M. Castillo, J. Acosta, G. Hodge, M. Vann, R. Lewis
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The models for the same three variables for unprocessed leaves were also very good, with only slightly lower fit statistics [r2 (SEP) = 0.93 (1.58), 0.87 (0.22), and 0.88 (0.18), respectively). Fit statistics for anabasine NIR models were intermediate with r2 (SEP in %) values ranging from 0.73 (0.003) to 0.76 (0.003), while the lowest fit statistics were observed for anatabine and norticotine with r2 (SEP in %) ranging from 0.49 (0.005) to 0.55 (0.017), respectively, for both unprocessed and processed leaves. Hence, use of a handheld NIR spectrometer would be of more limited value for these variables. 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引用次数: 0
摘要
采用microPHAZIRTM手持式近红外光谱仪建立了近红外光谱校准模型,用于预测烤烟叶片样品的化学性质。样本数据集包括348个上茎烤烟叶捆样本,这些样本来自多个地点的一系列品种。未加工的叶子样本是从烘烤仓收集的完整的未研磨的叶子。处理后的叶片样品在扫描前进一步干燥和研磨。还原糖百分比、总生物碱百分比和尼古丁百分比的近红外预测模型对加工后的叶片非常好[r2 (SEP in %)分别为0.98(0.82)、0.92(0.17)和0.92(0.14)]。对于未加工的叶片,同样三个变量的模型也非常好,只是拟合统计量略低[r2 (SEP)分别= 0.93(1.58),0.87(0.22)和0.88(0.18)]。anatabine近红外模型的拟合统计量为中等,r2 (SEP in %)值为0.73(0.003)~ 0.76(0.003),而anatabine和nortictine的拟合统计量最低,未加工和加工叶片的r2 (SEP in %)分别为0.49(0.005)~ 0.55(0.017)。因此,使用手持式近红外光谱仪对这些变量的价值更有限。烤烟烟叶样品的某些化学性状的化学成分可以在烟叶离开烤房时直接评估,从而最大限度地减少了干燥和研磨样品进行比色和色谱分析的需要。
Analysis of alkaloids and reducing sugars in processed and unprocessed tobacco leaves using a handheld near infrared spectrometer
Near infrared (NIR) spectroscopy calibration models were developed to predict chemical properties of flue-cured tobacco (Nicotiana tabacum L.) leaf samples using a microPHAZIRTM handheld NIR spectrometer. The sample data set consisted of 348 leaf-bundled samples of upper-stalk flue-cured tobacco leaves collected from an array of cultivars evaluated in multiple locations. Unprocessed leaf samples were intact whole unground leaves collected from curing barns. Processed leaf samples were further dried and ground before scanning. The NIR prediction models for percent reducing sugars, percent total alkaloids, and percent nicotine were very good for processed leaves [r2 (SEP in %) values = 0.98 (0.82), 0.92 (0.17), and 0.92 (0.14), respectively]. The models for the same three variables for unprocessed leaves were also very good, with only slightly lower fit statistics [r2 (SEP) = 0.93 (1.58), 0.87 (0.22), and 0.88 (0.18), respectively). Fit statistics for anabasine NIR models were intermediate with r2 (SEP in %) values ranging from 0.73 (0.003) to 0.76 (0.003), while the lowest fit statistics were observed for anatabine and norticotine with r2 (SEP in %) ranging from 0.49 (0.005) to 0.55 (0.017), respectively, for both unprocessed and processed leaves. Hence, use of a handheld NIR spectrometer would be of more limited value for these variables. The chemical composition of flue-cured tobacco leaf samples for some chemical traits can be directly assessed at the point when the leaves exit the curing barns, thus minimizing the need to dry and grind samples for colorimetric and chromatographic analyses.
期刊介绍:
JNIRS — Journal of Near Infrared Spectroscopy is a peer reviewed journal, publishing original research papers, short communications, review articles and letters concerned with near infrared spectroscopy and technology, its application, new instrumentation and the use of chemometric and data handling techniques within NIR.