A New Physically-Based Spatially-Distributed Groundwater Flow Module for SWAT+
Abstract
:1. Introduction
- SWAT-MODFLOW simulations can have long run-times, often many times the duration of a stand-alone SWAT model; this can impede the use of the linked model in applications that involve ensembles of simulations (automated calibration, uncertainty analysis, sensitivity analysis, e.g., [21,22,23,24,25]); and
- Both SWAT-MODFLOW and SWAT+MODFLOW require extensive modifications to the SWAT and SWAT+ modeling codes and the inclusion of numerous additional source files, resulting in a cumbersome modeling code and inhibiting model developers from making modifications.
2. Materials and Methods
2.1. SWAT+
- Groundwater head (i.e., water table elevation) changes only according to soil recharge and groundwater discharge to streams; in reality, there are many other sources and sinks of groundwater;
- a single groundwater head is computed for each Hydrologic Response Unit (HRU);
- groundwater flow to streams is based on the presence of a groundwater divide and an assumption of steady-state conditions;
- groundwater flow to streams is simulated only if groundwater storage exceeds a user-specified threshold, rather than due to hydraulic gradients;
- seepage from streams to the aquifer due to hydraulic gradients is not simulated;
- each aquifer is treated as a homogeneous system in which aquifer properties (hydraulic conductivity K, specific yield Sy) do not vary in space.
2.2. Groundwater Flow Module (gwflow) for SWAT+
2.2.1. Overview of the gwflow Module
2.2.2. Solution Strategy for the gwflow Module
2.2.3. Calculating Groundwater Stress Volumetric Fluxes
Soil Recharge
Lateral Flow
Groundwater ET
Discharge to Streams and Stream Seepage to the Aquifer
Pumping
Saturation Excess Flow
2.2.4. SWAT+ Code Structure with the gwflow Module
2.2.5. Required Inputs for the gwflow Module
2.3. Application to the Little River Experimental Watershed, Georgia
2.3.1. Overview of Study Region
2.3.2. SWAT+ Model Construction
2.3.3. Preparing the gwflow Module
- Number of rows and columns: based on the extent of the watershed and the specified cell size.
- Time step Δt: The maximum time step is 1 day, since the gwflow module is called each day within the SWAT+ code (see Figure 3). The minimum required time step must be found using a trial and error approach. We recommend starting with 1 day, checking results in the daily groundwater balance file to verify that the percent error in groundwater balance is equal to 0.
- Status (active, inactive, boundary): as the grid is rectangular in shape, many cells will be located outside the watershed boundary; these cells are “inactive” and assigned status = 0. All cells within the watershed boundary are “active” and assigned status = 1, except for cells that lie along the boundary and are designated as “boundary” cells and assigned status = 2. Boundary cells are simulated as constant-head cells, i.e., the groundwater head assigned to these cells at the beginning of the simulation remains constant throughout the simulation period.
- Groundwater surface elevation: obtained from the DEM of the watershed.
- Aquifer thickness (m): obtained from [52], who provide a global map of unconsolidated sediment thickness (cm) from the ground surface to bedrock (see Table 2). This dataset is particularly useful for watersheds with limited borehole and drilling information. These values must be converted to meters for the gwflow module.
- Specific Yield Sy: specific yield values (typically 0.10 to 0.30 for alluvial aquifer sediments) are estimated based on the values of K, i.e., if values of K coincide with a certain material (e.g., sand, silt), specific yield values for this material type are also used.
- River Cell information: River Cells are identified by intersecting the grid cells with the SWAT+ channels; streambed elevation is calculated using the elevation of the cell (from the DEM) minus a specific depth (Depth of streambed below DEM value), recognizing that the actual streambed elevation is likely much lower than the average elevation of a DEM raster cell. Initial Kbed and dbed values can be based on literature.
2.3.4. Overall Simulation
3. Results and Discussion
3.1. Water Balance
3.2. Streamflow Results
3.3. Groundwater Head Results
4. Summary and Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Groundwater Stress | Source/Sink | Dependent on Groundwater Head | Dependent on Groundwater Storage | Required Aquifer/Stream Properties | Method for Computing Flow Rate |
---|---|---|---|---|---|
Soil Recharge | Source | No | No | - | SWAT+ HRUs |
Lateral Flow | Mixed | Yes | Yes | K | Darcy’s Law |
Groundwater ET | Sink | Yes | Yes | - | Linear Equation |
Discharge to streams | Sink | Yes | Yes | Kbed, dbed | Darcy’s Law |
Stream seepage | Source | Yes | No | Kbed, dbed | Darcy’s Law |
Pumping | Sink | No | Yes | - | User Specified |
Saturation excess flow | Sink | Yes | No | Sy | Storage equation |
Basic Information | Units |
---|---|
Cell size | m |
Number of Rows and Columns in the grid | - |
Water table initiation flag (1, 2, 3) | - |
Saturation excess flow flag (yes/no) | - |
Groundwater ET flag (yes / no) | - |
Recharge delay | day |
Time step Δt | day |
Grid Cell Information | |
Row Index | - |
Column Index | - |
Status (active = 1, inactive = 0, boundary = 2) | - |
Longitude | degree |
Latitude | degree |
Ground surface elevation | m |
Aquifer thickness | m |
Hydraulic conductivity zone | - |
Specific yield zone | - |
Groundwater ET extinction depth EXDP | m |
Output Control | |
Days for groundwater head output | day |
Cells for daily groundwater head output | - |
River Cell Information | |
Depth of streambed below DEM value | m |
Row Index | - |
Column Index | - |
Channel ID | - |
Stream length in cell | m |
Streambed elevation zbed | m |
Streambed hydraulic conductivity zone Kbed | - |
Streambed thickness zone dbed | - |
Data | Resolution | Source |
---|---|---|
Topo-graphy | 30 m | U.S. Geological Survey, National Elevation Data |
Accessed: 15 October 2019, https://viewer.nationalmap.gov | ||
Land use | 30 m | U.S. Geological Survey, National Land Cover Data (2016) |
Accessed: 15 October 2019, https://www.mrlc.gov/data | ||
Crop Data | 30 m | U.S. Dept. of Agriculture, CropScape |
Accessed: 15 October 2019, https://nassgeodata.gmu.edu/CropScape/ | ||
Soil | 30 m | USDA-NRCS, Soil Survey Geographic (SSURGO) |
Accessed: 15 October 2019, -https://datagateway.nrcs.usda.gov/ | ||
Climate | Multiple stations | Precipitation: daily watershed weighted average [51]. |
Other climate variables: SWAT+ global database. | ||
Aquifer thickness (cm) | 250 m | [52] |
Accessed: 10 December 2019, https://soilgrids.org/ | ||
Hydraulic conduct. (m/day) | Vector Polygons | [53] |
Accessed: 10 December 2019, https://dataverse.scholarsportal.info/dataset.xhtml?persistentId=doi:10.5683/SP2/TTJNIU |
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Bailey, R.T.; Bieger, K.; Arnold, J.G.; Bosch, D.D. A New Physically-Based Spatially-Distributed Groundwater Flow Module for SWAT+. Hydrology 2020, 7, 75. https://doi.org/10.3390/hydrology7040075
Bailey RT, Bieger K, Arnold JG, Bosch DD. A New Physically-Based Spatially-Distributed Groundwater Flow Module for SWAT+. Hydrology. 2020; 7(4):75. https://doi.org/10.3390/hydrology7040075
Chicago/Turabian StyleBailey, Ryan T., Katrin Bieger, Jeffrey G. Arnold, and David D. Bosch. 2020. "A New Physically-Based Spatially-Distributed Groundwater Flow Module for SWAT+" Hydrology 7, no. 4: 75. https://doi.org/10.3390/hydrology7040075
APA StyleBailey, R. T., Bieger, K., Arnold, J. G., & Bosch, D. D. (2020). A New Physically-Based Spatially-Distributed Groundwater Flow Module for SWAT+. Hydrology, 7(4), 75. https://doi.org/10.3390/hydrology7040075