Determination of the forecasting-model parameters by statistical analysis for development of algae warning system
The aim of this study is to determinate optimal model parameters for prediction of long-term forward (>1 month) chlorophyll-a (Chl-a) concentration in lakes. To optimize model parameters, water quality data from 93 lakes in South Korea were collected and analyzed. Among the 93 lakes, 30 problemat...
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my.um.eprints.177562019-12-23T07:59:31Z http://eprints.um.edu.my/17756/ Determination of the forecasting-model parameters by statistical analysis for development of algae warning system Lee, Gooyong Othman, Faridah Ibrahim, Shaliza Jang, Min TA Engineering (General). Civil engineering (General) TD Environmental technology. Sanitary engineering The aim of this study is to determinate optimal model parameters for prediction of long-term forward (>1 month) chlorophyll-a (Chl-a) concentration in lakes. To optimize model parameters, water quality data from 93 lakes in South Korea were collected and analyzed. Among the 93 lakes, 30 problematic lakes were selected as study sites. Correlation analysis using Chl-a and other water quality data were conducted, and the results indicated that electrical conductivity (EC) and turbidity are important key parameters, which are less considerable than in previous research. To verify effectiveness of the selected parameters, one-month forward prediction of Chl-a concentration was performed using water quality data from the most problematic lakes in South Korea. Artificial neural networks were used as a prediction model. The results of Chl-a prediction using selected parameters showed higher accuracy compare to using general parameters based on the literature reviews. EC and turbidity are important parameters, showing high correlation with Chl-a. This study will corroborate effective model parameters to predict long-term Chl-a concentration in lakes. Taylor & Francis 2016 Article PeerReviewed Lee, Gooyong and Othman, Faridah and Ibrahim, Shaliza and Jang, Min (2016) Determination of the forecasting-model parameters by statistical analysis for development of algae warning system. Desalination and Water Treatment, 57 (55). pp. 26773-26782. ISSN 1944-3994 http://dx.doi.org/10.1080/19443994.2016.1190106 doi:10.1080/19443994.2016.1190106 |
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TA Engineering (General). Civil engineering (General) TD Environmental technology. Sanitary engineering Lee, Gooyong Othman, Faridah Ibrahim, Shaliza Jang, Min Determination of the forecasting-model parameters by statistical analysis for development of algae warning system |
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The aim of this study is to determinate optimal model parameters for prediction of long-term forward (>1 month) chlorophyll-a (Chl-a) concentration in lakes. To optimize model parameters, water quality data from 93 lakes in South Korea were collected and analyzed. Among the 93 lakes, 30 problematic lakes were selected as study sites. Correlation analysis using Chl-a and other water quality data were conducted, and the results indicated that electrical conductivity (EC) and turbidity are important key parameters, which are less considerable than in previous research. To verify effectiveness of the selected parameters, one-month forward prediction of Chl-a concentration was performed using water quality data from the most problematic lakes in South Korea. Artificial neural networks were used as a prediction model. The results of Chl-a prediction using selected parameters showed higher accuracy compare to using general parameters based on the literature reviews. EC and turbidity are important parameters, showing high correlation with Chl-a. This study will corroborate effective model parameters to predict long-term Chl-a concentration in lakes. |
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Article |
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Lee, Gooyong Othman, Faridah Ibrahim, Shaliza Jang, Min |
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Lee, Gooyong Othman, Faridah Ibrahim, Shaliza Jang, Min |
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Lee, Gooyong |
title |
Determination of the forecasting-model parameters by statistical analysis for development of algae warning system |
title_short |
Determination of the forecasting-model parameters by statistical analysis for development of algae warning system |
title_full |
Determination of the forecasting-model parameters by statistical analysis for development of algae warning system |
title_fullStr |
Determination of the forecasting-model parameters by statistical analysis for development of algae warning system |
title_full_unstemmed |
Determination of the forecasting-model parameters by statistical analysis for development of algae warning system |
title_sort |
determination of the forecasting-model parameters by statistical analysis for development of algae warning system |
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Taylor & Francis |
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2016 |
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http://eprints.um.edu.my/17756/ http://dx.doi.org/10.1080/19443994.2016.1190106 |
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