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首页> 外文期刊>Journal of food quality >Effect of Storage Time and Packing Method on the Freshness of Dried Lycium Fruit Using Electronic Nose and Chemometrics
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Effect of Storage Time and Packing Method on the Freshness of Dried Lycium Fruit Using Electronic Nose and Chemometrics

机译:储存时间和包装方法对使用电子鼻子和化学计量干燥枸杞子果实的影响

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The effect of storage time and packing method on dried Lycium fruits was studied through an electronic olfactory system with the metal oxide sensor array that provides an overall perception of the volatile compounds presented in the sample headspace. Principle component analysis (PCA), canonical discriminant analysis (CDA), and cluster analysis (CA) were used for freshness and packing methods discrimination of dried Lycium fruits. The stale samples of 2015 and 2016 could be separated with those of 2017 by PCA, CDA, and CA analysis. Better discrimination results were obtained by CDA, with samples of 2015 and 2016 separated with each other. For samples of 2017, the unpackaged samples of 2017-4 were distinguished with the vacuumed samples, while samples of grade C were separated with B and D. For quantitative analysis, predictive models for prediction of the storage years of dried Lycium fruits were built with methods of partial least square (PLS) analysis, multiple linear regression (MLR), and back propagation neural network (BPNN). The model built by BPNN showed the best predict ability with R2?=?0.9994, while PLS and MLR were also effective in the prediction of storage years of dried Lycium fruits, with high determination coefficients of 0.9316 and 0.9330. These findings showed that E-nose can be used in the discrimination of the storage time and package method of dried Lycium fruits.
机译:通过具有金属氧化物传感器阵列的电子嗅觉系统研究了干燥枸杞果实上的储存时间和包装方法的影响,其提供了对样品顶空中呈现的挥发性化合物的总体感知。原理成分分析(PCA),典型判别分析(CDA)和聚类分析(CA)用于清新和包装方法辨别干枸杞。 2015年和2016年的陈旧样本可以通过PCA,CDA和CA分析与2017年的陈旧样本分开。 CDA获得更好的歧视结果,2015年和2016年的样品彼此分开。对于2017年的样品,2017-4的未包装样品与真空样品不同,而C级样品用B和D分离。用于定量分析,建立了干燥枸杞储存年度的预测模型部分最小二乘(PLS)分析,多个线性回归(MLR)和后传播神经网络(BPNN)。由BPNN构建的模型显示了R2的最佳预测能力?=?0.9994,而PLS和MLR在干燥枸杞的储存年度上也有效,高测定系数为0.9316和0.9330。这些发现表明,电子鼻部可用于干燥枸杞储存时间和包装方法的辨别。

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