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首页> 外文期刊>Journal of food engineering >A comparative study for the quantitative determination of soluble solids content, pH and firmness of pears by Vis/NIR spectroscopy
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A comparative study for the quantitative determination of soluble solids content, pH and firmness of pears by Vis/NIR spectroscopy

机译:Vis / NIR光谱法定量测定梨中可溶性固形物含量,pH和硬度的比较研究

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Visible and near infrared (Vis/NIR) spectroscopy was investigated to determine the soluble solids content (SSC), pH and firmness of different varieties of pears. Two-hundred forty samples (80 for each variety) were selected as sample set. Two-hundred ten pear samples (70 for each variety) were selected randomly for the calibration set, and the remaining 30 samples (10 for each variety) for the validation set. Partial least squares (PLS) and least squares-support vector machine (LS-SVM) with different spectral preprocessing techniques were implemented for calibration models. Different wavelength regions including Vis, N1R and Vis/NIR were compared. It indicated that Vis/NIR (400-1800 nm) was optimal for PLS and LS-SVM models. Then, LS-SVM models were developed with a grid search technique and RBF kernel function. All LS-SVM models outperformed PLS models. Next, effective wavelengths (EWs) were selected according to regression coefficients. The EW-LS-SVM models were developed and a good prediction precision and stability was achieved compared with PLS and LV-LS-SVM models. The correlation coefficient of prediction (r_p), root mean square error of prediction (RMSEP) and bias for the best prediction by EW-LS-SVM were 0.9164, 0.2506 and -0.0476 for SSC, 0.8809, 0.0579 and -0.0025 for pH, whereas 0.8912, 0.6247 and -0.2713 for firmness, respectively. The overall results indicated that the regression coefficient was an effective way for the selection of effective wavelengths. LS-SVM was superior to the conventional linear PLS method in predicting SSC, pH and firmness in pears. Therefore, non-linear models may be a better alternative to monitor internal quality of fruits. And the EW-LS-SVM could be very helpful for development of portable instrument or real-time monitoring of the quality of pears.
机译:研究了可见和近红外(Vis / NIR)光谱,以确定不同梨品种的可溶性固形物含量(SSC),pH和硬度。选择了240个样本(每个品种80个)作为样本集。随机选择200个梨样品(每个品种70个)作为校准集,其余30个样品(每个品种10个)作为验证集。为校准模型实现了具有不同光谱预处理技术的偏最小二乘(PLS)和最小二乘支持向量机(LS-SVM)。比较了包括Vis,N1R和Vis / NIR在内的不同波长区域。表明Vis / NIR(400-1800 nm)最适合PLS和LS-SVM模型。然后,利用网格搜索技术和RBF核函数开发了LS-SVM模型。所有LS-SVM模型均优于PLS模型。接下来,根据回归系数选择有效波长(EWs)。与PLS和LV-LS-SVM模型相比,开发了EW-LS-SVM模型并获得了良好的预测精度和稳定性。预测的相关系数(r_p),预测的均方根误差(RMSEP)和EW-LS-SVM进行的最佳预测的偏倚(对于SSC为0.9164、0.2506和-0.0476,对于pH为0.8809、0.0579和-0.0025),而硬度分别为0.8912、0.6247和-0.2713。总体结果表明,回归系数是选择有效波长的有效方法。 LS-SVM在预测梨的SSC,pH和硬度方面优于传统的线性PLS方法。因此,非线性模型可能是监视水果内部质量的更好选择。 EW-LS-SVM对便携式仪器的开发或梨品质的实时监控可能非常有帮助。

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