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A selective ensemble preprocessing strategy for near-infrared spectral quantitative analysis of complex samples

机译:用于复杂样品的近红外光谱定量分析的选择性集合预处理策略

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摘要

Preprocessing of raw near-infrared (NIR) spectra is typically required prior to multivariate calibration since the measured spectra of complex samples are often subject to overwhelming background, light scattering, varying noises and other unexpected factors. Various preprocessing methods have been developed aimed at removing or reducing the interference of these effects. However, it is usually difficult to determine the best preprocessing method for a given data. Instead of selecting the best one, a selective ensemble preprocessing strategy is proposed for NIR spectral quantitative analysis. Firstly, numerous preprocessing methods and their combinations are obtained by full factorial design in order of baseline correction, scattering correction, smoothing and scaling. Then partial least squares (PLS) model is built for each preprocessing method. The models which have better predictions than PLS are selected and their predictions are averaged as the final prediction. The performance of the proposed method was tested with corn, blood and edible blend oil samples. Results demonstrate that the selective ensemble preprocessing method can give comparative or even better results than the traditional selected best preprocessing method. Therefore, in the framework of selective ensemble preprocessing, more accurate calibration can be obtained without searching the best preprocessing method.
机译:在多元校准之前通常需要原始近红外(NIR)光谱的预处理,因为复杂样品的测量光谱通常经过压倒性的背景,光散射,不同的噪声和其他意外因素。已经开发了各种预处理方法,旨在去除或减少这些效果的干扰。然而,通常难以确定给定数据的最佳预处理方法。提出了一种选择性集合预处理策略,而不是选择最佳选择,而是提出了一种用于NIR光谱定量分析。首先,通过基线校正,散射校正,平滑和缩放的顺序,通过完整的因子设计获得许多预处理方法及其组合。然后为每个预处理方法构建偏最小二乘(PLS)模型。选择比PLS更好的预测的模型,并且它们的预测被平均为最终预测。用玉米,血液和可食用的混合物油样品测试所提出的方法的性能。结果表明,选择性集合预处理方法可以比传统选定的最佳预处理方法提供比较甚至更好的结果。因此,在选择性集合预处理的框架中,可以在不搜索最佳预处理方法的情况下获得更精确的校准。

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