Modeling Rainfall Impact on Slope Stability: Computational Insights into Displacement and Stress Dynamics
Abstract
:1. Introduction
2. Software and Methods
2.1. Model and Parameter
2.1.1. Assumptions
- (1)
- We model the slope as a stratified system, with each layer exhibiting uniform properties but differing from others. These layers, isotropic within themselves, maintain tight inter-layer connections.
- (2)
- In this model, soil granules are treated as non-compressible entities.
- (3)
- As the rainfall intensity heightens, the shear strength of the topsoil layer diminishes, modeled over 70 incremental time steps.
- (4)
- The soil up to a depth of 3.0 m is assumed to be fully saturated. For this portion, we adopt the saturated soil density as its defining parameter.
- (5)
- We opt for a 2D Solid element in our simulations, specifically choosing the ‘Plane Structure’ as the Element Sub Type and ‘Porous Media’ for the Material Type.
2.1.2. Calculation Model
- ①
- Geometric modeling steps: We start by creating geometric models, beginning with the most basic elements (points) and expanding them into more complex forms (surfaces). Specifically, this involves modeling the root site’s dimensions as captured in the ADINA-Structure software 9.
- ②
- Establishing boundary conditions: this involves specifying the constraints and conditions that define how the model interacts with its surroundings.
- ③
- Load application: Here, we apply different types of loads to the model. This includes the application of pore flow loads along specified areas. Additionally, we apply loads that are proportional to the mass on the slope.
- ④
- Material properties and group selection: In this step, we choose the appropriate materials and their properties. We then designate the 2D Solid unit for structural analysis, with specific sub-types and materials, including Plane Structure for element sub-types and Porous Media for the material type. The parameters for each group are defined as per the guidelines in [27].
- ⑤
- Grid partitioning: finally, we divide the model into a grid, as illustrated in Figure 1. This grid helps in detailed analysis and simulation.
2.1.3. Working Condition
3. Numerical Simulation Analysis
3.1. Monitoring Data
3.1.1. Rainfall Intensity of 274 mm/d
3.1.2. Comparative Analysis
3.2. Different Rainfall Intensities
3.2.1. 200 mm/d
3.2.2. 300 mm/d
3.2.3. 400 mm/d
3.2.4. Comparative Analysis
4. Conclusions
- (1)
- Correlation of simulated and actual slope displacements: There is a noteworthy alignment between the simulated and actual displacements of the slope. The internally simulated displacements, however, exhibit a marginal excess compared to the actual measurements.
- (2)
- Rainfall intensity’s impact on slope deformation and stress: It is evident that the slope’s deformation and stress levels are sensitive to changes in rainfall intensity. An escalation in rainfall intensity correlates with increased deformation at the slope’s base and a broader area affected by stress. The peak in both displacement and stress is observed when rainfall intensity hits 400 mm/day. Slopes under rainfall intensities lower than 300 mm/day display a marked increase in deformation, heightening their susceptibility to slippage and instability. Conversely, intensities exceeding 300mm/day show a diminishing effect on slope deformation.
- (3)
- The rainfall intensity and its influence on displacement distribution: With the increase in rainfall intensity, soil horizontal displacement within 2.2 m of slope’s foot increases. In contrast, shallow soils 0.8 m above the surface showed relatively small shifts. Below 2.2 m, the horizontal displacement near the base decreases, and the displacement of the soil below 2.2 m is the least.
- (4)
- Sliding surfaces and their maximum expansion zones: Under a simulated rainfall intensity of 200 mm/day, the sliding surface manifests as a circular area at the base of the loess slope. However, at rainfall intensities of 274, 300 and 400 mm/day, the sliding surface shifts to a midpoint circular pattern. The maximal sliding zones are identified within arc distances of 1.0, 2.5, 3.5 and 4.0 m from the slope’s base, respectively.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Zong, J.; Zhang, C.; Liu, L.; Liu, L. Modeling Rainfall Impact on Slope Stability: Computational Insights into Displacement and Stress Dynamics. Water 2024, 16, 554. https://doi.org/10.3390/w16040554
Zong J, Zhang C, Liu L, Liu L. Modeling Rainfall Impact on Slope Stability: Computational Insights into Displacement and Stress Dynamics. Water. 2024; 16(4):554. https://doi.org/10.3390/w16040554
Chicago/Turabian StyleZong, Jingmei, Changjun Zhang, Leifei Liu, and Lulu Liu. 2024. "Modeling Rainfall Impact on Slope Stability: Computational Insights into Displacement and Stress Dynamics" Water 16, no. 4: 554. https://doi.org/10.3390/w16040554
APA StyleZong, J., Zhang, C., Liu, L., & Liu, L. (2024). Modeling Rainfall Impact on Slope Stability: Computational Insights into Displacement and Stress Dynamics. Water, 16(4), 554. https://doi.org/10.3390/w16040554