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Non-negative matrix factorization algorithm for the deconvolution of one dimensional chromatograms

机译:一维色谱图反卷积的非负矩阵分解算法

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In chromatogram analysis, overlapped chromatograms are difficult to analyze if they are not resolved. The conventional multivariate resolution techniques do not give accurate results when the chromatograms are severely overlapped. In this work, ML-NMFdiv, modified non-negative matrix factorization (NMF) with divergence objective algorithm has been proposed for the separation of severely overlapped chromatograms of acetone and acrolein mixture. Before applying NMF, principal component analysis (PCA) is applied to determine number of components in the mixture taken. Most of the NMF algorithms used so far for chromatogram separation do not converge to a stable limit point and no uniqueness in the results. To get unique results, instead of random initialization, three different initialization methods namely, Robust initialization, NNDSVD (Non-Negative Double Singular Value Decomposition) based initialization and EFA (Evolving Factor Analysis) based initializations, have been used in this work and the performances are compared. The multiplicative update of already existing NMFdiv algorithm has been modified and proposed in this work as ML-NMFdiv (NMFdiv with modified multiplicative update) for overlapped chromatogram separation to improve the convergence. The proposed ML-NMFdiv algorithm is applied on the simulated and experimental chromatograms obtained for acetone and acrolein mixture. The results of proposed ML-NMFdiv are compared with existing Multivariate Curve Resolution-Alternating Least Square (MCR-ALS) method.
机译:在色谱图分析中,如果重叠色谱图无法解析,则很难对其进行分析。当色谱图严重重叠时,常规的多元分辨率技术无法提供准确的结果。在这项工作中,为分离丙酮和丙烯醛混合物中严重重叠的色谱图,已提出了采用发散目标算法的改进的非负矩阵分解(MLF)方法。在应用NMF之前,应先进行主成分分析(PCA),以确定混合物中的成分数量。到目前为止,大多数用于色谱分离的NMF算法都没有收敛到稳定的极限点,并且结果没有唯一性。为了获得独特的结果,而不是随机初始化,已在这项工作中使用了三种不同的初始化方法,即稳健初始化,基于NNDSVD(非负双奇异值分解)的初始化和基于EFA(演化因子分析)的初始化。比较。已经对现有NMFdiv算法的乘法更新进行了修改,并在本工作中提出了ML-NMFdiv(具有改进的乘法更新的NMFdiv)用于重叠色谱图分离,以提高收敛性。所提出的ML-NMFdiv算法适用于所获得的丙酮和丙烯醛混合物的模拟和实验色谱图。将提出的ML-NMFdiv的结果与现有的多元曲线分辨率交替最小二乘(MCR-ALS)方法进行比较。

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