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首页> 外文期刊>Journal of Chemometrics >Blind separation of fluorescence spectra using sparse non-negative matrix factorization on right hand factor
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Blind separation of fluorescence spectra using sparse non-negative matrix factorization on right hand factor

机译:使用右手因子上的稀疏非负矩阵分解实现荧光光谱的盲分离

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摘要

Sparse non-negative matrix factorization on right side factor (SNMF/R) has better performance in feature extraction than non-negative matrix factorization. In this work, SNMF/R was first used to separate the overlapped three-dimensional fluorescence spectra of polycyclic aromatic hydrocarbons mixtures in pure water, lake water, and river water, respectively. It is found that the similarity coefficients between the acquired three-dimensional spectra and the corresponding reference spectra with random initials are all above 0.80; the recognition rate of SNMF/R is higher than that of PARAFAC and non-negative matrix factorization algorithms, especially in the case of lake water and river water samples. In addition, SNMF/R does not need any initialization scheme designing during spectra separation. These results demonstrate that SNMF/R is an appropriate algorithm to separate the overlapped fluorescence spectra of polycyclic aromatic hydrocarbons in aquatic environment accurately and effectively. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:右侧因子上的稀疏非负矩阵分解(SNMF / R)在特征提取中的性能优于非负矩阵分解。在这项工作中,SNMF / R首先用于分离纯水,湖水和河水中多环芳烃混合物的重叠三维荧光光谱。发现所获取的三维光谱与相应的随机首字母参考光谱之间的相似系数均在0.80以上; SNMF / R的识别率高于PARAFAC和非负矩阵分解算法,尤其是在湖水和河水样品的情况下。另外,SNMF / R在光谱分离期间不需要任何初始化方案设计。这些结果表明,SNMF / R是一种准确,有效地分离水生环境中多环芳烃重叠荧光光谱的算法。版权所有(c)2015 John Wiley&Sons,Ltd.

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