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Machine-learning model predictions and rasters of groundwater salinity in the Mississippi Alluvial Plain

Dates

Start Date
1940-02-25
End Date
2020-11-19
Publication Date

Citation

Killian, C.D., and Knierim, K.J., 2023, Machine-learning model predictions and rasters of groundwater salinity in the Mississippi Alluvial Plain: U.S. Geological Survey data release, https://doi.org/10.5066/P9WSE8JS.

Summary

Groundwater from the Mississippi River Valley alluvial aquifer (MRVA), coincident with the Mississippi Alluvial Plain (MAP), is a vital resource for agriculture and drinking-water supplies in the central United States. Water availability can be limited in some areas of the aquifer by high concentrations of salinity, measured as specific conductance. Boosted regression trees (BRT), a type of ensemble-tree machine-learning method, were used to predict specific conductance concentration at multiple depths throughout the MRVA and underlying aquifers. Two models were created to test the incorporation of datasets from a regional aerial electromagnetic (AEM) survey and evaluate model performance. Explanatory variables for the BRT models included [...]

Contacts

Attached Files

Click on title to download individual files attached to this item.

MAP_SC_BRT_model.R
“BRT machine-learning model”
39.98 KB text/x-rsrc
ModelFunctions.R
“Custom function for BRT model”
1.33 KB text/x-rsrc
input.zip
“BRT model input files”
51.17 MB application/zip
map_extent.zip
“Generalized regions of the Mississippi Alluvial Plain updated for BRT model”
1,017.74 KB application/zip
final_output.zip
“BRT model output files - specific conductance predictions for the MAP”
7.04 MB application/zip
modelgeoref.txt
“Describes model corner and projection information”
800 Bytes text/plain
README.txt
“Describes the contents of all files and directions for executing model archives”
8.49 KB text/plain
Data_dictionary.csv
“Description and citation information for input and output data for model”
30.69 KB text/csv

Purpose

This data, scripts, and groundwater quality rasters act as the model archive for efforts to document the influence of AEM data on machine-learning models to predict specific conductance across the Mississippi River Valley Alluvial aquifer and deeper units at specified depths. The work is part of the U.S. Geological Survey's Mississippi Alluvial Plain Water Availability study: https://www2.usgs.gov/water/lowermississippigulf/map/.

Additional Information

Identifiers

Type Scheme Key
DOI https://www.sciencebase.gov/vocab/category/item/identifier doi:10.5066/P9WSE8JS

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