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Augmented classical least squares multivariate spectral analysis

机译:增强古典最小二乘多元光谱分析

摘要

A method of multivariate spectral analysis, termed augmented classical least squares (ACLS), provides an improved CLS calibration model when unmodeled sources of spectral variation are contained in a calibration sample set. The ACLS methods use information derived from component or spectral residuals during the CLS calibration to provide an improved calibration-augmented CLS model. The ACLS methods are based on CLS so that they retain the qualitative benefits of CLS, yet they have the flexibility of PLS and other hybrid techniques in that they can define a prediction model even with unmodeled sources of spectral variation that are not explicitly included in the calibration model. The unmodeled sources of spectral variation may be unknown constituents, constituents with unknown concentrations, nonlinear responses, non-uniform and correlated errors, or other sources of spectral variation that are present in the calibration sample spectra. Also, since the various ACLS methods are based on CLS, they can incorporate the new prediction-augmented CLS (PACLS) method of updating the prediction model for new sources of spectral variation contained in the prediction sample set without having to return to the calibration process. The ACLS methods can also be applied to alternating least squares models. The ACLS methods can be applied to all types of multivariate data.
机译:当校准样本集中包含未建模的光谱变化源时,称为增强经典最小二乘(ACLS)的多元光谱分析方法可提供改进的CLS校准模型。 ACLS方法在CLS校准过程中使用从成分或光谱残差得出的信息来提供改进的增强校准的CLS模型。 ACLS方法基于CLS,因此保留了CLS的质量优势,但它们具有PLS和其他混合技术的灵活性,即使在未建模的未包含光谱变化源的情况下,也可以定义预测模型。校准模型。未建模的光谱变化源可能是未知成分,浓度未知的成分,非线性响应,不均匀和相关的误差,或者是校准样品光谱中存在的其他光谱变化源。而且,由于各种ACLS方法都基于CLS,因此它们可以合并新的预测增强CLS(PACLS)方法,以更新预测模型以获取预测样本集中包含的光谱变化的新来源,而不必返回到校准过程。 ACLS方法也可以应用于交替最小二乘模型。 ACLS方法可以应用于所有类型的多元数据。

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