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Predicted nitrate and arsenic concentrations in basin-fill aquifers of the Southwest Principal Aquifers study area
This product "Predicted nitrate and arsenic concentrations in basin-fill aquifers of the
Southwest Principal Aquifers study area" is a 1:250,000-scale vector dataset and was
developed as part of a regional Southwest Principal Aquifers (SWPA) study. The study
examined the vulnerability of basin-fill aquifers in the southwestern United States to
nitrate contamination and arsenic enrichment. Statistical models were developed by
using the random forest classifier algorithm to predict concentrations of nitrate and
arsenic across a model grid that represents local- and basin-scale measures of
source, aquifer susceptibility, and geochemical conditions. Separate classifiers
were developed for nitrate and arsenic because each constituent was expected to
be affected by a different set of factors, and each factor could have a different
magnitude or directional influence (increase/decrease) on concentration. For each
constituent, two different classifiers were developed; a prediction classifier and a
confirmatory classifier. The prediction classifiers were developed specifically to
predict nitrate and arsenic concentrations in basin-fill aquifers across the SWPA
study area and were based on explanatory variables representing source and
susceptibility conditions. These explanatory variables were available throughout
the entire SWPA study area and, therefore, did not pose a limitation for using the
classifiers to predict concentrations.
The confirmatory classifiers were developed to supplement the prediction classifiers
in the evaluation of the conceptual model. The name, "confirmatory," reflects the
classifier's purpose for evaluation of a-priori hypotheses and contrasts other general
types of statistical models, such as those used for prediction or exploratory purposes.
The confirmatory classifiers included the explanatory variables used in the prediction
classifiers, as well as additional variables representing geochemical conditions and
basin groundwater budget components. The inclusion of the geochemical and basin
groundwater budget variables in the confirmatory classifiers allowed for further
evaluation of the conceptual models, which was not possible with the prediction
classifiers alone. The geochemical data, however, were only available at specific
well locations, and consistent water-budget data were not available for every basin
in the study area. The limited availability of the data for these variables constrained
the confirmatory classifiers to observations from 16 case-study basins and precluded
use of the confirmatory classifier for predicting concentrations across the SWPA
study area. To contrast the scope of the two classifiers, the confirmatory classifiers
were developed by using all available explanatory variables but with observations
restricted to the 16 case-study basins, whereas the prediction classifiers were
unrestricted with respect to spatial extent because these were developed by
using a subset of the explanatory variables that were available throughout the
study area.
Complete Metadata
| @id | http://datainventory.doi.gov/id/dataset/ed78e75a8d5b0f38eef9248c5a772f2a |
|---|---|
| bureauCode |
[ "010:12" ] |
| identifier | USGS:ae8e9136-9b70-4612-a184-3aebde4c922e |
| spatial | -124.889549,29.300033,-104.566268,44.627454 |
| theme |
[ "geospatial" ] |