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A weighted principal component analysis approach for online quality determination of biodiesel using spectrophotometry data

机译:使用分光光度法测定生物柴油在线质量测定的加权主成分分析方法

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Biodiesel fuels deteriorate when exposed to air or high temperatures. In this study, biodiesel was produced through transesterification of sunflower oil and kept at 25, 45, and 70 degrees C for 28 days. The spectrophotometry graphs of the samples were prepared and used as inputs to three classification schemes of linear discrimination analysis, principal component analysis (PCA), and weighted PCA (WPCA) to categorize the fuels into three groups, based on their acid values. The resulting average recognition accuracies were 82%, 84%, and 96% for the three classifiers, respectively. The analysis of the classifiers outputs indicated that the wavelengths between 200 and 240 nm had the higher significant role in determining the quality of the fuels. The model assessment and error analysis of the results were performed using Hotelling T-2 statistic and Q-residual index. The analysis indicated the WPCA model, at a 5% significance level, had higher power for accurately determining the quality of biodiesel samples using their spectrophotometry data.
机译:在暴露于空气或高温时,生物柴油燃料会恶化。在该研究中,通过向日葵油的酯交换来生产生物柴油,并保持在25,45和70℃下28天。制备样品的分光光度法,并用作线性辨别分析,主成分分析(PCA)和加权PCA(WPCA)的三种分类方案的输入,以基于其酸值将燃料分为三组。所得的平均识别精度分别为三分类剂的82%,84%和96%。分类器输出的分析表明,200至240nm之间的波长在确定燃料的质量方面具有更高的重要作用。使用热兴T-2统计和Q-残余指数进行结果的模型评估和误差分析。该分析表明WPCA模型,在5%的显着性水平下,具有更高的功率,用于使用其分光光度法准确地确定生物柴油样本的质量。

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