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The Effect of Path Length on the Measurement Accuracies of Wine Chemical Parameters by UV,Visible, and Near-Infrared Spectroscopy
Authors:Nevse Molla  Ivan Bakardzhiyski  Yana Manolova  Valentin Bambalov  Daniel Cozzolino  Liudmil Antonov
Affiliation:1.Institute of Organic Chemistry with Centre of Phytochemistry,Bulgarian Academy of Sciences,Sofia,Bulgaria;2.Department of Technology of Wine and Beer,University of Food Technologies Plovdiv,Plovdiv,Bulgaria;3.Department of Viticulture,Agricultural University Plovdiv,Plovdiv,Bulgaria;4.School of Medical and Applied Sciences, CQIRP (Central Queensland Innovation and Research Precinct),Central Queensland University (CQU),North Rockhampton,Australia
Abstract:The use of spectral measurements using either UV, visible (VIS), or near-infrared (NIR) spectroscopy to characterize wines or to predict wine chemical composition has been extensively reported. However, little is known about the effect of path length on the UV, VIS, and NIR spectrum of wine and the subsequent effect on the performance of calibrations used to measure chemical composition. Several parameters influence the spectra of organic molecules in the NIR region, with path length and temperature being one of the most important factors affecting the intensity of the absorptions. In this study, the effect of path length on the standard error of UV, VIS, and NIR calibration models to predict phenolic compounds was evaluated. Nineteen red and 13 white wines were analyzed in the UV, VIS, and NIR regions (200–2500 nm) in transmission mode using two effective path lengths 0.1 and 1 mm. Principal component analysis (PCA) and partial least squares (PLS) regression models were developed using full cross validation (leave-one-out). These models were used to interpret the spectra and to develop calibrations for phenolic compounds. These results indicated that path length has an effect on the standard error of cross validation (SECV) absolute values obtained for the PLS calibration models used to predict phenolic compounds in both red and white wines. However, no statistically significant differences were observed (p > 0.05). The practical implication of this study was that the path length of scanning for wines has an effect on the calibration accuracies; however, they are non-statistically different. Main differences were observed in the PCA score plot. Overall, well-defined protocols need to be defined for routine use of these methods in research and by the industry.
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