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Comparison of Data Pre-processing in Pattern Recognition of Milk Powder Vis/NIR Spectra

机译:乳粉麦克酸/ nir光谱模式识别数据预处理的比较

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摘要

The effect of data pre-processing, including standard normal variate transformation (SNV), Savitzky-Golay first derivative transformation (S. Golay 1st-Der) and wavelet transforms (WT) on the identification of infant milk powder varieties were investigated. The potential of visible and near infrared spectroscopy (Vis/NIRS) for its ability to nondestructively differentiate infant formula milk powder varieties was evaluated. A total of 270 milk powder samples (30 for each variety) were selected for Vis/NIRS on 325-1075 nm using a field spectroradiometer. Partial least squares (PLS) analysis was performed on the processed spectral data. In terms of the total classification results, the model with the wavelet transforms processed data is the best, and its prediction statistical parameters were r2 of 0.978, SEP of 0.435 and RMSEP of 0.413. This research shows that visible and near infrared reflectance spectroscopy has the potential to be used for discrimination of milk powder varieties, and a suitable pre-processing method should be selected for spectrum data analysis.
机译:研究了数据预处理的影响,包括标准正常变换(SNV),Savitzky-Golay第一个衍生物转化(S.Golay第1-Der)和小波变换(WT)的鉴定,鉴定婴儿乳粉品种的鉴定。评估了可见和近红外光谱(VI / NIRS)的潜力,用于其非破坏性地区分婴儿配方奶粉品种的能力。使用励磁光谱辐射计,在325-1075nm上选择总共270次奶粉样品(每种含量为30个)。在处理过的光谱数据上执行局部最小二乘(PLS)分析。就总分类结果而言,具有小波变换的模型是最佳的,其预测统计参数为0.978,SEP为0.435和0.413的R2。本研究表明,可见和近红外反射光谱谱有可能用于歧视牛奶粉品种,应选择合适的预处理方法进行光谱数据分析。

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