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|Resource type:||Composite Resource|
|Storage:||The size of this resource is 1.5 MB|
|Created:||May 20, 2021 at 12:35 a.m.|
|Last updated:|| May 14, 2022 at 4:32 a.m.
|Citation:||See how to cite this resource|
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This resource, configured for execution in connected JupyterHub compute platforms, helps the modelers to reproduce and build on the results from the paper (Van Beusekom et al., 2021). For this purpose, three different Jupyter notebooks are developed and included in this resource which explore the paper goal for one example CAMELS site and a pre-selected period of 18-month simulation to demonstrate the capabilities of the notebooks. The first notebook processes the raw input data from CAMELS dataset to be used as input for SUMMA model. The second notebook executes SUMMA model using the input data from first notebook using original and altered forcing, as per further described in the notebook. Finally, the third notebook utilizes the outputs from notebook 2 and visualizes the sensitivity of SUMMA model outputs using Kling-Gupta Efficiency (KGE). More information about each Jupyter notebook and a step-by-step instructions on how to run the notebooks can be found in the Readme.md fie included in this resource. Using these three notebooks, modelers can apply the methodology mentioned above to any (one to all) of the 671 CAMELS basins and simulation periods of their choice.
Resource Level Coverage
How to run the simulations
This Readme file provides the users with the step-by-step guide to successfully run the three developed notebooks.
The steps, in the order they need to be taken, are explained in what follows.
STEP_0 Preliminary step
In this step the modellers make sure that they have access to the content files of the resource and required compute platform.
- In order to be able to run the three Jupyter notebooks, modelers need to first have a HydroShare account.
- If the modeler already does not have access to CyberGIS-Jupyter for Water (CJW), they need to ask to get access to it at the CyberGIS-Jupyter for Water platform
Important notes before running the notebooks:
- Users can change the HRU ID and simulation periods to analyze any of the 671 basins in CAMELS datasets for the simulation period of their choice.
- To run each notebook:
1. Click the OpenWith button in the upper-right corner of this HydroShare resource webpage;
2. Select "CyberGIS-Jupyter for Water";
3. Open the notebook and follow instructions;
STEP_1 Create SUMMA input using 1_camels_make_input.ipynb
The first notebook creates SUMMA input using Camels dataset using
summa_camels_hydroshare.zip in this resource and OpenDAP resource.
STEP_2 Execute SUMMA using 2_camels_pysumma.ipynb
This notebook executes SUMMA using original and constant forcing, and different parameters and parameterization combinations.
STEP_3 Visualize SUMMA output using 3_camels_analyze_output.ipynb
The final notebook visualizes the sensitivity of SUMMA output according to the constant forcing and output variables using KGE (Kling-Gupta Efficiency).
|The content of this resource is derived from||https://www.hydroshare.org/resource/a28685d2dd584fe5885fc368cb76ff2a/|
|The content of this resource is derived from||http://www.hydroshare.org/resource/dc273a1d6c32461fa2e853e048500c34|
|Title||Owners||Sharing Status||My Permission|
|Hydrologic Model Sensitivity to Temporal Disaggregation of Meteorological Forcing Data across CONUS||Bart Nijssen · Andrew Bennett · Ashley Van Beusekom · Young-Don Choi · Iman Maghami · Zhiyu/Drew Li · Jonathan Goodall||Public & Shareable||Open Access|
This resource was created using funding from the following sources:
|Agency Name||Award Title||Award Number|
|National Science Foundation||Collaborative Research: SI2-SSI: Cyberinfrastructure for Advancing Hydrologic Knowledge through Collaborative Integration of Data Science, Modeling and Analysis||OAC-1664061, OAC-1664018, OAC-1664119|
How to Cite
This resource is shared under the Creative Commons Attribution CC BY.http://creativecommons.org/licenses/by/4.0/