Title of article
Linear and non-linear chemometric modeling of THM formation in Barcelonaʹs water treatment plant Original Research Article
Author/Authors
Stefan Platikanov، نويسنده , , Jordi Martin-Alonso، نويسنده , , Romà Tauler، نويسنده ,
Issue Information
دوهفته نامه با شماره پیاپی سال 2012
Pages
10
From page
365
To page
374
Abstract
The complex behavior observed for the dependence of trihalomethane formation on forty one water treatment plant (WTP) operational variables is investigated by means of linear and non-linear regression methods, including kernel-partial least squares (K-PLS), and support vector machine regression (SVR). Lower prediction errors of total trihalomethane concentrations (lower than 14% for external validation samples) were obtained when these two methods were applied in comparison to when linear regression methods were applied. A new visualization technique revealed the complex nonlinear relationships among the operational variables and displayed the existing correlations between input variables and the kernel matrix on one side and the support vectors on the other side. Whereas some water treatment plant variables like river water TOC and chloride concentrations, and breakpoint chlorination were not considered to be significant due to the multi-collinear effect in straight linear regression modeling methods, they were now confirmed to be significant using K-PLS and SVR non-linear modeling regression methods, proving the better performance of these methods for the prediction of complex formation of trihalomethanes in water disinfection plants.
Keywords
Drinking water , Disinfection by-products , Linear models , Trihalomethanes , Kernel-PLS , SVM regression
Journal title
Science of the Total Environment
Serial Year
2012
Journal title
Science of the Total Environment
Record number
989741
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