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Multivariate calibration of non-replicated measurements for the factored noise model

机译:因子噪声模型的非重复测量的多元校准

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摘要

The accuracy of a multivariate calibration (MVC) model for relating concentrations of multicomponent mixtures to their spectral measurements depends on effective handling of errors in the measured data. For the case when error variances vary along only one mode (either along mixtures or along wavelengths), a method to estimate the error variances simultaneously along with the spectral subspace was developed by Narasimhan and Shah (Control Engineering Practice, 16, (2008), 146-155). This method was exploited by Bhatt et al. (Chemom. Intell. Lab. Syst., 85, (2007), 70-81) to develop an iterative principal component regression (IPCR) MVC model, which was shown to be more accurate than models developed using PCR. In this work, the IPCR method is extended to deal with measurement errors whose variances vary along both modes, by using a factored noise model. As a first step, an iterative procedure is developed to estimate the error variance factors along with the spectral subspace, which is subsequently used in developing the regression model. Using simulated and experimental data, it is shown that the quality of the MVC model developed using the proposed method is better than that obtained using PCR, and is as good as the model obtained using Maximum Likelihood PCR, which requires knowledge of the error variances. For dealing with large data sets, a sub-optimal approach is also proposed for estimating the large number of error variances.
机译:将多组分混合物的浓度与其光谱测量值相关联的多变量校准(MVC)模型的准确性取决于对测量数据中误差的有效处理。对于误差方差仅沿一种模式(沿混合物或沿波长)变化的情况,Narasimhan和Shah提出了一种同时估计误差方差和光谱子空间的方法(Control Engineering Practice,16,(2008), 146-155)。这种方法被Bhatt等人利用。 (Chemom.Intell.Lab.Syst。,85,(2007),70-81)开发了迭代主成分回归(IPCR)MVC模型,其显示比使用PCR开发的模型更准确。在这项工作中,通过使用分解噪声模型,将IPCR方法扩展为处理方差沿两种模式变化的测量误差。第一步,开发一个迭代程序来估计误差方差因子以及频谱子空间,随后将其用于开发回归模型。使用模拟和实验数据表明,使用所提出的方法开发的MVC模型的质量优于使用PCR所获得的模型,并且与使用最大似然PCR所获得的模型一样好,后者需要了解误差方差。为了处理大数据集,还提出了一种次优方法来估计大量误差方差。

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