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Amylose content calibration model for the three types of selected rice grains using visible shortwave near infrared spectroscopy

机译:可见短波近红外光谱法对三种稻米直链淀粉含量的校正模型

摘要

Amylose content is one of the main characteristics to measure the quality and texture of rice. This research aims to conduct a non-invasive measurementof amylose content in rice grains using a Visible-Shortwave Near-Infrared Spectroscopy (VISSWNIRS) through the combination of two methods: Principal Component Regression (PCR) and Artificial Neural Network (ANN). Three data sets of rice samples (spectral VIS-SWNIR and amylose content reference) from three types of rice (brown rice, basmati rice and white rice) that are available in the Malaysian market were used and processed separately. The effect of data shift in the reflection spectrum was eliminated using the zero, first and second order derivatives which were then combined with the zero, first and second order of the Savitzky-Golay filter. The data spectrum spread was reduced using Singular Value Decomposition (SVD). The PCR and ANN methods were applied with 65% of the data sets were used for training while the remaining 35% were used for testing. The research analysis results have found that the Root-Mean-Square-Error of Calibration (RMSEC),the correlation coefficient of calibration (rc), the Root-Mean-Square-Error of Prediction (RMSEP), and the prediction correlation coefficient (rp) of PCR for brown rice were 2.96, 0.44, 2.74, and 0.22 respectively. For basmati rice, the corresponding values were 1.93, 0.57, 1.98, and 0.40 while for white rice the values were 2.42, 0.73, 2.65, and 0.62. In the meantime, ANN analysis yields the values of 0.70, 0.99, 0.96, and 0.88 for brown rice, 0.24, 0.99, 0.31, and 0.99 for basmati rice and 1.03, 0.95, 1.05, and 0.93 for white rice. The results suggest that VIS-SWNIRS is suitable and has the potential to be used in the non-invasive assessment of amylose content in rice grains from three types of rice in the Malaysian market.
机译:直链淀粉含量是衡量稻米品质和质地的主要特征之一。这项研究旨在通过可见-短波近红外光谱法(VISSWNIRS),通过两种方法的组合,对大米中的直链淀粉含量进行无创测量:主成分回归(PCR)和人工神经网络(ANN)。马来西亚市场上使用了三种数据集,分别来自马来西亚市场上三种类型的大米(糙米,印度香米和白米)的大米样品(光谱VIS-SWNIR和直链淀粉含量参考)。使用零,一阶和二阶导数消除了反射光谱中数据移位的影响,然后将它们与Savitzky-Golay滤波器的零,一阶和二阶组合。使用奇异值分解(SVD)可以减少数据频谱扩展。应用PCR和ANN方法,其中65%的数据集用于训练,而其余35%的数据用于测试。研究分析结果发现,校正的均方根误差(RMSEC),校正的相关系数(rc),预测的均方根误差(RMSEP)和预测相关系数(糙米PCR的rp)分别为2.96、0.44、2.74和0.22。对于印度香米,相应的值为1.93、0.57、1.98和0.40,而对于白米,相应的值为2.42、0.73、2.65和0.62。同时,ANN分析得出糙米的值分别为0.70、0.99、0.96和0.88,印度香米的值为0.24、0.99、0.31和0.99,白米的值为1.03、0.95、1.05和0.93。结果表明,VIS-SWNIRS是合适的,并且有潜力用于非侵入性评估马来西亚市场上三种稻米中稻米中直链淀粉的含量。

著录项

  • 作者

    Ibrahim Syahira;

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  • 年度 2015
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