Data and model code used to evaluate a process-guided deep learning approach for in-stream dissolved oxygen prediction

This model archive contains data and code used to assess the use of process-informed multi-task deep learning models for predicting in-stream dissolved oxygen concentrations. Three holdout experiments were run to assess model performance, including a temporal holdout experiment, a spatial holdout experiment with similar sites held out, and a spatial holdout experiment with dissimilar sites held out. This model archive includes data from 10 sites in the lower Delaware River Basin that were used in the model experiments. Model training target data include dissolved oxygen concentrations downloaded from the National Water Information System (NWIS) (U.S. Geological Survey 2023). Model input data include daily meteorological driver variables derived from gridded surface data (gridMET; Abatzoglou 2013); river and catchment characteristics (Wieczorek et al. 2018); and estimates of daily stream metabolism rates (Appling et al. 2018). The contents of this model archive are organized into files or file directories that have been aggregated into zip files:

Data and Resources

Field Value
accessLevel public
bureauCode {010:12}
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catalog_@id https://ddi.doi.gov/usgs-data.json
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catalog_describedBy https://project-open-data.cio.gov/v1.1/schema/catalog.json
identifier http://datainventory.doi.gov/id/dataset/usgs-649600a6d34ef77fcb01e736
metadata_type geospatial
modified 2024-09-23T00:00:00Z
old-spatial -76.39556, 39.5, -74.37121, 40.89106
publisher U.S. Geological Survey
resource-type Dataset
source_datajson_identifier true
source_hash 1acbc722dac01f0ad87a427221b7a25e33fdd6ae50a7a1c8c5840a28e5cac9e4
source_schema_version 1.1
spatial {"type": "Polygon", "coordinates": [[[-76.39556, 39.5], [-76.39556, 40.89106], [ -74.37121, 40.89106], [ -74.37121, 39.5], [-76.39556, 39.5]]]}
theme {geospatial}
Groups
  • AmeriGEOSS
  • National Provider
  • North America
Tags
  • AmeriGEO
  • AmeriGEOSS
  • CKAN
  • GEO
  • GEOSS
  • National
  • North America
  • United States
  • deep-learning
  • dissolved-oxygen
  • environment
  • hybrid-modeling
  • inlandwaters
  • machine-learning
  • modeling
  • streams
  • united-states
  • us
  • usgs-649600a6d34ef77fcb01e736
  • water
  • water-resources
isopen False
license_id notspecified
license_title License not specified
maintainer Jeffrey M. Sadler
maintainer_email jsadler@usgs.gov
metadata_created 2025-09-23T17:46:57.791595
metadata_modified 2025-09-23T17:46:57.791602
notes This model archive contains data and code used to assess the use of process-informed multi-task deep learning models for predicting in-stream dissolved oxygen concentrations. Three holdout experiments were run to assess model performance, including a temporal holdout experiment, a spatial holdout experiment with similar sites held out, and a spatial holdout experiment with dissimilar sites held out. This model archive includes data from 10 sites in the lower Delaware River Basin that were used in the model experiments. Model training target data include dissolved oxygen concentrations downloaded from the National Water Information System (NWIS) (U.S. Geological Survey 2023). Model input data include daily meteorological driver variables derived from gridded surface data (gridMET; Abatzoglou 2013); river and catchment characteristics (Wieczorek et al. 2018); and estimates of daily stream metabolism rates (Appling et al. 2018). The contents of this model archive are organized into files or file directories that have been aggregated into zip files:
num_resources 2
num_tags 21
title Data and model code used to evaluate a process-guided deep learning approach for in-stream dissolved oxygen prediction