Article ID Journal Published Year Pages File Type
4576376 Journal of Hydrology 2013 8 Pages PDF
Abstract

SummaryThe analysis of spatial–temporal patterns of scores, including their association with supplementary data, can refine a principal component analysis of water quality data. We hypothesized that this type of analysis could considerably improve the understanding of processes governing water quality at catchment scales. To test this, water quality data from the 180 km2 Ammer catchment in south-western Germany was investigated using principal component analysis. We analyzed data for (a) surface water from the Ammer River and its tributaries, (b) spring water from the main aquifers and (c) deep groundwater from wells. Using the analysis of scores, we found that the quality of both surface and groundwater primarily reflected the input of solutes determined by land use and geology. For water quality in the Ammer catchment, the conservative mixing of water of different origins and ages was more important than reactive transport processes along the flow paths. These results demonstrate the potential of our analysis of principal component scores to identify dominant processes at catchment scales.

► We studied patterns of scores for a principal component analysis of water quality. ► Association of principal component scores with supplementary data was analyzed. ► Catchment processes governing water quality were identified and localized.

Related Topics
Physical Sciences and Engineering Earth and Planetary Sciences Earth-Surface Processes
Authors
, , ,