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Identification of less-ripen, ripen, and over-ripen grapes during harvest time based on visible and near-infrared (Vis-NIR) spectroscopy

机译:在基于可见和近红外(VIR-NIR)光谱期间在收获时间内识别较少成熟,成熟和过度成熟的葡萄

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Nondestructive determination of grape ripeness is essential for vineyard harvest schedule optimization. This study aims to investigate the identification of less ripen, ripen and over-ripen grapes by visible and near infrared (Vis-NIR) spectrophotometer. A local cultivar of grape ‘Beyond’ was examined during harvest season from July to August, 2011. The samples were separated into three ripen degrees, e.g. less-ripen, ripen, and over-ripen, according to the sugar content in grapes. The samples were divided into a calibration set (70%) and an independent prediction set (30%). The calibration set was subjected to a partial least-squares (PLS) regression and principal components analysis (PCA) with leave-one-out cross validation. The first 10 factors, e.g. latent variables (LVs) for PLS and principal components (PCs) for PCA, were chosen as input variables to three classification models, e.g. linear discrimination analysis (LDA), back-propagation artificial neural network (BPANN) and support vector machine (SVM). These models were validated by the independent prediction set. Validation result shows that PCA-LDA and PLS-LDA models achieve higher classification accuracy than others. The LDA combined with 6 PCs performs best with 100% classification accuracy. It is concluded that Vis-NIR spectroscopy is promising for the instant identification of different ripeness of grapes. The proposed technique is useful for discriminating ripen and over-ripen grapes during harvest time.
机译:无损测定葡萄成熟度对于葡萄园收获时间表优化至关重要。本研究旨在通过可见和近红外(Vis-NIR)分光光度计来研究识别较少成熟,成熟,成熟和过度成熟的葡萄。垃圾&#x2018的当地品种;超越’在2011年7月至8月的收获季节审查。样品分为三个成熟度,例如,根据葡萄中的糖含量,降低成熟,成熟和过度成熟。将样品分成校准组(70%)和独立预测组(30%)。将校准组经受留下次数交叉验证的部分最小二乘(PLS)回归和主成分分析(PCA)。前10个因素,例如PCA的PLS和主组件(PC)的潜入变量(LVS)被选为输入变量,为三种分类模型,例如,线性辨别分析(LDA),后传播人工神经网络(BPANN)和支持向量机(SVM)。这些模型由独立预测集验证。验证结果表明,PCA-LDA和PLS-LDA型号比其他PCA-LDA和PLS-LDA模型可实现更高的分类精度。 LDA与6个PC相结合,以100%的分类精度执行最佳。结论是,Vis-nir光谱是对葡萄的不同成熟度的即时识别。所提出的技术可用于在收获时间内辨别成熟和成熟的葡萄。

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