“…Multivariate data analysis has been T, C Marine Coal [156] A Petroleum [157] T Groundwater Landfill leachate [103] T Potable Wastewater [158] T/C (ratio) PAHs [159] B, T, A Recycled water [116][117][118] T 1 widely applied within psychometrics [122] and chemometrics [123,124], where techniques such as principal component analysis (PCA), partial least-squares (PLS), Tucker decomposition and more specifically parallel factor (PARAFAC) analysis have become increasingly popular for their ability to decompose large and complicated datasets and extract relevant information. These multivariate approaches have been applied to fluorescence-based water research to detect the presence and quantify the underlying fluorescence characteristics of complex mixtures of DOM [98,125].…”