Yu Huarong, Liang Heng, Qu Fangshu, Han Zheng-shuang, Shao Senlin, Chang Haiqing, Li Guibai
State Key Laboratory of Urban Water Resource and Environment (SKLUWRE), Harbin Institute of Technology, 73 Huanghe Road, Nangang District, Harbin, 150090, P.R. China.
Sci Rep. 2015 May 11;5:10207. doi: 10.1038/srep10207.
Parallel factor (PARAFAC) analysis enables a quantitative analysis of excitation-emission matrix (EEM). The impact of a spectral variability stemmed from a diverse dataset on the representativeness of the PARAFAC model needs to be examined. In this study, samples from a river, effluent of a wastewater treatment plant, and algae secretion were collected and subjected to PARAFAC analysis. PARAFAC models of global dataset and individual datasets were compared. It was found that the peak shift derived from source diversity undermined the accuracy of the global model. The results imply that building a universal PARAFAC model that can be widely available for fitting new EEMs would be quite difficult, but fitting EEMs to existing PARAFAC model that belong to a similar environment would be more realistic. The accuracy of online monitoring strategy that monitors the fluorescence intensities at the peaks of PARAFAC components was examined by correlating the EEM data with the maximum fluorescence (Fmax) modeled by PARAFAC. For the individual datasets, remarkable correlations were obtained around the peak positions. However, an analysis of cocktail datasets implies that the involvement of foreign components that are spectrally similar to local components would undermine the online monitoring strategy.
平行因子(PARAFAC)分析能够对激发-发射矩阵(EEM)进行定量分析。需要研究来自不同数据集的光谱变异性对PARAFAC模型代表性的影响。在本研究中,收集了河水、污水处理厂的废水和藻类分泌物样本,并进行了PARAFAC分析。比较了全局数据集和单个数据集的PARAFAC模型。发现源多样性导致的峰位移动破坏了全局模型的准确性。结果表明,构建一个可广泛用于拟合新EEM的通用PARAFAC模型非常困难,但将EEM拟合到属于相似环境的现有PARAFAC模型会更现实。通过将EEM数据与PARAFAC建模的最大荧光(Fmax)相关联,检验了监测PARAFAC组分峰处荧光强度的在线监测策略的准确性。对于单个数据集,在峰位附近获得了显著的相关性。然而,对混合数据集的分析表明,光谱上与本地组分相似的外来组分的加入会破坏在线监测策略。