期刊
STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT
卷 36, 期 9, 页码 2561-2580出版社
SPRINGER
DOI: 10.1007/s00477-021-02136-4
关键词
Eutrophication in reservoirs; Support vector machines (SVMs); Whale optimization algorithm (WOA); Multivariate adaptive regression splines (MARS); Regression analysis
类别
资金
- CRUE-CSIC
- Springer Nature
This study utilized support vector regression (SVR) to predict the concentrations of chlorophyll-a (Chl-a) and total phosphorus (TP) in water bodies. By optimizing parameters and establishing models, successful predictions of the concentrations of these two substances in water bodies were achieved.
Total phosphorus (from now on mentioned as TP) and chlorophyll-a (from now on mentioned as Chl-a) are recognized indicators for phytoplankton large quantity and biomass-thus, actual estimates of the eutrophic state-of water bodies (i.e., reservoirs, lakes and seas). A robust nonparametric method, called support vector regression (SVR) approach, for forecasting the output Chl-a and TP concentrations coming from 268 samples obtained in Tanes reservoir is described in this investigation. Previously, we have carried out a selection of the main features (biological and physico-chemical predictors) employing the multivariate adaptive regression splines approximation to construct reduced models for the purpose of making them easier to interpret for researchers/readers and to reduce the overfitting. As an optimizer, the heuristic technique termed as whale optimization iterative algorithm (WOA), was employed here to optimize the regression parameters with success. Two main results have been obtained. Firstly, the relative relevance of the models variables was stablished. Secondly, the Chl-a and TP can be successfully foretold employing this hybrid WOA/SVR-based approximation. The coincidence between the predicted approximation and the observed data obviously demonstrates the quality of this novel technique.
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