Investigating the reliability of machine learning algorithms as a sustainable tool for total suspended solid prediction

Forecasting; Iron; Learning algorithms; Machine learning; Mean square error; Neural networks; Potable water; Reservoirs (water); Turbidity; Water quality; Water supply; Coefficient of determination; Iron concentrations; Output parameters; Performance criterion; Root mean square errors; Strong correl...

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Main Authors: Sami B.H.Z., Jee khai W., Sami B.F.Z., Ming Fai C., Essam Y., Ahmed A.N., El-Shafie A.
Other Authors: 57222091702
Format: Article
Published: Ain Shams University 2023
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spelling my.uniten.dspace-261802023-05-29T17:07:29Z Investigating the reliability of machine learning algorithms as a sustainable tool for total suspended solid prediction Sami B.H.Z. Jee khai W. Sami B.F.Z. Ming Fai C. Essam Y. Ahmed A.N. El-Shafie A. 57222091702 57211320170 57222091701 57214146115 57203146903 57214837520 16068189400 Forecasting; Iron; Learning algorithms; Machine learning; Mean square error; Neural networks; Potable water; Reservoirs (water); Turbidity; Water quality; Water supply; Coefficient of determination; Iron concentrations; Output parameters; Performance criterion; Root mean square errors; Strong correlation; Total suspended solids; TSS concentration; Predictive analytics This research studies the implementation of artificial neural networks (ANN) in predicting the concentration of total suspended solids (TSS) for the Fei Tsui reservoir in Taiwan. The prediction model developed in this study is designed to be used for monitoring the water quality in the Fei Tsui reservoir. High concentrations of total suspended solids (TSS) have been a crucial problem in the Fei Tsui reservoir for decades. As the Fei Tsui reservoir is a primary water source for Taipei City, this issue impacts the drinking water supply for the city due to etherification problems in the reservoir. 10-year average monthly records and 13-year average annual records have been collected for 26 parameters and correlated with the TSS concentrations to determine the parameters that have a strong relationship with the TSS concentrations. The parameters that were shown to have a strong correlation with the TSS concentration are the trophic state index (TSI), nitrate (NO3) concentration, total phosphorous (TP) concentration, iron concentration (IRON), and turbidity. Linear regression was used to develop the model that estimates the TSS concentration in the Fei Tsui Reservoir. The results show that model 3, a three-layer ANN model that uses three-input parameters namely NO3 concentration, TP concentration, and turbidity, with five neurons, to predict the output parameter which is TSS concentration, produces the highest coefficient of determination (R2) and Willmott Index (WI), which are 0.9589 and 0.9933 respectively, and the lowest root mean square error, which is 0.4753. Based on these performance criteria, model 3 is concluded as the best model to predict TSS concentrations in this study. � 2020 Faculty of Engineering, Ain Shams University Final 2023-05-29T09:07:29Z 2023-05-29T09:07:29Z 2021 Article 10.1016/j.asej.2021.01.007 2-s2.0-85101337104 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85101337104&doi=10.1016%2fj.asej.2021.01.007&partnerID=40&md5=a97b37e14e4f46b73ed5f7314068c088 https://irepository.uniten.edu.my/handle/123456789/26180 12 2 1607 1622 All Open Access, Gold Ain Shams University 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 Forecasting; Iron; Learning algorithms; Machine learning; Mean square error; Neural networks; Potable water; Reservoirs (water); Turbidity; Water quality; Water supply; Coefficient of determination; Iron concentrations; Output parameters; Performance criterion; Root mean square errors; Strong correlation; Total suspended solids; TSS concentration; Predictive analytics
author2 57222091702
author_facet 57222091702
Sami B.H.Z.
Jee khai W.
Sami B.F.Z.
Ming Fai C.
Essam Y.
Ahmed A.N.
El-Shafie A.
format Article
author Sami B.H.Z.
Jee khai W.
Sami B.F.Z.
Ming Fai C.
Essam Y.
Ahmed A.N.
El-Shafie A.
spellingShingle Sami B.H.Z.
Jee khai W.
Sami B.F.Z.
Ming Fai C.
Essam Y.
Ahmed A.N.
El-Shafie A.
Investigating the reliability of machine learning algorithms as a sustainable tool for total suspended solid prediction
author_sort Sami B.H.Z.
title Investigating the reliability of machine learning algorithms as a sustainable tool for total suspended solid prediction
title_short Investigating the reliability of machine learning algorithms as a sustainable tool for total suspended solid prediction
title_full Investigating the reliability of machine learning algorithms as a sustainable tool for total suspended solid prediction
title_fullStr Investigating the reliability of machine learning algorithms as a sustainable tool for total suspended solid prediction
title_full_unstemmed Investigating the reliability of machine learning algorithms as a sustainable tool for total suspended solid prediction
title_sort investigating the reliability of machine learning algorithms as a sustainable tool for total suspended solid prediction
publisher Ain Shams University
publishDate 2023
_version_ 1806426515970195456
score 13.214268