info:eu-repo/semantics/article
Multivariate statistical analysis for estimating surface water quality in reservoirs
Fecha
2018-02Registro en:
Bonansea, Matias; Bazan, Raquel; Ferrero, Susana; Rodriguez, Claudia; Ledesma, Claudia; et al.; Multivariate statistical analysis for estimating surface water quality in reservoirs; Indercience Publishers; International Journal of Hydrology Science and Technology; 8; 1; 2-2018; 52-68
2042-7816
2042-7808
CONICET Digital
CONICET
Autor
Bonansea, Matias
Bazan, Raquel
Ferrero, Susana
Rodriguez, Claudia
Ledesma, Claudia
Pinotti, Lucio Pedro
Resumen
Regular water quality monitoring programs are an important aspect of water management. Different multivariate statistical techniques were applied for interpretation and evaluation of the data matrix obtained during a six years monitoring program (2006 to 2011) in the principal reservoirs of the central region of Argentina. Eleven sampling sites located in two reservoirs were surveyed each climatic season for 18 parameters. Cluster analysis grouped the sampling sites into three clusters and classified the different climatic seasons into two clusters based on their similarities. Principal component analysis/factor analysis showed the existence of five significant varifactors (VF) which account for 79.3 % of the variance, related to soluble salts, nutrients, physico-chemical parameters, and non-common source. Source contribution was calculated using multiple regression of sample mass concentration on the absolute VF scores. This study demonstrates the usefulness of multivariate statistical techniques helping managers to get better information about surface water systems.