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Detection of smoke-derived compounds from bushfires in Cabernet-Sauvignon grapes, must, and wine using Near-Infrared spectroscopy and machine learning algorithms

机译:使用近红外光谱和机器学习算法检测来自Cabernet-Sauvignon葡萄的丛林峰的烟雾衍生的化合物

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摘要

The number and intensity of wildfires are increasing worldwide, thereby raising the risk of smoke contamination of grapevine berries and the development of smoke taint in wine. This study aimed to develop five artificial neural network (ANN) models from berry, must, and wine samples obtained from grapevines exposed to different levels of smoke: (i) Control (C), i.e., no misting or smoke exposure; (ii) Control with misting (CM), i.e., in-canopy misting, but no smoke exposure; (iii) low-density smoke treatment (LS); (iv) high-density smoke treatment (HS) and (v) a high-density smoke treatment with misting (HSM). Models 1, 2, and 3 were developed using the absorbance values of near-infrared (NIR) berry spectra taken one day after smoke exposure to predict levels of 10 volatile phenols (VP) and 18 glycoconjugates in grapes at either one day after smoke exposure (Model 1: R = 0.98; R2 = 0.97; b = 1) or at harvest (Model 2: R = 0.98; R2 = 0.97; b = 0.97), as well as six VP and 17 glycoconjugates in the final wine (Model 3: R = 0.98; R2 = 0.95; b = 0.99). Models 4 and 5 were developed to predict the levels of six VP and 17 glycoconjugates in wine. Model 4 used must NIR absorbance spectra as inputs (R = 0.99; R2 = 0.99; b = 1.00), while Model 5 used wine NIR absorbance spectra (R = 0.99; R2 = 0.97; b = 0.97). All five models displayed high accuracies and could be used by grape growers and winemakers to non-destructively assess at near real-time the levels of smoke-related compounds in grapes and/or wine in order to make timely decisions about grape harvest and smoke taint mitigation techniques in the winemaking process.
机译:野火的数量和强度在全球范围内增加,从而提高了葡萄浆果烟雾污染的风险以及葡萄酒中的烟雾污染。本研究旨在开发来自浆果的五个人工神经网络(ANN)模型,必须和从暴露于不同烟雾水平的葡萄藤中获得的葡萄酒样品:(i)控制(c),即没有雾化或烟雾暴露; (ii)用雾化(cm),即冠层畸形,但没有烟雾暴露; (iii)低密度烟雾处理(LS); (iv)高密度烟雾处理(HS)和(V)具有雾化(HSM)的高密度烟雾处理。模型1,2和3使用烟雾暴露后一天服用近红外(NIR)浆料谱的吸光度值,以预测烟雾暴露后一天的葡萄中10次挥发性酚(VP)和18种糖缀合物的水平(型号1:r = 0.98; r2 = 0.97; b = 1)或收获(型号2:r = 0.98; r2 = 0.97; b = 0.97),以及最终葡萄酒中的六个vp和17个糖缀合物(模型3:r = 0.98; r2 = 0.95; b = 0.99)。开发了模型4和5,以预测葡萄酒中六个VP和17种甘油缀合物的水平。型号4使用的型号必须使用NIR吸光度光谱作为输入(r = 0.99; r2 = 0.99; b = 1.00),而模型5次使用的葡萄酒Nir吸光度光谱(r = 0.99; r2 = 0.97; b = 0.97)。所有五种型号均显示出高精度,可以通过葡萄种植者和酿酒厂使用,在葡萄和/或葡萄酒中的烟雾相关化合物水平近乎实时评估,以便及时决定葡萄收获和烟雾污染酿酒过程中的缓解技术。

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