Issue 1, 2001

Multivariate data analysis of quality parameters in drinking water

Abstract

The quality of water destined for human consumption has been treated as a multivariate property. Since most of the quality parameters are obtained by applying analytical methods, the routine analytical laboratory (responsible for the accuracy of analytical data) has been treated as a process system for water quality estimation. Multivariate tools, based on principal component analysis (PCA) and partial least squares (PLS) regression, are used in the present paper to: (i) study the main factors of the latent data structure and (ii) characterize the water samples and the analytical methods in terms of multivariate quality control (MQC). Such tools could warn of both possible health risks related to anomalous sample composition and failures in the analytical methods.

Article information

Article type
Paper
Submitted
22 Jun 2000
Accepted
26 Oct 2000
First published
15 Dec 2000

Analyst, 2001,126, 91-96

Multivariate data analysis of quality parameters in drinking water

O. Ortiz-Estarelles, Y. Martín-Biosca, M. J. Medina-Hernández, S. Sagrado and E. Bonet-Domingo, Analyst, 2001, 126, 91 DOI: 10.1039/B005013J

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