Real-Time Monitoring of Organic Carrot (var. Romance) During Hot-Air Drying Using Near-Infrared Spectroscopy |
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Authors: | Roberto Moscetti Ron P. Haff Serena Ferri Flavio Raponi Danilo Monarca Peishih Liang Riccardo Massantini |
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Affiliation: | 1.Department for Innovation in Biological, Agro-food and Forest system,University of Tuscia,Viterbo,Italy;2.United States Department of Agriculture, Agricultural Research Service,Western Regional Research Center,Albany,USA;3.Department of Agricultural and Forestry Sciences,University of Tuscia,Viterbo,Italy |
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Abstract: | The worldwide consumption of dried carrot (Daucus carota L.) is on a growing trend. Conventional methods for drying carrots include hot-water blanching followed by hot-air drying, which is usually uncontrolled and therefore prone to product quality deterioration. Thus, there is a need for innovative drying systems that yield high-value end products. In this study, the efficacy of NIR spectroscopy for the non-destructive monitoring of physicochemical changes and drying behaviour in organic carrot slices during 8-h hot-air drying at 40 °C was demonstrated using Partial least squares (PLS) regression and PLS discriminant analysis (PLS-DA). The impact of hot-water blanching pre-treatment (at 95 °C for 1.45 min) for enzyme inactivation on performances of both regression and classification models was also evaluated. PLS regression models were successfully developed to monitor changes in water activity (R 2 = 0.91–0.96), moisture content (R 2 = 0.97–0.98), total carotenoids content (R 2 = 0.92–0.96), lightness for unblanched carrots (R 2 = 0.80–0.83) and hue angle for blanched samples (R 2 = 0.85–0.87). Soluble solids content prediction was poor for both treatments (RMSEP = 3.43–4.40). Classification models were developed to recognise dehydration phases of carrot slices on the basis of their NIR spectral profile using K-means and PLS-DA algorithms in sequence. The performance of each PLS-DA model was defined based on its accuracy, sensitivity and specificity rates. All of the selected models provided from good (> 0.85) to excellent (> 0.95) sensitivity and specificity for the predefined drying phases. Feature selection procedures yielded both regression and classification models with performances very similar to models computed from the full spectrum. |
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