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Prediction of pH of cola beverage using Vis/NIR spectroscopy and least squares-support vector machine

机译:VIS / NIR光谱和最小二乘支持向量机预测可乐饮料的pH预测

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Visible and near infrared (Vis/NIR) transmission spectroscopy and chemometric methods were utilized to predict the pH values of cola beverages. Five varieties of cola were prepared and 225 samples (45 samples for each variety) were selected for the calibration set, while 75 samples (15 samples for each variety) for the validation set. The smoothing way of Savitzky-Golay and standard normal variate (SNV) followed by first-derivative were used as the pre-processing methods. Partial least squares (PLS) analysis was employed to extract the principal components (PCs) which were used as the inputs of least squares-support vector machine (LS-SVM) model according to their accumulative reliabilities. Then LS-SVM with radial basis function (RBF) kernel function and a two-step grid search technique were applied to build the regression model with a comparison of PLS regression. The correlation coefficient (r), root mean square error of prediction (RMSEP) and bias were 0.961, 0.040 and 0.012 for PLS, while 0.975, 0.031 and 4.697×10~(-3) for LS-SVM, respectively. Both methods obtained a satisfying precision. The results indicated that Vis/NIR spectroscopy combined with chemometric methods could be applied as an alternative way for the prediction of pH of cola beverages.
机译:可见和近红外(可见/近红外)发射光谱法和化学计量学方法被用来预测可乐饮料的pH值。制备五种品种可乐和被选择用于校准组225个样本(45个样品每个品种),而75个样品(15个样品每个品种),用于验证组。随后一阶导数Savitzky-格雷和标准正态变量(SNV)的平滑化方法中用作前处理的方法。被使用偏最小二乘(PLS)分析,以提取主分量,其被用作根据其累计可靠性最小二乘支持向量机(LS-SVM)模型的输入(PC)的。然后LS-SVM与径向基函数(RBF)核函数和两步网格搜索技术的适用与PLS回归的比较来构建回归模型。的相关系数(r),预测(RMSEP)和偏置的根均方误差为0.961,0.040和0.012进行PLS,而0.975,0.031和4.697×10〜(-3)对于LS-SVM,分别。这两种方法获得的满足精度。结果表明,可见/近红外光谱与化学计量学方法组合可以作为可乐型饮料的pH值的预测的另一种方式来施加。

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