4.7 Article

Quantification of river total phosphorus using integrative artificial intelligence models

Journal

ECOLOGICAL INDICATORS
Volume 153, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.ecolind.2023.110437

Keywords

Total phosphorus; Discrete -wavelet algorithm; Support vector machines; Stochastic gradient boosting; Double -platform synthetic technique

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Total phosphorus (T-P) is the concentration of phosphorus in water and is an important parameter for eutrophication in lakes and rivers. The current research uses neuroscience-dependent approaches to predict river T-P concentration. Singular techniques, such as machine learning and deep learning models, were developed, and double-platform synthetic techniques were integrated with prior data-processing algorithms. Evaluation was done using statistical standards and visual references, and results showed that the double-platform synthetic techniques did not always lead to more accurate predictions. The best accuracy was achieved by the singular techniques for both stations using specific models, while the double-platform synthetic techniques also achieved good predictive accuracy.
Total phosphorus (T-P) refers to the concentration of phosphorus in water and is one of the important parameters for eutrophication in lakes and rivers. In current research, neuroscience dependent (i.e., singular and doubleplatform synthetic) approaches were employed to predict the river T-P concentration. Singular techniques were developed utilizing machine learning based (support vector machines (SVMs), stochastic gradient boosting (SGB)), and deep learning based multilayer perceptron (DMLP) models. Besides, double-platform synthetic techniques were developed by integrating a prior data-processing (Discrete-wavelet) algorithm with the singular techniques. Six input scenarios conditional on different water quantity and quality parameters acquired from two stations (Hwangji and Toilchun), South Korea, were employed for appraising singular and double-platform synthetic techniques. The various promoted models were evaluated using four statistical standards viz., mean absolute error (MAE), root mean square error (RMSE), scatter index (SI), and Pearson correlation coefficient (CCp), and four visual references viz., scatter diagram, box-and-whisker plot, violin plot, and Taylor diagram. It can be indicated from the outcomes that the double-platform synthetic techniques did not always lead to more accurate predictions than the singular techniques. Further, results also supplied that the SGB with the 6th input (MAE = 0.012 mg/L, RMSE = 0.014 mg/L, and CCp = 0.650 for Hwangji; MAE = 0.011 mg/L, RMSE = 0.017 mg/L, and CCp = 0.963 for Toilchun) scenario model demonstrated the best accuracy for predicting river T-P concentration by the singular techniques for both stations, whereas the discrete-wavelet SVMs with the 4th input (MAE = 0.007 mg/L, RMSE = 0.011 mg/L, and CCp = 0.765 for Hwangji) and discrete-wavelet SGB with the 5th input (MAE = 0.012 mg/L, RMSE = 0.017 mg/L, and CCp = 0.953 for Toilchun) scenario models provided the best predictive accuracy among double-platform synthetic techniques, respectively.

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