The Relatively Stable Seepage Field: A New Concept to Determine Seepage Field in the Design of a Dry-Stack Tailings Pond
Abstract
:1. Introduction
2. Materials and Methods
2.1. Problem of Seepage Field in Dry-Stack Tailings Ponds
2.1.1. Analysis of Influencing Factors of Water in Dry-Stack Tailings Ponds
2.1.2. Water Balance Model of Seepage Field in the Dry-Stack Tailings Pond
2.2. Theory of Seepage Calculation in Unsaturated Soil
2.3. Establishment of Numerical Model
2.3.1. Establishment of Tailings Pond Model
2.3.2. Parameters of Soil Material
2.4. The Boundary Conditions and Initial Condition
2.4.1. Determination of Rainfall Patterns
2.4.2. Rainfall Boundary Conditions and Initial Condition
2.5. Numerical Simulation Conditions
3. Results and Discussion
3.1. Results of Numerical Simulation
3.1.1. The Spatial-Temporal Evolution Process of the Seepage Field in Dry-Stack Tailings Ponds under the Action of Multi-Year Rainfall
3.1.2. Evolution Process of the Saturation Line in the Dry-Stack Tailings Pond under Multi-Year Rainfall
3.1.3. The Concept and Significance of the Relatively Stable Seepage Field of the Dry-Stack Tailings Pond
3.2. The Formation Mechanism and Discriminant Conditions of RSSF
3.2.1. The Formation Mechanism
3.2.2. Distinguishing Basis for Forming RSSF
3.3. Influencing Factors of Relatively Steady Seepage Field
3.3.1. Influence of Rainfall Patterns
3.3.2. Influence of Annual Rainfall
3.3.3. Influence of Bottom Slope
3.3.4. Influence of Evaporation
3.4. Suggestions
3.5. Limitations and Future Research
4. Conclusions
- (1)
- In the early stage during the formation process of RSSF, the drainage flow of the initial dam was less than the average rainfall infiltration flow and the saturation line in the dam rose rapidly. As the drainage flow of the initial dam was gradually equal to the average rainfall infiltration flow, the seepage field of the dry-stack tailings pond gradually approached a relatively stable state and finally a RSSF was formed.
- (2)
- Since the fluctuation in the pore pressure curve is relatively small, it is easier to judge the RSSF formation standard of the dry-stack tailings pond by using the relationship between pore pressure and time at typical positions in the dam.
- (3)
- The final form of the RSSF is related to the total annual rainfall. With the increase in annual rainfall, the location of the saturation line corresponding to the RSSF will be higher. RSSF has little relation with rainfall patterns when the annual rainfall is constant. Therefore, in the calculation of RSSF, any reasonable rainfall time history curve can be selected, which brings great convenience to the calculation. In addition, under other constant conditions, the final form of RSSF is related to the topography (bottom slope) of the dry-stack tailings pond.
- (4)
- When evaporation is considered, the height of the phreatic line of the RSSF will decrease. In this calculation example, the minimum burial depth of the phreatic line (hb) before and after evaporation is counted: when the annual rainfall is 400 mm/800 mm/1200 mm, the maximum change of hb increased from 23.9 m/19.4 m/15.2 m to 28 m/24.9 m/19.1 m and increase ratio was 17.2%/28.4%/27.3%.
- (5)
- Because the formation of the RSSF in the dry-stack tailings pond takes a long time, it is easy for it to be ignored in the management and design of tailings ponds. Therefore, it is necessary to consider the influence of the RSSF on the design parameters in the design of dry-stack tailings ponds.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Rainfall Parameters | Bottom Slope of 0.05 | Bottom Slope of 0.1 | Bottom Slope of 0.15 | |
---|---|---|---|---|
Annual Rainfall | Rainfall Pattern | |||
400 mm | Taiyuan 2018 | Case: I-a | Case: II-a | Case: III-a |
Taiyuan 2019 | Case: I-b | Case: II-b | Case: III-b | |
Taiyuan 2020 | Case: I-c | Case: II-c | Case: III-c | |
800 mm | Zhengzhou 2018 | Case: I-d | Case: II-d | Case: III-d |
Zhengzhou 2019 | Case: I-e | Case: II-e | Case: III-e | |
Zhengzhou 2020 | Case: I-f | Case: II-f | Case: III-f | |
1200 mm | Guiyang 2018 | Case: I-g | Case: II-g | Case: III-g |
Guiyang 2019 | Case: I-h | Case: II-h | Case: III-h | |
Guiyang 2020 | Case: I-i | Case: II-i | Case: III-i |
Annual Rainfall (mm) | Case | Pore Pressure (kPa) | ||
---|---|---|---|---|
Point A | Point B | Point C | ||
400 | Case II-a | −49~83.7 | −49~101.2 | −49~65.8 |
Case II-b | −49~84.3 | −49~102.2 | −49~67.6 | |
Case II-c | −49~83.3 | −49~100.3 | −49~64.6 | |
800 | Case II-d | −49~128 | −49~180.3 | −49~147.6 |
Case II-e | −49~127.3 | −49~179.1 | −49~146.4 | |
Case II-f | −49~127.7 | −49~179.8 | −49~147.1 | |
1200 | Case II-g | −49~165 | −49~248.5 | −49~222.4 |
Case II-h | −49~167 | −49~253.9 | −49~228.7 | |
Case II-i | −49~169 | −49~257.4 | −49~233.9 |
Annual Rainfall (mm) | Case | Pore Pressure (kPa) | ||
---|---|---|---|---|
Point A | Point B | Point C | ||
400 | Case II-a | 83.7~86 | 101.2~106.8 | 65.8~74.6 |
Case II-b | 84.3~86.7 | 102.2~108.4 | 67.6~76.5 | |
Case II-c | 83.3~85.5 | 100.3~105.5 | 64.6~72.9 | |
800 | Case II-d | 128~131.9 | 180.3~188.3 | 147.6~154.2 |
Case II-e | 127.3~131.3 | 179.1~187.2 | 146.4~153.2 | |
Case II-f | 127.7~131.6 | 179.8~187.9 | 147.1~154.5 | |
1200 | Case II-g | 165~166.5 | 248.5~252.4 | 222.4~225.3 |
Case II-h | 167~169 | 253.9~258.7 | 228.7~234.2 | |
Case II-i | 169~171.5 | 257.4~262.5 | 233.9~239.7 |
Annual Rainfall (mm) | Case | Pore Pressure (kPa) | ||
---|---|---|---|---|
Point A | Point B | Point C | ||
400 | Case II-a | 86~86.2 | 106.8~107.2 | 74.6~75.2 |
Case II-b | 86.7~86.9 | 108.4~108.8 | 76.5~76.9 | |
Case II-c | 85.5~85.9 | 105.5~105.9 | 72.9~73.4 | |
800 | Case II-d | 131.9~132.3 | 188.3~188.5 | 154.2~154.8 |
Case II-e | 131.3~131.7 | 187.3~187.4 | 153.2~154.0 | |
Case II-f | 131.6~132.1 | 187.9~188.1 | 153.2~154.5 | |
1200 | Case II-g | 165.9~166.7 | 252.4~253.4 | 225.3~230.2 |
Case II-h | 168~169 | 257.3~258.7 | 230.4~236.2 | |
Case II-i | 169.8~171.5 | 260.4~262.6 | 235.8~241.8 |
Case | Annual Rainfall of 400 mm | Annual Rainfall of 800 mm | Annual Rainfall of 1200 mm | ||||||
---|---|---|---|---|---|---|---|---|---|
i = 0.05 | i = 0.1 | i = 0.15 | i = 0.05 | i = 0.1 | i = 0.15 | i = 0.05 | i = 0.1 | i = 0.15 | |
Evaporation not considered | 23.9 | 23.4 | 23.2 | 19.4 | 19.2 | 19.1 | 15.8 | 15.3 | 15.2 |
Evaporation considered | 28.0 | 27.2 | 27.0 | 24.9 | 24.0 | 23.9 | 19.9 | 19.3 | 19.1 |
Difference rate (%) | 17.2% | 16.2% | 16.4% | 28.4% | 25.0% | 25.8% | 25.9% | 26.1% | 27.3% |
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Li, Q.; Wu, B.-Z.; Li, X.; Jia, S.; Zhen, F.-H.; Gao, S. The Relatively Stable Seepage Field: A New Concept to Determine Seepage Field in the Design of a Dry-Stack Tailings Pond. Appl. Sci. 2022, 12, 12123. https://doi.org/10.3390/app122312123
Li Q, Wu B-Z, Li X, Jia S, Zhen F-H, Gao S. The Relatively Stable Seepage Field: A New Concept to Determine Seepage Field in the Design of a Dry-Stack Tailings Pond. Applied Sciences. 2022; 12(23):12123. https://doi.org/10.3390/app122312123
Chicago/Turabian StyleLi, Qiang, Bi-Ze Wu, Xin Li, Sen Jia, Feng-Hao Zhen, and Song Gao. 2022. "The Relatively Stable Seepage Field: A New Concept to Determine Seepage Field in the Design of a Dry-Stack Tailings Pond" Applied Sciences 12, no. 23: 12123. https://doi.org/10.3390/app122312123
APA StyleLi, Q., Wu, B. -Z., Li, X., Jia, S., Zhen, F. -H., & Gao, S. (2022). The Relatively Stable Seepage Field: A New Concept to Determine Seepage Field in the Design of a Dry-Stack Tailings Pond. Applied Sciences, 12(23), 12123. https://doi.org/10.3390/app122312123