Process-guided deep learning water temperature predictions: 5a Lake Mendota detailed prediction data
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| identifier | USGS:5d915cb2e4b0c4f70d0ce523 |
| metadata_type | geospatial |
| modified | 20200820 |
| old-spatial | -89.4836545048768, 43.0771195331357, -89.3674075050573, 43.1520341996861 |
| publisher | U.S. Geological Survey |
| publisher_hierarchy | Department of the Interior > U.S. Geological Survey |
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| license_id | notspecified |
| license_title | License not specified |
| maintainer | Jordan S. Read |
| maintainer_email | jread@usgs.gov |
| metadata_created | 2025-11-22T18:17:49.355453 |
| metadata_modified | 2025-11-22T18:17:49.355457 |
| notes | Multiple modeling frameworks were used to predict daily temperatures at 0.5m depth intervals for a set of diverse lakes in the U.S. states of Minnesota and Wisconsin. Process-Based (PB) models were configured and calibrated with training data to reduce root-mean squared error. Uncalibrated models used default configurations (PB0; see Winslow et al. 2016 for details) and no parameters were adjusted according to model fit with observations. Deep Learning (DL) models were Long Short-Term Memory artificial recurrent neural network models which used training data to adjust model structure and weights for temperature predictions (Jia et al. 2019). Process-Guided Deep Learning (PGDL) models were DL models with an added physical constraint for energy conservation as a loss term. These models were pre-trained with uncalibrated Process-Based model outputs (PB0) before training on actual temperature observations. |
| num_resources | 2 |
| num_tags | 26 |
| title | Process-guided deep learning water temperature predictions: 5a Lake Mendota detailed prediction data |