Artificial Neural Network (ANN) approach in predicting arsenic and mercury species in Kinta River / Norshidah Baharuddin
Surface water is most exposed to pollution from chemical, physical and biological contaminants by anthropogenic activities. Identifying the variables contributing to the deterioration of water quality is crucial and predicting the future status is vital in managing the ecosystem. As Kinta River is a...
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my.uitm.ir.401492022-03-11T06:51:51Z https://ir.uitm.edu.my/id/eprint/40149/ Artificial Neural Network (ANN) approach in predicting arsenic and mercury species in Kinta River / Norshidah Baharuddin Baharuddin, Norshidah Electronic Computers. Computer Science Surface water is most exposed to pollution from chemical, physical and biological contaminants by anthropogenic activities. Identifying the variables contributing to the deterioration of water quality is crucial and predicting the future status is vital in managing the ecosystem. As Kinta River is an ex-mining area, heavy metals contamination is expected to be the major pollution contributor particularly arsenic and mercury. Confirmation on the significant contribution of arsenic and mercury species was done by applying selected chemometrics techniques namely cluster analysis (CA) and principal component analysis (PCA) on the physicochemical variables monitored by the Department of Environment (DOE), Malaysia during the period from 1997 - 2006. Thirty physicochemical variables were selected as input variables for CA and PCA in an attempt to identify the significant variables by the factor loadings obtained from PCA. From CA, the physicochemical variables were classified into four main clusters based on the similarities and dissimilarities. PCA applied to the dataset resulted in ten varifactors with a total variance of 78.06%. Arsenic and mercury were classified as moderately significant variables that affect the Kinta River water with a factor loadings of 0.561 and 0.643, respectively. The pollution of the river due to these metals could be contributed by industrial discharge, agricultural activities and residential waste. Since the toxicity of arsenic and mercury depended on the specific species of the metals, speciation analysis is therefore important to study the toxicity of these metals species due to their significant risks to human health and to the environment. LC-ICP-MS offers several advantages for speciation analysis as it allows multi-element and multi-isotope detection, high sensitivity and a wide linear dynamic range of detection. Analytical validation carried out showed that the detection limits for As were 1.0 and 0.5 ppb for As (III) and As (V) respectively with recoveries of As (III) and As (V) in the range of 90 - 115%. The detection limits for Hg2+ and CHaHg+ were found to be 1.0 ng L"1 and 1.5 ug L"1, respectively with recoveries of Hg2+ and MeHg+ in the range of 95 - 111%. Water samples taken from six sampling points selected from the DOE monitoring stations were analysed for arsenic and mercury species. This speciation analytical data was used in validating the artificial neural network (ANN) developed for predicting the concentration of these species in Kinta River. In developing the ANN model, two approaches were considered. The first approach, prediction was performed based on the original principal components (PCs) with thirty PCs as the input and the second approach, rotated principle components (RPCs) with eigenvalues greater than 1 with ten RPCs as inputs. It was observed that the predicted output of the first approach obtained a higher coefficient of determination (R2) value of 1.0 for both As(V) and Hg2+ as compared to the second approach with R2 of 0.915 and 0.984 for As (V) and Hg2+, respectively. The sensitivity analysis with leave-one-out technique showed that both arsenic and mercury were found to have significant input-output relationship with contribution of 31.6% and 86%, respectively. The ANN model developed obtained a good agreement for As(V) with R2 of 1, whilst relatively low correlation for Hg2+ with R2 of 0.6528. 2014 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/40149/1/40149.pdf ID40149 Baharuddin, Norshidah (2014) Artificial Neural Network (ANN) approach in predicting arsenic and mercury species in Kinta River / Norshidah Baharuddin. PhD thesis, thesis, Universiti Teknologi MARA. |
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Electronic Computers. Computer Science Baharuddin, Norshidah Artificial Neural Network (ANN) approach in predicting arsenic and mercury species in Kinta River / Norshidah Baharuddin |
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Surface water is most exposed to pollution from chemical, physical and biological contaminants by anthropogenic activities. Identifying the variables contributing to the deterioration of water quality is crucial and predicting the future status is vital in managing the ecosystem. As Kinta River is an ex-mining area, heavy metals contamination is expected to be the major pollution contributor particularly arsenic and mercury. Confirmation on the significant contribution of arsenic and mercury species was done by applying selected chemometrics techniques namely cluster analysis (CA) and principal component analysis (PCA) on the physicochemical variables monitored by the Department of Environment (DOE), Malaysia during the period from 1997 - 2006. Thirty physicochemical variables were selected as input variables for CA and PCA in an attempt to identify the significant variables by the factor loadings obtained from PCA. From CA, the physicochemical variables were classified into four main clusters based on the similarities and dissimilarities. PCA applied to the dataset resulted in ten varifactors with a total variance of 78.06%. Arsenic and mercury were classified as moderately significant variables that affect the Kinta River water with a factor loadings of 0.561 and 0.643, respectively. The pollution of the river due to these metals could be contributed by industrial discharge, agricultural activities and residential waste. Since the toxicity of arsenic and mercury depended on the specific species of the metals, speciation analysis is therefore important to study the toxicity of these metals species due to their significant risks to human health and to the environment. LC-ICP-MS offers several advantages for speciation analysis as it allows multi-element and multi-isotope detection, high sensitivity and a wide linear dynamic range of detection. Analytical validation carried out showed that the detection limits for As were 1.0 and 0.5 ppb for As (III) and As (V) respectively with recoveries of As (III) and As (V) in the range of 90 - 115%. The detection limits for Hg2+ and CHaHg+ were found to be 1.0 ng L"1 and 1.5 ug L"1, respectively with recoveries of Hg2+ and MeHg+ in the range of 95 - 111%. Water samples taken from six sampling points selected from the DOE monitoring stations were analysed for arsenic and mercury species. This speciation analytical data was used in validating the artificial neural network (ANN) developed for predicting the concentration of these species in Kinta River. In developing the ANN model, two approaches were considered. The first approach, prediction was performed based on the original principal components (PCs) with thirty PCs as the input and the second approach, rotated principle components (RPCs) with eigenvalues greater than 1 with ten RPCs as inputs. It was observed that the predicted output of the first approach obtained a higher coefficient of determination (R2) value of 1.0 for both As(V) and Hg2+ as compared to the second approach with R2 of 0.915 and 0.984 for As (V) and Hg2+, respectively. The sensitivity analysis with leave-one-out technique showed that both arsenic and mercury were found to have significant input-output relationship with contribution of 31.6% and 86%, respectively. The ANN model developed obtained a good agreement for As(V) with R2 of 1, whilst relatively low correlation for Hg2+ with R2 of 0.6528. |
format |
Thesis |
author |
Baharuddin, Norshidah |
author_facet |
Baharuddin, Norshidah |
author_sort |
Baharuddin, Norshidah |
title |
Artificial Neural Network (ANN) approach in predicting arsenic and mercury species in Kinta River / Norshidah Baharuddin |
title_short |
Artificial Neural Network (ANN) approach in predicting arsenic and mercury species in Kinta River / Norshidah Baharuddin |
title_full |
Artificial Neural Network (ANN) approach in predicting arsenic and mercury species in Kinta River / Norshidah Baharuddin |
title_fullStr |
Artificial Neural Network (ANN) approach in predicting arsenic and mercury species in Kinta River / Norshidah Baharuddin |
title_full_unstemmed |
Artificial Neural Network (ANN) approach in predicting arsenic and mercury species in Kinta River / Norshidah Baharuddin |
title_sort |
artificial neural network (ann) approach in predicting arsenic and mercury species in kinta river / norshidah baharuddin |
publishDate |
2014 |
url |
https://ir.uitm.edu.my/id/eprint/40149/1/40149.pdf https://ir.uitm.edu.my/id/eprint/40149/ |
_version_ |
1728054749660446720 |
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13.211869 |