Model code, outputs, and supporting data for approaches to process-guided deep learning for groundwater-influenced stream temperature predictions

This model archive provides all data, code, and modeling results used in Barclay and others (2023) to assess the ability of process-guided deep learning stream temperature models to accurately incorporate groundwater-discharge processes. We assessed the performance of an existing process-guided deep learning stream temperature model of the Delaware River Basin (USA) and explored four approaches for improving groundwater process representation: 1) a custom loss function that leverages the unique patterns of air and water temperature coupling resulting from different temperature drivers, 2) inclusion of additional groundwater-relevant catchment attributes, 3) incorporation of additional process model outputs, and 4) a composite model. The associated manuscript examines changes in the predictive accuracy, feature importance, and predictive ability in un-seen reaches resulting from each of the four approaches. This model archive includes four zipped folders for 1) Data Preparation, 2) Model Code, 3) Model Predictions, and 4) the catchment attributes that were compiled for reaches in the study area. Instructions for running data preparation and modeling code can be found in the README.md files in 01_Data_Prep and 02_Model_Code respectively. File dictionaries have also been included and serve as metadata documentation for the files and datasets within the four zipped folders.

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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identifier http://datainventory.doi.gov/id/dataset/usgs-63efb2c5d34efa0476b03854
metadata_type geospatial
modified 2024-01-04T00:00:00Z
old-spatial -76.395553, 38.683371, -74.357422, 42.462445
publisher U.S. Geological Survey
resource-type Dataset
source_datajson_identifier true
source_hash a6ca752ad35412b8e2557d80803a3c453e8b5d1dcb286b7f35b902896fdf6a32
source_schema_version 1.1
spatial {"type": "Polygon", "coordinates": [[[-76.395553, 38.683371], [-76.395553, 42.462445], [ -74.357422, 42.462445], [ -74.357422, 38.683371], [-76.395553, 38.683371]]]}
theme {geospatial}
Groups
  • AmeriGEOSS
  • National Provider
  • North America
Tags
  • AmeriGEO
  • AmeriGEOSS
  • CKAN
  • GEO
  • GEOSS
  • National
  • North America
  • United States
  • de
  • deep-learning
  • delaware
  • environment
  • explainable-ai-xai
  • groundwater
  • hybrid-modeling
  • inlandwaters
  • machine-learning
  • maryland
  • md
  • modeling
  • new-jersey
  • new-york
  • nj
  • ny
  • pa
  • pennsylvania
  • process-guided-deep-learning
  • stream-temperature
  • temperature
  • united-states
  • us
  • usgs-63efb2c5d34efa0476b03854
  • water
  • water-resources
isopen False
license_id notspecified
license_title License not specified
maintainer Margaux J. Sleckman
maintainer_email msleckman@usgs.gov
metadata_created 2025-09-23T19:03:21.438850
metadata_modified 2025-09-23T19:03:21.438856
notes This model archive provides all data, code, and modeling results used in Barclay and others (2023) to assess the ability of process-guided deep learning stream temperature models to accurately incorporate groundwater-discharge processes. We assessed the performance of an existing process-guided deep learning stream temperature model of the Delaware River Basin (USA) and explored four approaches for improving groundwater process representation: 1) a custom loss function that leverages the unique patterns of air and water temperature coupling resulting from different temperature drivers, 2) inclusion of additional groundwater-relevant catchment attributes, 3) incorporation of additional process model outputs, and 4) a composite model. The associated manuscript examines changes in the predictive accuracy, feature importance, and predictive ability in un-seen reaches resulting from each of the four approaches. This model archive includes four zipped folders for 1) Data Preparation, 2) Model Code, 3) Model Predictions, and 4) the catchment attributes that were compiled for reaches in the study area. Instructions for running data preparation and modeling code can be found in the README.md files in 01_Data_Prep and 02_Model_Code respectively. File dictionaries have also been included and serve as metadata documentation for the files and datasets within the four zipped folders.
num_resources 1
num_tags 34
title Model code, outputs, and supporting data for approaches to process-guided deep learning for groundwater-influenced stream temperature predictions