Predictive soil property map: Very fine sand content

These data were compiled to demonstrate new predictive mapping approaches and provide comprehensive gridded 30-meter resolution soil property maps for the Colorado River Basin above Hoover Dam. Random forest models related environmental raster layers representing soil forming factors with field samples to render predictive maps that interpolate between sample locations. Maps represented soil pH, texture fractions (sand, silt clay, fine sand, very fine sand), rock, electrical conductivity (ec), gypsum, CaCO3, sodium adsorption ratio (sar), available water capacity (awc), bulk density (dbovendry), erodibility (kwfact), and organic matter (om) at 7 depths (0, 5, 15, 30, 60, 100, and 200 cm) as well as depth to restrictive layer (resdept) and surface rock size and cover. Accuracy and error estimated using a 10-fold cross validation indicated a range of model performances with coefficient of variation (R2) for models ranging from 0.20 to 0.76 with mean of 0.52 and a standard deviation of 0.12. Models of pH, om and ec had the best accuracy (R2 > 0.6). Most texture fractions, CaCO3, and SAR models had R2 values from 0.5-0.6. Models of kwfact, dbovendry, resdept, rock models, gypsum and awc had R2 values from 0.4-0.5 excepting near surface models which tended to perform better. Very fine sands and 200 cm estimates for other models generally performed poorly (R2 from 0.2-0.4), and sample size for the 200 cm models was too low for reliable model building. More than 90% of the soils data used was sampled since 2000, but some older samples are included. Uncertainty estimates were also developed by creating relative prediction intervals, which allow end users to evaluate uncertainty easily.

Data and Resources

Field Value
accessLevel public
bureauCode {010:12}
catalog_@context https://project-open-data.cio.gov/v1.1/schema/catalog.jsonld
catalog_conformsTo https://project-open-data.cio.gov/v1.1/schema
catalog_describedBy https://project-open-data.cio.gov/v1.1/schema/catalog.json
datagov_dedupe_retained 20220722114234
identifier USGS:5e90b43d82ce172707ed7b59
metadata_type geospatial
modified 20200827
old-spatial {"type": "Polygon", "coordinates": [[[-116.0000, 33.3000], [-116.0000, 44.0000], [ -105.2000, 44.0000], [ -105.2000, 33.3000], [-116.0000, 33.3000]]]}
publisher U.S. Geological Survey
publisher_hierarchy Department of the Interior > U.S. Geological Survey
resource-type Dataset
source_datajson_identifier true
source_hash 68690db3f413562b14f1772447f9471f1a11a6ad
source_schema_version 1.1
spatial {"type": "Polygon", "coordinates": [[[-116.0000, 33.3000], [-116.0000, 44.0000], [ -105.2000, 44.0000], [ -105.2000, 33.3000], [-116.0000, 33.3000]]]}
theme {geospatial}
Groups
  • AmeriGEOSS
  • National Provider
  • North America
Tags
  • accuracy-and-error-estimated
  • amerigeo
  • amerigeoss
  • arizona
  • available-water-capacity
  • bulk-density
  • calcium-carbonate
  • ckan
  • colorado
  • colorado-river
  • colorado-river-basin
  • colorado-river-basin-above-hoover-dam
  • digital-soil-mapping
  • electrical-conductivity
  • environmental-conditions
  • environmental-raster-layers
  • erodibility
  • geo
  • geoscientificinformation
  • geoss
  • gypsum
  • hoover-dam
  • interpolate
  • machine-learning
  • maps-and-atlases
  • national
  • nevada
  • new-mexico
  • north-america
  • organic-matter
  • predicitve-modeling
  • predictive-mapping
  • predictive-maps
  • random-forest-models
  • random-forests
  • restrictive-layer
  • rock
  • sodium-adsorption-ratio
  • soil-conductivity
  • soil-density
  • soil-forming-factors
  • soil-ph
  • soil-properties
  • soil-property-maps
  • soil-sciences
  • soil-texture
  • soils
  • surface-rock-cover
  • surface-rock-size
  • texture-fractions
  • uncertainty
  • united-states
  • usgs-5e90b43d82ce172707ed7b59
  • utah
  • wyoming
isopen False
license_id notspecified
license_title License not specified
maintainer Travis W Nauman
maintainer_email tnauman@usgs.gov
metadata_created 2025-11-22T10:25:37.418999
metadata_modified 2025-11-22T10:25:37.419004
notes These data were compiled to demonstrate new predictive mapping approaches and provide comprehensive gridded 30-meter resolution soil property maps for the Colorado River Basin above Hoover Dam. Random forest models related environmental raster layers representing soil forming factors with field samples to render predictive maps that interpolate between sample locations. Maps represented soil pH, texture fractions (sand, silt clay, fine sand, very fine sand), rock, electrical conductivity (ec), gypsum, CaCO3, sodium adsorption ratio (sar), available water capacity (awc), bulk density (dbovendry), erodibility (kwfact), and organic matter (om) at 7 depths (0, 5, 15, 30, 60, 100, and 200 cm) as well as depth to restrictive layer (resdept) and surface rock size and cover. Accuracy and error estimated using a 10-fold cross validation indicated a range of model performances with coefficient of variation (R2) for models ranging from 0.20 to 0.76 with mean of 0.52 and a standard deviation of 0.12. Models of pH, om and ec had the best accuracy (R2 > 0.6). Most texture fractions, CaCO3, and SAR models had R2 values from 0.5-0.6. Models of kwfact, dbovendry, resdept, rock models, gypsum and awc had R2 values from 0.4-0.5 excepting near surface models which tended to perform better. Very fine sands and 200 cm estimates for other models generally performed poorly (R2 from 0.2-0.4), and sample size for the 200 cm models was too low for reliable model building. More than 90% of the soils data used was sampled since 2000, but some older samples are included. Uncertainty estimates were also developed by creating relative prediction intervals, which allow end users to evaluate uncertainty easily.
num_resources 2
num_tags 55
title Predictive soil property map: Very fine sand content