Improving Hillslope Link Model Performance from Non-Linear Representation of Natural and Artificially Drained Subsurface Flows
Abstract
:1. Introduction
1.1. Issues with the Hillslope Link Model (HLM) in Iowa
1.2. The Diagnostic-Prognostic Approach
2. Materials and Methods
2.1. Model Description
2.2. Model Setup and Data
2.2.1. Diagnostic Setups
2.2.2. Prognostic Setups
3. Results
3.1. Insights from a Diagnostic-Prognostic Approach
3.2. Extended Metrics
3.3. Analysis of Parameter Values
4. Conclusions
- Compared with the linear equation, the exponential equation corrects the volume bias on the simulated streamflow. We attribute the correction to the active layer threshold on the exponential equation and the significant outflow increase once the storage is above this threshold. In contrast, in the linear equation, the water remains in the soil for extended periods because of the described absence of these processes.
- Depending on the parameters, the exponential equation could improve the performance of HLM. We found that the exponential equation outperforms the linear equation for several parameter combinations with changes in the shape of the hydrograph, the simulated peaks, and timing. We also found significant differences using different combinations of the equation parameters and the percolation rate.
- The percolation rate plays a significant role in the representation of the subsurface flux from the described combinations. We found spatial coincidences in the percolation rates when choosing the best diagnostic and prognostic scenarios. Additionally, the percolation rate induces changes comparable to those produced by the exponential equation’s parameters.
- Determining the distributed parameters of HLM remains challenging. In this paper, we used the diagnostic and prognostic approaches to analyze the parameters of HLM. The diagnostic approach assumes unknown conditions and fixed parameters over the space. On the other hand, the prognostic method is the more classical approach, in which the parameters are derived from maps of the landscape. In our experiments, the diagnostic setups tended to outperform the prognostic setups. Additionally, had difficulty in identifying a link between the diagnostic and prognostic parameters and their respective performances.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Identifier | Type | Slope | Tiled | |
---|---|---|---|---|
D1 | Diagnostic | 0% | False | 0.02 |
D2 | Diagnostic | 2% | False | 0.02 |
D3 | Diagnostic | 5% | False | 0.02 |
D4 | Diagnostic | 2% | True | 0.02 |
D5 | Diagnostic | 0% | False | 0.03 |
D6 | Diagnostic | 2% | False | 0.03 |
D7 | Diagnostic | 5% | False | 0.03 |
D8 | Diagnostic | 2% | True | 0.03 |
D9 | Diagnostic | 0% | False | 0.04 |
D10 | Diagnostic | 2% | False | 0.04 |
D11 | Diagnostic | 5% | False | 0.04 |
D12 | Diagnostic | 2% | True | 0.04 |
P1 | Prognostic | Variable | Variable | 0.02 |
P2 | Prognostic | Variable | Variable | 0.03 |
P3 | Prognostic | Variable | Variable | 0.04 |
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Velásquez, N.; Mantilla, R.; Krajewski, W.; Fonley, M.; Quintero, F. Improving Hillslope Link Model Performance from Non-Linear Representation of Natural and Artificially Drained Subsurface Flows. Hydrology 2021, 8, 187. https://doi.org/10.3390/hydrology8040187
Velásquez N, Mantilla R, Krajewski W, Fonley M, Quintero F. Improving Hillslope Link Model Performance from Non-Linear Representation of Natural and Artificially Drained Subsurface Flows. Hydrology. 2021; 8(4):187. https://doi.org/10.3390/hydrology8040187
Chicago/Turabian StyleVelásquez, Nicolás, Ricardo Mantilla, Witold Krajewski, Morgan Fonley, and Felipe Quintero. 2021. "Improving Hillslope Link Model Performance from Non-Linear Representation of Natural and Artificially Drained Subsurface Flows" Hydrology 8, no. 4: 187. https://doi.org/10.3390/hydrology8040187