سیویلیکا را در شبکه های اجتماعی دنبال نمایید.

Concentration prediction of dissolved oxygen using meta-heuristic models

Publish Year: 1403
Type: Journal paper
Language: English
View: 64

This Paper With 16 Page And PDF Format Ready To Download

Export:

Link to this Paper:

Document National Code:

JR_IJERR-12-1_003

Index date: 5 October 2024

Concentration prediction of dissolved oxygen using meta-heuristic models abstract

Water is one of the most essential elements in nature that forms the basis of human life and contributes to the economic growth and development of societies. Safe water is closely related to environmental health and activities. The lives of all the animals on our planet depend on water and oxygen. Moreover, sufficient Dissolved Oxygen (DO) is crucial for the survival of aquatic animals. In the present research, temperature (T) and flow (Q) variables were used to predict DO. The time series were monthly and data were related to the Cumberland River in the southern United States from 2012 to 2022. Support Vector Regression (SVR) was employed for prediction of the model in both standalone and hybrid forms. The employed hybrid models consisted in SVR combined with metaheuristic algorithms of Chicken Swarm Optimization (CSO), Social Ski-Driver (SSD) optimization, and the Algorithm of the Innovative Gunner (AIG). Pearson Correlation Coefficient (PCC) was utilized to select the best input combination. Box plots and Taylor diagrams were employed in the interpretation of the results. It was observed that all the four hybrid models achieved better results. Also, according to the evaluation criteria, among the models used, the following were found: SVR-AIG with the coefficient of determination (R2 = 0.963), the root mean square error (RMSE =0.644 mg/l), the mean absolute value of error (MAE = 0.568 mg/l), the Nash-Sutcliffe coefficient (NS = 0.864), and bias percentage (BIAS = 0.001).

Concentration prediction of dissolved oxygen using meta-heuristic models Keywords:

Concentration prediction of dissolved oxygen using meta-heuristic models authors

Reza Dehghani

PhD in water science and engineering

Taher Farhadinejad

Assistant Professor, Watershed Engineering Department,Lorestan agricultural & natural resources research & education,iran

Iraj Veyskarami

Assistant Professor, Watershed Engineering Department, Lorestan agricultural & natural resources research & education,iran

Reza Chaman Pira

Assistant Professor, Watershed Engineering Department, Lorestan agricultural & natural resources research & education, Iran