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Near Infrared Non-Destructive Inspection of Inner Qualities by Multivariate Analysis

机译:多元分析近红外无损检测内在质量

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In this study, multivariate data analysis, especially partial least squares regression (PLSR), is applied to analyze the near infrared absorbance spectra of fruit samples in order to acquire the inner qualities without destroying the samples. The calibration models have been established for the samples with raw data, first order derivative and second order derivative treatments, respectively. In the meantime, the models have been verified by using cross validation method. As anticipated, a model with higher correlation coefficient (r) and lower root mean square error of calibration (RMSEC) is preferred for both calibration and cross validation. The results reveal that the calibration models with second order derivative treatments have higher correlation coefficient, coefficient of determination, as well as lower RMSEC. Furthermore, the calibration models have been optimized by selecting partial wavelengths as new variables based on absorbance spectra and regression coefficient. The reasons why the calibration models are improved might be suitably cutting off partial wavelengths causing noises in the model.
机译:在这项研究中,多变量数据分析,尤其是偏最小二乘回归(PLSR),被用于分析水果样品的近红外吸收光谱,以便在不破坏样品的情况下获得内部品质。建立了分别具有原始数据,一阶导数和二阶导数处理的样品的校准模型。同时,使用交叉验证方法对模型进行了验证。如预期的那样,具有较高相关系数(r)和较低均方根校正误差(RMSEC)的模型对于校正和交叉验证都是优选的。结果表明,采用二阶导数处理的校准模型具有较高的相关系数,确定系数和较低的RMSEC。此外,通过基于吸收光谱和回归系数选择部分波长作为新变量来优化校准模型。改进校准模型的原因可能是适当切断了部分波长,从而在模型中产生噪声。

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