Dried grass silage analysis by NIR reflectance spectroscopy—A Comparison of stepwise multiple linear and principal component techniques for calibration development on raw and transformed spectral data
✍ Scribed by Gerard Downey; Paul Robert; Dominique Bertrand; Marie-Francoise Devaux
- Publisher
- John Wiley and Sons
- Year
- 1989
- Tongue
- English
- Weight
- 626 KB
- Volume
- 3
- Category
- Article
- ISSN
- 0886-9383
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✦ Synopsis
Calibrations to predict crude protein (CP) and in vitro dry matter digestibility (IVDMD) in dried grass silage from reflectance data collected at 19 wavelengths on an InfraAlyzer 400R have been developed using stepwise multiple linear (SML) and principal component (PC) regression techniques. A direct comparison of the efficacy of each multivariate technique in this application has been possible by using identical calibration development and evaluation sample sets. The effect of two data transformation steps prior to PC regression was also investigated. PC regression of raw reflectance data yielded no significant improvement in the standard errors of prediction (SEP) for CP and IVDMD over those obtained by SMLR, viz. 0.61 vs 0.63 and 2.9 vs 3.0 respectively. Computation time for development and evaluation of the PC regression equation was less than for selection of the best SMLR equation, and PCR equations may be more robust. Data transformation to reduce granularity effects prior to PCR did not produce any improvement in predictive accuracy for either IVDMD or CP.