Model Archive and Data Release: Input data, trained model data, and model outputs for predicting streamflow and base flow for the Mississippi Embayment Regional Study Area using a random forest model

Description

This data archive contains datasets developed for the purpose of training and applying random forest models to the Mississippi Embayment Regional Aquifer. The random forest models are designed to predict total stream flow and baseflow as a function of a combination of watershed characteristics and monthly weather data. These datasets are associated with a report (SIR 2022-xxxx) and code contained in a USGS GitLab repository. The GitLab repository (https://code.usgs.gov/map/maprandomforest/) contains much more information about how these data may be used to supply predictions of stream flow and baseflow.

Resources

Name Format Description Link
55 Landing page for access to the data https://doi.org/10.5066/P9QCK8HY
55 The metadata original format https://data.usgs.gov/datacatalog/metadata/USGS.5f32c66b82cee144fb313867.xml

Tags

  • statistical-analysis
  • missouri
  • tennessee
  • baseflow
  • mississippi
  • usgs-5f32c66b82cee144fb313867
  • streamflow
  • mississippi-river-delta
  • arkansas
  • inlandwaters
  • louisiana

Topics

Categories