Artículos de revistas
Regression models based on new local strategies for near infrared spectroscopic data
Fecha
2016-08Registro en:
Allegrini, Franco; Fernández Pierna, J. A.; Fragoso, W. D.; Olivieri, Alejandro Cesar; Baeten, V.; et al.; Regression models based on new local strategies for near infrared spectroscopic data; Elsevier Science; Analytica Chimica Acta; 933; 8-2016; 50-58
0003-2670
CONICET Digital
CONICET
Autor
Allegrini, Franco
Fernández Pierna, J. A.
Fragoso, W. D.
Olivieri, Alejandro Cesar
Baeten, V.
Dardenne, P.
Resumen
In this work, a comparative study of two novel algorithms to perform sample selection in local regression based on Partial Least Squares Regression (PLS) is presented. These methodologies were applied for Near Infrared Spectroscopy (NIRS) quantification of five major constituents in corn seeds and are compared and contrasted with global PLS calibrations. Validation results show a significant improvement in the prediction quality when local models implemented by the proposed algorithms are applied to large data bases.