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中国精品科技期刊2020
乔春艳,张雪茹,郑卫民,等. 基于近红外光谱技术对市售羊奶粉品质指标独立模型与通用模型探究[J]. 食品工业科技,2021,42(22):297−305. doi: 10.13386/j.issn1002-0306.2021030153.
引用本文: 乔春艳,张雪茹,郑卫民,等. 基于近红外光谱技术对市售羊奶粉品质指标独立模型与通用模型探究[J]. 食品工业科技,2021,42(22):297−305. doi: 10.13386/j.issn1002-0306.2021030153.
QIAO Chunyan, ZHANG Xueru, ZHENG Weimin, et al. Research on the Independent Model and General Quantitative Model of Commercial Goat Milk Powder Quality Index Based on Near Infrared Spectroscopy Technology[J]. Science and Technology of Food Industry, 2021, 42(22): 297−305. (in Chinese with English abstract). doi: 10.13386/j.issn1002-0306.2021030153.
Citation: QIAO Chunyan, ZHANG Xueru, ZHENG Weimin, et al. Research on the Independent Model and General Quantitative Model of Commercial Goat Milk Powder Quality Index Based on Near Infrared Spectroscopy Technology[J]. Science and Technology of Food Industry, 2021, 42(22): 297−305. (in Chinese with English abstract). doi: 10.13386/j.issn1002-0306.2021030153.

基于近红外光谱技术对市售羊奶粉品质指标独立模型与通用模型探究

Research on the Independent Model and General Quantitative Model of Commercial Goat Milk Powder Quality Index Based on Near Infrared Spectroscopy Technology

  • 摘要: 为实现对羊奶粉生产过程中品质指标的在线监测,利用近红外光谱技术分别建立市售羊奶粉蛋白质、脂肪、乳糖、水分、酸度和总灰分6个品质指标的通用模型及独立模型。本研究对羊奶粉样品的6个品质指标的近红外光谱数据分别进行7种平滑及4种算法结合的28种不同方式预处理,采用改良偏最小二乘法(MPLS)分别建立以全部羊奶粉为样本集的通用模型及仅以陕西地区羊奶粉和仅以纯羊奶粉作为样本集建立的2个独立模型,探究这3个模型的预测性能及通用模型对2个独立模型的适用性。结果表明:2个独立模型6项指标的预测标准偏差(SEP)值分别为0.043~0.412和0.027~0.304,预测决定系数(RSQ)值分别为0.889~0.998和0.977~0.998,通用模型6项指标的SEP值和RSQ值分别为0.034~0.732和0.970~0.999,这3个模型预测能力均良好。通用模型的适用性验证结果表明:通用模型对陕西羊奶粉蛋白质、脂肪、水分、酸度4项指标预测能力相比独立模型均有提高;同样对纯羊奶粉品质指标中酸度预测能力相比独立模型也有提高。综上,本研究所建通用模型及独立模型对快速无损预测市售羊奶粉品质指标是可行的,且通用模型对2个独立模型的部分指标预测能力均有提高,可实现对不同品类、地区羊奶粉更经济化的实时监测。

     

    Abstract: In order to achieve online monitoring of the quality index in the production of goat milk powder, a generic model and an independent model for protein, fat, lactose, moisture, acidity and total ash of goat milk powder were established based on NIR spectroscopy. The six quality indexes near infrared spectral data were preprocessed in 28 different ways combined seven smoothing methods and four algorithms based on modified partial least square method(MPLS), including the general model of all goat milk powder and two independent models of Shaanxi province goat milk powder and pure sheep milk powder. It was aimed to obtain the prediction performance of the three models and the applicability of the general model to the two independent models. The results showed that the standard deviations(SEP) of the 2 independent models based on the 6 quality indicators of Shaanxi goat milk powder and pure goat milk powder were 0.043~0.412 and 0.027~0.304, and the prediction coefficient of determination(RSQ) were 0.889~0.998 and 0.977~0.998, respectively. The SEP and RSQ of the 6 indicators of the universal quantitative model were 0.034~0.732 and 0.970~0.999, respectively. They all have good predictive ability. The applicability verification results of the general model showed that the general model prediction ability of protein, fat, moisture and acidity of Shaanxi goat milk powder and the acidity of pure goat milk powder was all improved when compared with the independent model. These results confirmed that the general model and independent model were feasible for fast and non-destructive prediction of the quality indicators of goat milk powder on the market. The general model had improved the predictive ability of some indicators of the two independent models, which could realize more economic online monitoring the different goat milk powder.

     

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