Corrected surface water temperatures using Gaussian Regression Process and process-based hydrodynamic models
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Description
This dataset provides corrected predictions of surface water temperature of Lake Harsha (Ohio, US) for year 2019. Corrected predictions are provided by a hybrid modeling approach that combines (a) a process-based hydrodynamic model of the lake and (b) a Gaussian Process Regression model that predicts errors of the process-based models. The Gaussian Process Regression model was trained on simulation errors provided by the process-based model during the period 2015-2018.
Parameter: Surface water temperature (oC )
Spatial resolution | Temporal resolution |
60 m | Daily |
Temporal coverage
2015 – 2019
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