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Measurement of moisture, soluble solids, sucrose content and mechanical properties in sugar beet using portable visible and near-infrared spectroscopy

机译:使用便携式可见和近红外光谱仪测量甜菜中的水分,可溶性固体,蔗糖含量和机械性能

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Visible and near-infrared spectroscopy, coupled with partial least squares regression, was used to predict the moisture, soluble solids and sucrose content and mechanical properties of sugar beet. Interactance spectra were acquired from both intact and sliced beets, using two portable spectrometers covering the spectral regions of 400-1100 nm and 900-1600 nm, respectively. Both visible and short-wave near-infrared (400-1100 nm) and near-infrared (900-1600 nm) spectrometers gave excellent predictions for the moisture, soluble solids and sucrose content of beet slices with the correlations (r(p)) of 0.89-0.95 and the standard errors of prediction (SEP) of 0.60-0.85. Lower prediction accuracies were obtained for intact beets, with the r(p) values of 0.75-0.85 and the SEPs of 0.88-1.23. However, the two spectrometers showed a poor ability of predicting the compressive mechanical properties (i.e., maximum force, area and the slope for the force/displacement curve) of both beet slices and intact beets. Using simple correlation analysis, we also identified wavelengths that had strong correlation with the measured compositions of sugar beets. The portable visible and near-infrared spectrometry is potentially useful for rapid assessment of the moisture, soluble solids and sucrose content of sugar beet at harvest and during postharvest handling and processing. (C) 2015 Elsevier B.V. All rights reserved.
机译:可见和近红外光谱结合偏最小二乘回归用于预测甜菜的水分,可溶性固形物和蔗糖含量以及机械性能。使用两个分别覆盖400-1100 nm和900-1600 nm光谱区域的便携式光谱仪,从完整和切片的甜菜中获得了相互作用光谱。可见和短波近红外(400-1100 nm)和近红外(900-1600 nm)光谱仪均能很好地预测甜菜片的水分,可溶性固形物和蔗糖含量,并具有相关性(r(p))误差为0.89-0.95,标准预测误差(SEP)为0.60-0.85。对于完整的甜菜,获得较低的预测准确度,r(p)值为0.75-0.85,SEP为0.88-1.23。但是,这两个光谱仪显示出预测甜菜片和完整甜菜的压缩机械性能(即最大力,面积和力/位移曲线的斜率)的能力差。使用简单的相关分析,我们还确定了与甜菜的成分组成具有很强相关性的波长。便携式可见光和近红外光谱仪可用于在收获时以及收获后的处理和加工过程中快速评估甜菜的水分,可溶性固体和蔗糖含量。 (C)2015 Elsevier B.V.保留所有权利。

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