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Quantitative analysis of bayberry juice acidity based on visible and near-infrared spectroscopy

机译:基于可见光和近红外光谱的杨梅汁酸度定量分析

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Visible and near-infrared (Vis/NIR) reflectance spectroscopy has been investigated for its ability tonondestructively detect acidity in bayberry juice. What we believe to be a new, better mathematic model is put forward, which we have named principal component analysis-stepwise regression analysis-backpropagation neural network (PCA-SRA-BPNN), to build a correlation between the spectral reflectivity data and the acidity of bayberry juice. In this model, the optimum network parameters, such as the number of input nodes, hidden nodes, learning rate, and momentum, are chosen by the value of root-mean-square (rms) error. The results show that its prediction statistical parameters are correlation coefficient (r) of 0.9451 and root-mean-square error of prediction (RMSEP) of 0.1168. Partial least-squares (PLS) regression is also established to compare with this model. Before doing this, the influences of various spectral pretreatments (standard normal variate, multiplicative scatter correction, S. Golay first derivative, and wavelet package transform) are compared. The PLS approach with wavelet package transform preprocessing spectra is found to provide the best results, and its prediction statistical parameters are correlation coefficient (r) of 0.9061 and RMSEP of 0.1564. Hence, these two models are both desirable to analyze the data from Vis/NIR spectroscopy and to solve the problem of the acidity prediction of bayberry juice. This supplies basal research to ultimately realize the online measurements of the juice's internal quality through this Vis/NIR spectroscopy technique.
机译:已经对可见光和近红外(Vis / NIR)反射光谱进行了研究,以其无损检测杨梅汁中酸度的能力。提出了我们认为是更好的新数学模型,我们将其命名为主成分分析-逐步回归分析-反向传播神经网络(PCA-SRA-BPNN),以建立光谱反射率数据与酸度之间的相关性杨梅汁。在该模型中,通过均方根(rms)误差值选择最佳网络参数,例如输入节点数,隐藏节点数,学习率和动量。结果表明,其预测统计参数为相关系数(r)为0.9451,预测均方根误差(RMSEP)为0.1168。还建立了偏最小二乘(PLS)回归以与该模型进行比较。在此之前,先比较各种频谱预处理(标准正态变量,乘法散射校正,S。Golay一阶导数和小波包变换)的影响。发现采用小波包变换预处理谱的PLS方法可提供最佳结果,其预测统计参数为相关系数(r)为0.9061,RMSEP为0.1564。因此,这两个模型对于分析Vis / NIR光谱数据和解决杨梅汁酸度预测问题都是理想的。这提供了基础研究,以最终通过该Vis / NIR光谱技术实现果汁内部质量的在线测量。

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