Abstract
Assessing surface water quality for drinking use in developing countries is important since water quality is a fundamental aspect of surface water management. This study aims to improve surface water quality assessments and their controlling mechanisms using the drinking water quality index (DWQI) and four pollution indices (PIs), which are supported by multivariate statistical analyses, such as principal component analysis, partial least squares regression (PLSR), and stepwise multiple linear regression (SMLR). Twenty-two physicochemical parameters were analyzed using standard analytical methods for 55 surface water sites in the northern Nile Delta, Egypt. TheDWQIresults indicated that 33% of the tested samples represented good water, and 67% of samples indicated poor to unsuitable water for drinking use. ThePIresults revealed that surface water samples were strongly affected by Pb and Mn and were slightly affected by Fe and Cr. The SMLR models of theDWQIandPIs, which were based on all major ions and heavy metals, provided the best estimations withR(2)= 1 for theDWQIandPIs. In conclusion, integration between theDWQIandPIs is a valuable and applicable approach for the assessment of surface water quality, and the PLSR and SMLR models can be used through applications of chemometric techniques to evaluate theDWQIandPIs.