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首页> 外文期刊>Journal of Raman Spectroscopy: An International Journal for Original Work in All Aspects of Raman Spectroscopy, Including Higher Order Processes, and Also Brillouin- and Rayleigh Scattering >Automated identification of components in a chemical mixture utilizing multi-wavelength resonant-Raman spectroscopy and a Pearson correlation algorithm
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Automated identification of components in a chemical mixture utilizing multi-wavelength resonant-Raman spectroscopy and a Pearson correlation algorithm

机译:利用多波长共振拉曼光谱和Pearson相关算法自动识别化学混合物中的成分

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摘要

In complex environments, the ability to identify the constituent chemicals within a mixture is extremely important. By utilizing a Pearson correlation algorithm to compare sets of multi-wavelength resonance-Raman signatures, we demonstrate the automated identification of chemicals within a mixture. Applying a linear mixture model, we are also able to estimate the fractional volumetric abundances contained therein. The multi-wavelength resonance-Raman signature used for identification is obtained by illuminating the unknown mixture with a series of 21 sequential laser wavelengths. This signature is then compared with the signatures of a set of known chemicals. By maximizing the Pearson correlation coefficient between the signature of the mixture and a weighted superposition of the signatures of the pure chemicals, we are able to determine the mixture components with 100% accuracy. The linear superposition of the selected chemicals, which minimizes the least squares distance between the signatures of the mixture, and its mathematical recreation determines the corresponding fraction, by volume, of each chemical within the mixture.
机译:在复杂的环境中,识别混合物中的化学成分的能力极为重要。通过利用Pearson相关算法比较多波长共振拉曼信号集,我们证明了混合物中化学物质的自动识别。应用线性混合模型,我们还能够估计其中包含的分数体积丰度。用于识别的多波长共振拉曼信号是通过用一系列21个连续激光波长照射未知混合物获得的。然后将该签名与一组已知化学药品的签名进行比较。通过使混合物特征与纯化学品特征的加权叠加之间的皮尔逊相关系数最大化,我们能够以100%的准确度确定混合物组分。所选化学物质的线性叠加(使混合物特征之间的最小平方距离最小)及其数学重现性确定了混合物中每种化学物质的体积分数。

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