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Coupling Kernel Principal Component Analysis with ANN for Improving Analysis Accuracy of Seven-component Alkane Gaseous Mixture

机译:用ANN耦合核主成分分析,提高七分组分烷烃气体混合物分析精度

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To further improving the analysis accuracy of Artificial Neural Networks (ANN) model for quantitative analysis of seven-component alkane gaseous mixtures composed of methane, ethane, propane, isobutane, n-butane, isopentane, and n-pentane, the Kernel Principal Component Analysis (KPCA) technique was proposed to couple with it. The gaseous mixtures were measured by a novel Acousto-Optic Tunable Filter Near Infrared (AOTF-NIR) spectrometer. KPCA mapped the NIR spectral data of gaseous mixtures by a Gaussian kernel to a high-dimensional feature space and implemented feature extraction in it. As input variables, the extracted features were fed into a three-layered ANN to create quantitative analysis model of above-mentioned seven component gases. The performance of KPCA-NN model was assessed by Root Mean Square Error of Prediction (RMSEP) of testing set. The RMSEP of seven components by KPCA-ANN were less than 0.361%. Comparing with the ANN model without KPCA feature extraction, the KPCA-ANN model obtained the less RMSEP values. The research results indicated that the KPCA-NN model shows higher analysis accuracy than ANN model.
机译:进一步提高人工神经网络(ANN)模型的分析准确性,用于定量分析甲烷,乙烷,丙烷,异丁烷,正丁烷,等戊烷,等戊烷,籽粒主成分分析的七分烷烃气态混合物的定量分析(KPCA)技术提出了与之耦合。通过靠近红外(AOTF-NIR)光谱仪的新型声光可调过滤器测量气态混合物。 KPCA通过高斯内核将气体混合物的NIR光谱数据映射到高尺寸特征空间,并在其中实现了特征提取。作为输入变量,将提取的特征送入三层ANN以产生上述七种组分气体的定量分析模型。通过测试集的预测(RMSEP)的根均方误差来评估KPCA-NN模型的性能。 KPCA-ANN的7个组分的RMSEP小于0.361%。与无KPCA特征提取的ANN模型相比,KPCA-ANN模型获得了较少的RMSEP值。研究结果表明,KPCA-NN模型显示比ANN模型更高的分析精度。

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