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Study on the Gasoline Classification Methods Based on near Infrared Spectroscopy

机译:基于近红外光谱的汽油分类方法研究

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The purpose of this paper is to classify 93# and 97# gasoline by using principal component analysis (PCA) with self-organizing competitive neural network method and to establish near infrared transmission spectroscopy and reflectance spectroscopy qualitative identification model in 1100-1700nm spectral region. The spectral data is condensed by PCA method before modeling, and three principal components are chosen because their cumulative credibility has reached 97%. A three-layer self-organizing competitive neural network model is established based on the PCA method. Thirty-two wavelengths' absorbance is served as inputs of the self-organizing competitive neural network. The learning parameter is set as 0.01 and the training iteration is taken as 500. The conclusion is that it is feasible to apply near infrared transmission spectroscopy and reflectance spectroscopy qualitative identification model to discriminate the gasoline products as the PCA and self-organizing competitive neural networks method is used.
机译:本文的目的是利用主成分分析(PCA)和自组织竞争神经网络方法对93#和97#汽油进行分类,并建立1100-1700nm光谱区的近红外透射光谱和反射光谱定性识别模型。在建模之前,通过PCA方法压缩光谱数据,并选择三个主要成分,因为它们的累积可信度已达到97%。基于PCA方法建立了三层自组织竞争神经网络模型。 32个波长的吸光度用作自组织竞争神经网络的输入。将学习参数设置为0.01,将训练迭代次数设置为500。得出的结论是,应用近红外透射光谱和反射光谱定性识别模型来区分汽油产品为PCA和自组织竞争神经网络是可行的。使用方法。

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