Article ID Journal Published Year Pages File Type
5132781 Food Chemistry 2017 7 Pages PDF
Abstract

•Hyperspectral imaging was used to predict phenolics in wine grapes.•Five different grape cultivars were jointly used.•Phenolics in grape skins and seeds were considered simultaneously.•SVR behaves globally better than PLSR and PCR except for tannin model of seeds.•The phenolics values are highly correlated with the hyperspectral data.

Phenolics contents in wine grapes are key indicators for assessing ripeness. Near-infrared hyperspectral images during ripening have been explored to achieve an effective method for predicting phenolics contents. Principal component regression (PCR), partial least squares regression (PLSR) and support vector regression (SVR) models were built, respectively. The results show that SVR behaves globally better than PLSR and PCR, except in predicting tannins content of seeds. For the best prediction results, the squared correlation coefficient and root mean square error reached 0.8960 and 0.1069 g/L (+)-catechin equivalents (CE), respectively, for tannins in skins, 0.9065 and 0.1776 (g/L CE) for total iron-reactive phenolics (TIRP) in skins, 0.8789 and 0.1442 (g/L M3G) for anthocyanins in skins, 0.9243 and 0.2401 (g/L CE) for tannins in seeds, and 0.8790 and 0.5190 (g/L CE) for TIRP in seeds. Our results indicated that NIR hyperspectral imaging has good prospects for evaluation of phenolics in wine grapes.

Related Topics
Physical Sciences and Engineering Chemistry Analytical Chemistry
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