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This data release component contains water temperature predictions in 118 river catchments across the U.S. Predictions are from the four models described by Rahmani et al. (2020): locally-fitted linear regression, LSTM-noQ, LSTM-obsQ, and LSTM-simQ.
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This data release provides all data and code used in Rahmani et al. (2021b) to model stream temperature and assess results. Briefly, we modeled stream temperature at sites across the continental United States using deep learning methods. The associated manuscript explores the prediction challenges posed by reservoirs, the value of additional training sites when predicting in gaged vs ungaged sites, and the value of an ensemble of attribute subsets in improving prediction accuracy. The data are organized into these child items: Site Information - Attributes and spatial information about the monitoring sites and basins in this study Observations - Water temperature observations for the sites used in this study Model...
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This data release component contains evaluation metrics used to assess the predictive performance of each stream temperature model. For further description, see the metric calculations in the supplement of Rahmani et al. (2020), equations S1-S7.
This data release component contains mean daily stream water temperature observations, retrieved from the USGS National Water Information System (NWIS) and used to train and validate all temperature models. The model training period was from 2010-10-01 to 2014-09-30, and the test period was from 2014-10-01 to 2016-09-30.
This data release provides all data and code used in Rahmani et al. (2020) to model stream temperature and assess results. Briefly, we used a subset of the USGS GAGES-II dataset as a test case for temperature prediction using deep learning methods. The associated manuscript explores the value of including stream discharge as a predictor in the temperature models, including the value of predicted discharge from a separate model when no discharge measurements are available. The data are organized into these items: Spatial Information - Locations of the 118 monitoring sites used in this study Observations - Water temperature observations for the 118 sites used in this study Model Inputs - Model inputs, including basin...


    map background search result map search result map Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data: 1 Spatial information Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data: 2 Observations Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data: 3 Model inputs Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data: 4 Models Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data: 5 Model predictions Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data: 6 Model evaluation Deep learning approaches for improving prediction of daily stream temperature in data-scarce, unmonitored, and dammed basins Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data: 1 Spatial information Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data: 2 Observations Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data: 3 Model inputs Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data: 4 Models Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data: 5 Model predictions Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data: 6 Model evaluation Deep learning approaches for improving prediction of daily stream temperature in data-scarce, unmonitored, and dammed basins