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The discrimination of honey origin using melissopalynology and Raman spectroscopy techniques coupled with multivariate analysis

机译:运用蜜酒分离法和拉曼光谱技术结合多元分析来鉴​​别蜂蜜来源

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Honey traceability to food quality is required by consumers and food control institutions. Melissopalynologists traditionally use percentages of nectariferous pollens to discriminate the botanical origin and the entire pollen spectrum (presence/absence, type and quantities and association of some pollen types) to determinate the geographical origin of honeys. To improve melissopalynological routine analysis, principal components analysis (PCA) was used. A remarkable and innovative result was that the most significant pollens for the traditional discrimination of the botanical and geographical origin of honeys were the same as those individuated with the chemometric model. The reliability of assignments of samples to honey classes was estimated through explained variance (85%). This confirms that the chemometric model properly describes the melissopalynological data. With the aim to improve honey discrimination, FT-microRaman spectrography and multivariate analysis were also applied. Well performing PCA models and good agreement with known classes were achieved. Encouraging results were obtained for botanical discrimination. (C) 2014 Elsevier Ltd. All rights reserved.
机译:消费者和食品控制机构要求蜂蜜可追溯到食品质量。传统上,蜜粉昆虫学家使用百分比的油桃花粉来区分植物的起源和整个花粉谱(存在/不存在,类型和数量以及某些花粉类型的关联)来确定蜂蜜的地理起源。为了改善黑皮病的常规分析,使用了主成分分析(PCA)。一个了不起的创新结果是,对蜂蜜的植物学和地理起源进行传统区分的最重要的花粉与化学计量学模型所区分的那些相同。通过解释的方差(85%)来估计样品分配给蜂蜜类别的可靠性。这证实了化学计量学模型正确地描述了变色龙的数据。为了改善蜂蜜的辨别力,还应用了FT-显微拉曼光谱和多元分析。实现了性能良好的PCA模型并与已知类达成了良好的一致性。在植物学鉴别方面获得了令人鼓舞的结果。 (C)2014 Elsevier Ltd.保留所有权利。

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