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Comparison of partial least squares regression and multi-layer neural networks for quantification of nonlinear systems and application to gas phase Fourier transform infrared spectra

机译:偏最小二乘回归法和多层神经网络用于非线性系统定量的比较及其在气相傅里叶变换红外光谱中的应用

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The performance of back-propagation artificial neural networks (NN) and partial least squares (PLS) regression for the calibration of linear and nonlinear systems has been investigated by using six types of synthetic data. Three PLS methods, conventional linear-PLS and two nonlinear-PLS methods, have been used in the study. In all but one of the synthetic data types, the band intensities varied nonlinearly with concentration. These five data types were designed to represent the effect of band shifts with increasing concentration, a nonlinear relationship between peak height and concentration, or a combination of both types of nonlinearities. The results showed that NNs perform better than PLS for all the nonlinear datasets. When a band shift is the major reason for the nonlinearity, the relative performance of NNs and PLS depends on the overlap of the absorption bands. If there is no band overlap, neither NN nor PLS can calibrate the data accurately but the results could be improved by convolving the spectral features with a Gaussian broadening function. The results indicate that a combination of peak position shift and peak height change is the most difficult nonlinearity to calibrate. NN and PLS were also used to determine the concentration of CHCl3 in pure component and mixtures of CHCl3 and CH2Cl2 using their Fourier transform infrared (FT-IR) spectra, a dataset that has been proved nonlinear in high concentrations due to the nonlinear response of the detector. The best results for the experimental data were obtained by applying one hidden layer NN to the mean-centered absorbance spectra. (C) 2003 Elsevier B.V. All rights reserved. [References: 17]
机译:通过使用六种合成数据,研究了反向传播人工神经网络(NN)和偏最小二乘(PLS)回归用于校准线性和非线性系统的性能。研究中使用了三种PLS方法,传统的线性PLS方法和两种非线性PLS方法。除了一种合成数据类型外,在所有合成数据类型中,谱带强度随浓度非线性变化。设计这五种数据类型以代表随着浓度的增加,峰高与浓度之间的非线性关系或两种非线性的组合而产生的带移效应。结果表明,对于所有非线性数据集,神经网络的性能均优于PLS。当带移是非线性的主要原因时,NN和PLS的相对性能取决于吸收带的重叠。如果没有频带重叠,则NN和PLS都无法准确校准数据,但是可以通过将光谱特征与高斯展宽函数进行卷积来改善结果。结果表明,峰位置偏移和峰高变化的组合是最难校准的非线性。 NN和PLS还用于通过其傅立叶变换红外(FT-IR)光谱确定纯组分以及CHCl3和CH2Cl2混合物中CHCl3的浓度,该数据集已被证明在高浓度下是非线性的,这是因为该化合物的非线性响应探测器。实验数据的最佳结果是通过将一个隐层NN应用于以均心为中心的吸收光谱。 (C)2003 Elsevier B.V.保留所有权利。 [参考:17]

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