviewed Ahmed, Ali Najah and Othman, Faridah and Afan, Haitham Abdulmohsin and Ibrahim, Rusul Khaleel and Chow, Ming Fai and Hossain, Md Shabbir and Ehteram, Mohammad and El-Shafie, Ahmed (2019) Machine learning methods for better water quality prediction. Journal of Hydrology, 578. p. 124084. ISSN 0022-1694 https://doi.org/10.1016/j.jhydrol.2019.124084 doi:10.1016/j.jhydrol.2019.124084
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic TA Engineering (General). Civil engineering (General)
spellingShingle TA Engineering (General). Civil engineering (General)
Ahmed, Ali Najah
Othman, Faridah
Afan, Haitham Abdulmohsin
Ibrahim, Rusul Khaleel
Chow, Ming Fai
Hossain, Md Shabbir
Ehteram, Mohammad
El-Shafie, Ahmed
Machine learning methods for better water quality prediction
description In any aquatic system analysis, the modelling water quality parameters are of considerable significance. The traditional modelling methodologies are dependent on datasets that involve large amount of unknown or unspecified input data and generally consist of time-consuming processes. The implementation of artificial intelligence (AI) leads to a flexible mathematical structure that has the capability to identify non-linear and complex relationships between input and output data. There has been a major degradation of the Johor River Basin because of several developmental and human activities. Therefore, setting up of a water quality prediction model for better water resource management is of critical importance and will serve as a powerful tool. The different modelling approaches that have been implemented include: Adaptive Neuro-Fuzzy Inference System (ANFIS), Radial Basis Function Neural Networks (RBF-ANN), and Multi-Layer Perceptron Neural Networks (MLP-ANN). However, data obtained from monitoring stations and experiments are possibly polluted by noise signals as a result of random and systematic errors. Due to the presence of noise in the data, it is relatively difficult to make an accurate prediction. Hence, a Neuro-Fuzzy Inference System (WDT-ANFIS) based augmented wavelet de-noising technique has been recommended that depends on historical data of the water quality parameter. In the domain of interests, the water quality parameters primarily include ammoniacal nitrogen (AN), suspended solid (SS) and pH. In order to evaluate the impacts on the model, three evaluation techniques or assessment processes have been used. The first assessment process is dependent on the partitioning of the neural network connection weights that ascertains the significance of every input parameter in the network. On the other hand, the second and third assessment processes ascertain the most effectual input that has the potential to construct the models using a single and a combination of parameters, respectively. During these processes, two scenarios were introduced: Scenario 1 and Scenario 2. Scenario 1 constructs a prediction model for water quality parameters at every station, while Scenario 2 develops a prediction model on the basis of the value of the same parameter at the previous station (upstream). Both the scenarios are based on the value of the twelve input parameters. The field data from 2009 to 2010 was used to validate WDT-ANFIS. The WDT-ANFIS model exhibited a significant improvement in predicting accuracy for all the water quality parameters and outperformed all the recommended models. Also, the performance of Scenario 2 was observed to be more adequate than Scenario 1, with substantial improvement in the range of 0.5% to 5% for all the water quality parameters at all stations. On validating the recommended model, it was found that the model satisfactorily predicted all the water quality parameters (R2 values equal or bigger than 0.9). © 2019
format Article
author Ahmed, Ali Najah
Othman, Faridah
Afan, Haitham Abdulmohsin
Ibrahim, Rusul Khaleel
Chow, Ming Fai
Hossain, Md Shabbir
Ehteram, Mohammad
El-Shafie, Ahmed
author_facet Ahmed, Ali Najah
Othman, Faridah
Afan, Haitham Abdulmohsin
Ibrahim, Rusul Khaleel
Chow, Ming Fai
Hossain, Md Shabbir
Ehteram, Mohammad
El-Shafie, Ahmed
author_sort Ahmed, Ali Najah
title Machine learning methods for better water quality prediction
title_short Machine learning methods for better water quality prediction
title_full Machine learning methods for better water quality prediction
title_fullStr Machine learning methods for better water quality prediction
title_full_unstemmed Machine learning methods for better water quality prediction
title_sort machine learning methods for better water quality prediction
publisher Elsevier
publishDate 2019
url http://eprints.um.edu.my/23899/
https://doi.org/10.1016/j.jhydrol.2019.124084
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score 13.209306