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Geographical discrimination of palm oils ( Elaeis guineensis ) using quality characteristics and UV‐visible spectroscopy

机译:利用质量特征和紫外可见光谱法对棕榈油(吉利油)进行地理鉴别

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This preliminary study demonstrated the possibility of discriminating geographical origin of palm oils using conventional quality characteristics and UV‐visible spectroscopy. A total of 60 samples, 20 from each region (North (N), South (S), and Central (C)) of Ondo State Nigeria, were analyzed for their quality characteristics and UV‐visible spectra. Principal component analysis (PCA) and orthogonal projection to latent structure discriminant analysis (OPLS‐DA) were applied to elaborate the data. Models were built on the most informative portion of the spectra (250–550?nm) as: untreated (without pretreatment) and standard normal variate—second‐derivative‐treated (SNV+2der) data matrices. OPLS‐DA classification models were validated by independent prediction sets and cross‐validation. PCA score plots of both chemical and spectral data matrices revealed geographical distinction between the palm oil samples. Significantly high carotene content, free fatty acids, acid value, and peroxide value distinguished Central palm oils. K extinction values, color density, and chlorophyll content were the most important quality parameters separating North oil samples. In the discriminant models, over 95% and 85% percent correct classification were recorded for spectral and chemical data, respectively. These results cannot be considered exhaustive because of the limited sample size used. However, the study suggested a potential analytical technique suitable for geographical origin authentication of palm oils with additional advantages that include the following: speed, low cost, and minimal waste.
机译:这项初步研究证明了使用常规质量特征和紫外可见光谱法区分棕榈油地理来源的可能性。总共对60个样品进行了质量特征和紫外可见光谱分析,每个样品20个,分别来自尼日利亚翁多州(北部(N),南部(S)和中部(C))。主成分分析(PCA)和对潜在结构判别分析的正交投影(OPLS-DA)用于详细说明数据。在光谱中信息最丰富的部分(250-550?nm)上建立模型,这些模型是:未处理(未经预处理)和标准正态变量-二阶导数(SNV + 2der)数据矩阵。 OPLS‐DA分类模型通过独立的预测集和交叉验证进行了验证。化学和光谱数据矩阵的PCA评分图揭示了棕榈油样品之间的地理区别。棕榈油中胡萝卜素含量高,游离脂肪酸,酸值和过氧化物值高。钾的消光值,颜色密度和叶绿素含量是分离北方石油样品的最重要质量参数。在判别模型中,光谱和化学数据分别记录了超过95%和85%的正确分类。由于使用的样本量有限,因此无法将这些结果视为详尽无遗。但是,该研究提出了一种适用于棕榈油地理原产地鉴定的潜在分析技术,其另外的优点包括:速度快,成本低,浪费最少。

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