| Literature DB >> 29426528 |
Valber Elias de Almeida1, Adriano de Araújo Gomes2, David Douglas de Sousa Fernandes1, Héctor Casimiro Goicoechea3, Roberto Kawakami Harrop Galvão4, Mario Cesar Ugulino Araújo5.
Abstract
This paper proposes a new variable selection method for nonlinear multivariate calibration, combining the Successive Projections Algorithm for interval selection (iSPA) with the Kernel Partial Least Squares (Kernel-PLS) modelling technique. The proposed iSPA-Kernel-PLS algorithm is employed in a case study involving a Vis-NIR spectrometric dataset with complex nonlinear features. The analytical problem consists of determining Brix and sucrose content in samples from a sugar production system, on the basis of transflectance spectra. As compared to full-spectrum Kernel-PLS, the iSPA-Kernel-PLS models involve a smaller number of variables and display statistically significant superiority in terms of accuracy and/or bias in the predictions. Published by Elsevier B.V.Entities:
Keywords: Kernel partial least squares; Near infrared spectrometry; Nonlinear multivariate calibration; Successive projections algorithm; Sugar; Variable selection
Mesh:
Substances:
Year: 2017 PMID: 29426528 DOI: 10.1016/j.talanta.2017.12.064
Source DB: PubMed Journal: Talanta ISSN: 0039-9140 Impact factor: 6.057