| Literature DB >> 23377188 |
Abstract
Two sensitive wavelength (SW) selection methods combined with visible/near infrared (Vis/NIR) spectroscopy were investigated to determine the levels of some trace elements (Fe, Zn) in rice leaf. A total of 90 samples were prepared for the calibration (n = 70) and validation (n = 20) sets. Calibration models using SWs selected by LVA and ICA were developed and nonlinear regression of a least squares-support vector machine (LS-SVM) was built. In the nonlinear models, six SWs selected by ICA can provide the optimal ICA-LS-SVM model when compared with LV-LS-SVM. The coefficients of determination (R2), root mean square error of prediction (RMSEP) and bias by ICA-LS-SVM were 0.6189, 20.6510 ppm and -12.1549 ppm, respectively, for Fe, and 0.6731, 5.5919 ppm and 1.5232 ppm, respectively, for Zn. The overall results indicated that ICA was a powerful way for the selection of SWs, and Vis/NIR spectroscopy combined with ICA-LS-SVM was very efficient in terms of accurate determination of trace elements in rice leaf.Entities:
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Year: 2013 PMID: 23377188 PMCID: PMC3649421 DOI: 10.3390/s130201872
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
The statistic values of Fe and Zn contents in calibration and validation sets.
| Fe | Calibration | 70 | 39.951–134.254 | 79.245 | 21.945 |
| Validation | 20 | 40.011–133.992 | 80.649 | 24.003 | |
| All samples | 90 | 39.951–134.254 | 80.935 | 23.669 | |
| Zn | Calibration | 70 | 9.085–49.927 | 23.710 | 9.221 |
| Validation | 20 | 9.103–49.849 | 23.134 | 9.518 | |
| All samples | 90 | 9.085–49.927 | 23.408 | 9.928 |
Figure 1.(a) The reflectance spectra of all 90 leaf samples in the Vis/NIR region. (b) The Vis/NIR spectral curves of leaf samples after 2nd derivative preprocessing.
Figure 2.(a) The predicted versus reference values for Fe by PCA-LS-SVM model. (b) The predicted versus reference values for Zn by PCA-LS-SVM model.
Figure 3.(a) The predicted versus reference values for Fe by LV-LS-SVM model. (b) The predicted versus reference values for Zn by LV-LS-SVM model.
Figure 4.(a) The four ICs for Fe by the ICA-LS-SVM model. (b) The four ICs for Zn by the ICA-LS-SVM model.
Figure 5.(a) The predicted versus reference values for Fe by ICA-LS-SVM model. (b) The predicted versus reference values for Zn by ICA-LS-SVM model.
The parameters of RMSEP and R2 in the four models.
| PLS | Fe | 6 | 0.3820 | 26.1431 | −9.3674 |
| Zn | 5 | 0.5800 | 6.9637 | 2.2320 | |
| PCA-LS-SVM | Fe | 6 | 0.4012 | 23.9920 | −7.8789 |
| Zn | 6 | 0.6109 | 6.5308 | 2.0571 | |
| LV-LS-SVM | Fe | 6 | 0.4070 | 23.3845 | −7.4975 |
| Zn | 5 | 0.6067 | 6.4869 | 2.2336 | |
| ICA-LS-SVM | Fe | 6 | 0.6189 | 20.6510 | −12.1549 |
| Zn | 6 | 0.6731 | 5.5919 | 1.5232 |