Research on the Driving Mechanism of Water and Sediment Evolution in the Area of the Datengxia Water Control Hub Project: Principle Analysis, Method Design, and Prediction Simulation
Abstract
1. Introduction
2. Overview of the Study Area
3. Methods and Data Sources
3.1. Data Sources and Preprocessing
3.2. Methods
3.2.1. Methodological Framework
3.2.2. Hydrological Model
3.2.3. Mann–Kendall Test Method (M–K) Test and Pettitt Mutation Test Analysis
3.2.4. Contributions of Climate Change and Human Activities
3.2.5. Random Forest Model
4. Results
4.1. Effects of Rainfall and Human Activities on Runoff and Sediment Transport
4.1.1. Characteristics of Runoff Driven by Meteorological Factors
4.1.2. Change Trends in Runoff and Sediment Transport
4.1.3. Contribution Analysis of Rainfall and Human Activities to Water and Sediment Changes
4.2. The Main Controlling Factors of Human Activities on Water and Sediment Changes
4.2.1. Analysis of the Main Control Factors
4.2.2. Simulation Verification of Random Forest Model
4.2.3. Identification of the Main Control Factors Influencing Water and Sediment Changes
4.3. Research Area Flood Inundation Prediction and Sediment Deposition Analysis
4.3.1. Flood Frequency Design in the Study Area
4.3.2. Application of Flood Prediction in the Study Area
4.3.3. Application of Sediment Transport Prediction in the Study Area
5. Discussion and Conclusions
5.1. Discussion
- The hydrological series of the basin exhibited a statistically significant mutation around 2003, indicating that intensive human activities were already capable of driving systematic changes in the hydrological regime prior to the construction of major water conservancy projects. Notably, this mutation point temporally coincides with the well-documented decadal weakening of the Asian summer monsoon system, of which the Southwest Monsoon—identified in Section 3.2.2 as the dominant control on wet season precipitation in the study area—is an integral component. This suggests that the observed hydrological shift occurred against a non-stationary climatic background, although contribution decomposition confirms that human activities remain the dominant driver (93.18% and 92.38% at Wuxuan Station). Concurrently, distinct spatial differences were observed in water–sediment responses between upstream and downstream sites: upstream sites were strongly influenced by project regulation, showing synchronized variations in runoff and sediment load, whereas downstream sites displayed an asynchronous pattern characterized by increased runoff but reduced sediment transport. This reflects that human activities not only alter the total water and sediment fluxes but also modify sediment sources and transport pathways through measures such as soil–water conservation and channel interventions. It should be noted that the identified mutation year may vary within a 1–2-year window due to local variability in the time series and the sensitivity of the detection method; however, this uncertainty does not undermine the core conclusion that the mutation occurred significantly earlier than the construction of the main project.
- 2.
- The population density and grassland area were identified as the most sensitive social and natural factors affecting sediment transport, which aligns with the general understanding that human activities and land cover changes dominate erosion and sediment yield in rapidly urbanizing basins. It is important to clarify that although the random forest model can robustly handle multicollinearity, highly correlated factor groups (e.g., population density and built-up area) collectively represent the macro-process of “human activity intensity,” making it difficult to attribute feature importance precisely to any single independent variable. Therefore, the identified key factors should be regarded as proxy indicators reflecting the integrated impact of human activities and the status of natural land cover. These findings provide clear targets for basin management: while continuing to promote soil–water conservation, it is essential to strictly control the disorderly expansion of human activity zones, optimize land-use structure, and pay particular attention to the risks of channel adjustment and local erosion induced by altered flow dynamics downstream of hydraulic projects, thereby systematically enhancing the basin’s erosion resilience and ensuring channel stability and project safety.
- 3.
- This study developed an integrated “mutation identification–attribution–prediction” analytical framework. By combining the Pettitt test, double mass curve, and random forest modeling, a complete chain of analysis—from hydrological mutation diagnosis to contribution rate separation and key driver identification—was achieved. This framework provides a transferable tool for water–sediment attribution and prediction in basins lacking long-term monitoring data. That said, the current analysis is built upon a comprehensive yet regionally specific dataset; the conclusions drawn are therefore most robust for basins with comparable climatic, geomorphic, and anthropogenic conditions. It should be noted, however, that the current approach still has limitations in spatially explicit attribution, and its conclusions are more applicable to regional, medium- to short-term management. If applied to data-scarce basins or long-term forecasting, the framework should be validated by integrating distributed models and multi-source data, and the interactions between project operation and extreme climate events need to be further examined.
5.2. Conclusions
- The cumulative effects of human activities emerge earlier than in major projects. Both runoff and sediment series at Wuxuan Station and Dahuangjiangkou Station showed statistically significant mutations in 2003, which precedes the commencement of the main Datengxia Water Control Hub Project in 2014. This indicates that regional human activities—such as cascade hydropower development and land-use changes—had already become the dominant drivers of systematic shifts in water–sediment regimes before the large-scale hydraulic infrastructure was built;
- Human contributions exhibit longitudinal differentiation, with key drivers clearly identified. The attribution rates of human activities to the reduction in water and sediment were higher at the upstream Wuxuan Station (>92%) than at the downstream Dahuangjiangkou Station (54–74%). The random forest model identified the population density and grassland area as the most sensitive controlling factors;
- The proposed “mutation identification–attribution–prediction” framework offers methodological value. It effectively handles the nonlinear characteristics of water–sediment series and provides a transferable tool for attribution analysis in data-limited basins.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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| Hydrologic Station | Year | TEMP (°C) | DEWP (°C) | WDSP (m·s−1) | PRCP (mm) | Hydrologic Station | Year | TEMP (°C) | DEWP (°C) | WDSP (m·s−1) | PRCP (mm) |
|---|---|---|---|---|---|---|---|---|---|---|---|
| Wuxuan | 1993 | 20.75 | 15.66 | 2.5 | 1708.56 | Dahuangjiangkou | 1993 | 21.64 | 17.56 | 1.22 | 1758.13 |
| 1994 | 20.91 | 16.27 | 2.8 | 2246.54 | 1994 | 21.94 | 18.25 | 1.14 | 2443.44 | ||
| 1995 | 20.93 | 15.23 | 3.46 | 1242.99 | 1995 | 21.57 | 17.39 | 2.62 | 1468.14 | ||
| 1996 | 20.7 | 14.89 | 3.62 | 1514.99 | 1996 | 21.41 | 17.05 | 2.98 | 1497.79 | ||
| 1997 | 20.97 | 15.99 | 3.7 | 1662.8 | 1997 | 21.84 | 18.1 | 2.65 | 2183.1 | ||
| 1998 | 21.86 | 16.11 | 3.97 | 1617.61 | 1998 | 22.49 | 17.23 | 2.74 | 1932.73 | ||
| 1999 | 21.49 | 15.79 | 3.65 | 1993.03 | 1999 | 22.52 | 17.73 | 2.61 | 1777.28 | ||
| 2000 | 20.95 | 15.5 | 3.43 | 1616.92 | 2000 | 22.29 | 17.52 | 2.79 | 1376.18 | ||
| 2001 | 21.27 | 16.21 | 3.00 | 1733.34 | 2001 | 22.13 | 18.11 | 2.39 | 2020.81 | ||
| 2002 | 21.52 | 16.67 | 3.24 | 2016.65 | 2002 | 22.34 | 18.49 | 2.62 | 2226.16 | ||
| 2003 | 21.97 | 15.9 | 3.69 | 999.48 | 2003 | 22.83 | 18.04 | 2.92 | 1294.56 | ||
| 2004 | 21.62 | 15.3 | 3.31 | 1314.91 | 2004 | 22.21 | 17.42 | 2.76 | 1550.21 | ||
| 2005 | 21.17 | 14.45 | 3.41 | 1793.01 | 2005 | 22.45 | 16.99 | 2.65 | 1554.02 | ||
| 2006 | 21.59 | 14.89 | 3.27 | 1581.86 | 2006 | 22.84 | 17.93 | 2.59 | 1866.02 | ||
| 2007 | 21.79 | 14.36 | 3.28 | 1705.66 | 2007 | 22.74 | 17.05 | 2.48 | 1708.15 | ||
| 2008 | 21.05 | 14.47 | 3.13 | 2085.88 | 2008 | 21.97 | 16.45 | 2.53 | 1893.64 | ||
| 2009 | 22.19 | 14.57 | 3.22 | 1090.47 | 2009 | 22.92 | 17.53 | 2.62 | 1667.23 | ||
| 2010 | 21.44 | 15.52 | 3.06 | 1413.56 | 2010 | 22.29 | 17.63 | 2.49 | 1838.17 | ||
| 2011 | 20.92 | 14.62 | 3.12 | 1199.03 | 2011 | 21.84 | 15.78 | 2.58 | 1371.83 | ||
| 2012 | 20.75 | 14.8 | 2.95 | 1637.79 | 2012 | 21.94 | 18.09 | 2.42 | 2001.22 | ||
| 2013 | 21.63 | 14.61 | 3.07 | 1767.83 | 2013 | 22.34 | 17.98 | 2.5 | 2052.51 | ||
| 2014 | 21.73 | 16.04 | 3.05 | 1877.83 | 2014 | 22.24 | 17.98 | 2.37 | 1942.73 | ||
| 2015 | 21.73 | 16.8 | 3.33 | 2239.57 | 2015 | 22.67 | 18.89 | 2.51 | 2279.5 | ||
| 2016 | 22.11 | 16.28 | 3.45 | 1727.34 | 2016 | 22.65 | 18.6 | 2.52 | 1840.91 | ||
| 2017 | 22 | 16.16 | 3.35 | 1950.58 | 2017 | 22.67 | 18.83 | 2.53 | 2022.33 | ||
| 2018 | 20.02 | 15.43 | 7.02 | 1314.23 | 2018 | 22.47 | 17.99 | 2.59 | 1515.53 | ||
| 2019 | 20.01 | 15.69 | 6.67 | 1662.47 | 2019 | 22.37 | 17.79 | 6.75 | 1764.88 | ||
| 2020 | 20.1 | 16.06 | 7.36 | 1908.49 | 2020 | 22.5 | 17.8 | 6.57 | 1632.76 | ||
| 2021 | 20.83 | 16.34 | 6.9 | 1377.6 | 2021 | 22.67 | 17.41 | 6.17 | 1215.61 | ||
| 2022 | 20.07 | 15.11 | 7.2 | 1622.63 | 2022 | 21.74 | 16.79 | 5.97 | 1793.84 | ||
| 2023 | 20.52 | 16.18 | 6.91 | 1584.36 | 2023 | 21.05 | 17.24 | 5.22 | 1567.2 | ||
| 2024 | 20.15 | 15.38 | 6.89 | 1897.36 | 2024 | 21.54 | 17.56 | 5.84 | 1787.54 |
| Hydrologic Station | Mutation Year | Month | TEMP (°C) | DEWP (°C) | WDSP (m·s−1) | PRCP (mm) | Hydrologic Station | Mutation Year | Month | TEMP (°C) | DEWP (°C) | WDSP (m·s−1) | PRCP (mm) |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Wuxuan | 1994 | 1 | 11.94 | 5.81 | 2.83 | 14.52 | Dahuangjiangkou | 1994 | 1 | 14.41 | 9.29 | 0.84 | 13.56 |
| 1994 | 2 | 11.44 | 7.11 | 3.12 | 40.95 | 1994 | 2 | 14.00 | 10.90 | 1.42 | 56.67 | ||
| 1994 | 3 | 13.92 | 10.00 | 2.31 | 85.37 | 1994 | 3 | 15.34 | 12.54 | 0.85 | 96.00 | ||
| 1994 | 4 | 22.54 | 18.56 | 3.19 | 118.11 | 1994 | 4 | 23.97 | 20.93 | 1.32 | 47.87 | ||
| 1994 | 5 | 26.33 | 21.73 | 3.45 | 317.82 | 1994 | 5 | 26.83 | 22.95 | 1.39 | 367.88 | ||
| 1994 | 6 | 27.19 | 23.12 | 2.82 | 448.70 | 1994 | 6 | 27.09 | 24.22 | 1.57 | 470.71 | ||
| 1994 | 7 | 27.90 | 24.47 | 2.32 | 397.52 | 1994 | 7 | 27.64 | 24.95 | 1.54 | 547.89 | ||
| 1994 | 8 | 27.92 | 24.15 | 2.00 | 573.79 | 1994 | 8 | 27.63 | 24.54 | 1.05 | 431.25 | ||
| 1994 | 9 | 26.39 | 21.00 | 3.08 | 38.72 | 1994 | 9 | 26.70 | 22.92 | 0.94 | 159.37 | ||
| 1994 | 10 | 20.92 | 15.08 | 3.10 | 77.59 | 1994 | 10 | 22.51 | 17.21 | 1.25 | 69.39 | ||
| 1994 | 11 | 19.65 | 13.99 | 2.17 | 17.76 | 1994 | 11 | 20.97 | 15.71 | 0.68 | 27.59 | ||
| 1994 | 12 | 14.25 | 9.68 | 3.29 | 115.67 | 1994 | 12 | 16.14 | 12.82 | 0.83 | 155.27 | ||
| 2013 | 1 | 10.45 | 5.25 | 2.57 | 44.71 | 1997 | 1 | 14.48 | 9.03 | 2.57 | 105.40 | ||
| 2013 | 2 | 14.30 | 10.15 | 2.69 | 55.08 | 1997 | 2 | 14.01 | 10.49 | 2.26 | 65.01 | ||
| 2013 | 3 | 19.67 | 12.94 | 3.06 | 146.97 | 1997 | 3 | 18.29 | 15.31 | 2.65 | 203.12 | ||
| 2013 | 4 | 20.83 | 15.48 | 2.80 | 100.13 | 1997 | 4 | 21.94 | 19.32 | 2.51 | 282.82 | ||
| 2013 | 5 | 25.74 | 20.07 | 3.32 | 237.77 | 1997 | 5 | 25.94 | 22.03 | 3.06 | 283.61 | ||
| 2013 | 6 | 28.09 | 21.51 | 3.45 | 178.88 | 1997 | 6 | 27.33 | 23.98 | 2.72 | 274.42 | ||
| 2013 | 7 | 29.77 | 22.06 | 3.99 | 101.53 | 1997 | 7 | 27.06 | 24.67 | 2.49 | 445.67 | ||
| 2013 | 8 | 29.49 | 22.25 | 3.28 | 410.29 | 1997 | 8 | 28.62 | 24.61 | 2.86 | 237.95 | ||
| 2013 | 9 | 26.49 | 19.31 | 2.98 | 145.22 | 1997 | 9 | 25.30 | 20.88 | 2.67 | 151.42 | ||
| 2013 | 10 | 23.09 | 13.38 | 3.06 | 20.05 | 1997 | 10 | 24.16 | 20.51 | 2.45 | 325.49 | ||
| 2013 | 11 | 19.05 | 10.72 | 2.83 | 231.28 | 1997 | 11 | 19.96 | 14.87 | 2.75 | 17.61 | ||
| 2013 | 12 | 12.13 | 2.07 | 2.74 | 95.93 | 1997 | 12 | 14.97 | 11.49 | 2.78 | 44.85 | ||
| 2017 | 1 | 14.31 | 8.75 | 2.96 | 81.71 | 2017 | 1 | 15.97 | 12.36 | 2.33 | 71.78 | ||
| 2017 | 2 | 14.31 | 7.58 | 3.39 | 23.42 | 2017 | 2 | 16.20 | 10.85 | 2.64 | 29.12 | ||
| 2017 | 3 | 15.37 | 11.79 | 2.94 | 194.58 | 2017 | 3 | 17.14 | 15.26 | 2.32 | 210.13 | ||
| 2017 | 4 | 22.57 | 16.61 | 3.94 | 140.27 | 2017 | 4 | 22.57 | 18.83 | 2.55 | 84.58 | ||
| 2017 | 5 | 25.58 | 19.70 | 3.23 | 365.06 | 2017 | 5 | 25.99 | 22.20 | 2.62 | 232.26 | ||
| 2017 | 6 | 27.55 | 23.41 | 3.39 | 321.54 | 2017 | 6 | 28.17 | 25.40 | 2.71 | 324.15 | ||
| 2017 | 7 | 29.38 | 24.02 | 3.35 | 198.43 | 2017 | 7 | 28.11 | 25.43 | 2.39 | 440.95 | ||
| 2017 | 8 | 29.46 | 24.22 | 3.67 | 328.99 | 2017 | 8 | 28.76 | 25.78 | 2.87 | 308.57 | ||
| 2017 | 9 | 29.36 | 23.62 | 3.24 | 140.82 | 2017 | 9 | 29.28 | 25.42 | 2.59 | 124.72 | ||
| 2017 | 10 | 24.30 | 16.49 | 3.88 | 14.41 | 2017 | 10 | 25.32 | 19.46 | 2.54 | 37.48 | ||
| 2017 | 11 | 17.94 | 12.14 | 3.10 | 97.52 | 2017 | 11 | 19.43 | 16.01 | 2.32 | 116.77 | ||
| 2017 | 12 | 13.46 | 5.14 | 3.10 | 43.83 | 2017 | 12 | 15.12 | 8.93 | 2.55 | 49.69 |
| Hydrological Station | Year | Average Annual Rainfall/mm | Annual Average Net Runoff Depth/mm | Impact of Rainfall | Human Activities | |||
|---|---|---|---|---|---|---|---|---|
| Calculated Value | Measured Value | Change/mm | Contribution Rate % | Change/mm | Contribution Rate % | |||
| Wuxuan Station | 1993–2003 | 1763.87 | 1281.18 | |||||
| 2004–2024 | 1723.80 | 1257.95 | 968.35 | 23.23 | 8.02 | 289.6 | 91.97 | |
| Dahuangjiangkou Station | 1993–2003 | 1876.22 | 1587.91 | |||||
| 2004–2024 | 1785.76 | 1503.2 | 1171.85 | 84.71 | 47.04 | 190.32 | 52.95 | |
| Hydrological Station | Year | Average Annual Rainfall/mm | Annual Average Sediment Transport/10,000 t | Impact of Rainfall | Human Activities | |||
|---|---|---|---|---|---|---|---|---|
| Calculated Value | Measured Value | Change/10,000 t | Contribution Rate % | Change/10,000 t | Contribution Rate % | |||
| Wuxuan Station | 1993–2003 | 1763.87 | 6211.73 | |||||
| 2004–2024 | 1723.80 | 6092.33 | 4645.84 | 119.4 | 9.57 | 1247.07 | 90.43 | |
| Dahuangjiangkou Station | 1993–2003 | 1876.22 | 5994.81 | |||||
| 2004–2024 | 1785.76 | 5277.49 | 3208.97 | 717.32 | 34.67 | 2068.52 | 65.32 | |
| Wuxuan Station | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Factors | Cultivated Land Area | Forest Land Area | Grassland Area | Water Area | Urban and Rural Land Area | Unused Land Area | Population Density | Natural Population Growth Rate | Runoff Change Rate | Runoff Depth |
| Cultivated Land Area | 1.00 | 0.39 | −0.66 | −0.93 | −0.09 | −0.96 | 0.42 | −0.02 | −0.26 | −0.19 |
| Forest Land Area | 0.39 | 1.00 | −0.90 | −0.16 | 0.33 | −0.41 | 0.69 | −0.60 | −0.56 | −0.50 |
| Grassland Area | −0.66 | −0.90 | 1.00 | 0.44 | −0.47 | 0.60 | −0.82 | 0.58 | 0.69 | 0.44 |
| Water Area | −0.93 | −0.16 | 0.44 | 1.00 | 0.25 | 0.94 | −0.20 | −0.05 | −0.01 | 0.16 |
| Urban and Rural Land Area | −0.09 | 0.33 | −0.47 | 0.25 | 1.00 | 0.26 | 0.66 | −0.66 | −0.73 | −0.14 |
| Unused Land Area | −0.96 | −0.41 | 0.60 | 0.94 | 0.26 | 1.00 | −0.32 | 0.04 | 0.13 | 0.27 |
| Population Density | 0.42 | 0.69 | −0.82 | −0.20 | 0.66 | −0.32 | 1.00 | −0.51 | −0.87 | −0.42 |
| Natural Population Growth Rate | −0.02 | −0.60 | 0.58 | −0.05 | −0.66 | 0.04 | −0.51 | 1.00 | 0.45 | 0.34 |
| Runoff Change Rate | −0.26 | −0.56 | 0.69 | −0.01 | −0.73 | 0.13 | −0.87 | 0.45 | 1.00 | 0.30 |
| Runoff Depth | −0.19 | −0.50 | 0.44 | 0.16 | −0.14 | 0.27 | −0.42 | 0.34 | 0.30 | 1.00 |
| Dahuangjiangkou Station | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Factors | Cultivated Land Area | Forest Land Area | Grassland Area | Water Area | Urban and Rural Land Area | Unused Land Area | Population Density | Natural Population Growth Rate | Runoff Change Rate | Runoff Depth |
| Cultivated Land Area | 1.00 | −0.76 | −0.81 | 0.65 | 0.12 | 0.04 | 0.24 | 0.08 | −0.43 | −0.26 |
| Forest Land Area | −0.76 | 1.00 | 0.34 | −0.55 | −0.10 | −0.15 | −0.04 | −0.09 | 0.09 | −0.01 |
| Grassland Area | −0.81 | 0.34 | 1.00 | −0.78 | −0.50 | −0.32 | −0.45 | 0.25 | 0.59 | 0.46 |
| Water Area | 0.65 | −0.55 | −0.78 | 1.00 | 0.78 | 0.72 | 0.46 | −0.44 | −0.40 | −0.25 |
| Urban and Rural Land Area | 0.12 | −0.10 | −0.50 | 0.78 | 1.00 | 0.89 | 0.40 | −0.68 | −0.25 | −0.31 |
| Unused Land Area | 0.04 | −0.15 | −0.32 | 0.72 | 0.89 | 1.00 | 0.32 | −0.54 | −0.15 | −0.12 |
| Population Density | 0.24 | −0.04 | −0.45 | 0.46 | 0.40 | 0.32 | 1.00 | −0.42 | −0.78 | −0.33 |
| Natural Population Growth Rate | 0.08 | −0.09 | 0.25 | −0.44 | −0.68 | −0.54 | −0.42 | 1.00 | 0.22 | 0.27 |
| Runoff Change Rate | −0.43 | 0.09 | 0.59 | −0.40 | −0.25 | −0.15 | −0.78 | 0.22 | 1.00 | 0.37 |
| Runoff Depth | −0.26 | −0.01 | 0.46 | −0.25 | −0.31 | −0.12 | −0.33 | 0.27 | 0.37 | 1.00 |
| Station | Wuxuan Station | Dahuangjiangkou Station | |||||||
|---|---|---|---|---|---|---|---|---|---|
| Measured Data | Predictive Data | Measured Data | Predictive Data | ||||||
| Frequency | Runoff (m3·s−1) | Sediment Transport (104 t) | Runoff (m3·s−1) | Sediment Transport (104 t) | Runoff (m3·s−1) | Sediment Transport (104 t) | Runoff (m3·s−1) | Sediment Transport (104 t) | |
| 0.01 | 66,103.91 | 4224.29 | 63,768.91 | 4030.838 | 97,327.01 | 4425.93 | 95,177.36 | 4548.836 | |
| 0.05 | 59,052.38 | 3854.97 | 56,351.11 | 3859.568 | 88,817.96 | 4015.34 | 86,820.15 | 4344.006 | |
| 0.1 | 55,932.02 | 3688.16 | 53,590.63 | 3656.642 | 84,974.71 | 3830.11 | 83,022.45 | 4030.652 | |
| 0.2 | 52,748.92 | 3515.55 | 50,867.25 | 3510.39 | 80,997.87 | 3638.59 | 79,308.92 | 3678.279 | |
| 0.33 | 50,356.42 | 3384.03 | 48,287.41 | 3348.787 | 77,967.63 | 3492.78 | 76,207.96 | 3498.421 | |
| 0.5 | 48,423.5 | 3276.55 | 46,110.47 | 3217.554 | 75,491.39 | 3373.7 | 73,674.98 | 3373.907 | |
| 1 | 45,040.06 | 3085.54 | 43,154.54 | 2940.79 | 71,090.5 | 3162.24 | 69,388.96 | 3007.00 | |
| 2 | 41,532.56 | 2883.18 | 39,727.8 | 2757.879 | 66,428.17 | 2938.48 | 64,586.01 | 2835.035 | |
| 3.33 | 38,846.21 | 2724.78 | 37,334.44 | 2581.332 | 62,778.66 | 2763.54 | 60,853.24 | 2653.206 | |
| 10 | 32,644.63 | 2345.37 | 30,954.14 | 2240.316 | 54,037.07 | 2345.3 | 52,746.6 | 2257.218 | |
| 20 | 28,251.41 | 2061.91 | 26,980.37 | 1963.772 | 47,506.07 | 2033.65 | 46,533.89 | 1953.134 | |
| 30 | 25,373.96 | 1867.6 | 24,251.48 | 1777.293 | 43,029.37 | 1820.51 | 41,974.66 | 1745.141 | |
| 60 | 19,301.29 | 1426.13 | 18,441.04 | 1364.593 | 32,857.84 | 1337.9 | 32,223.45 | 1281.357 | |
| 80 | 15,579.04 | 1124.17 | 15,817.23 | 1175.201 | 25,900.65 | 1009.39 | 28,701.53 | 1173.599 | |
| 99.99 | 5970.47 | 8.99 | 5668.197 | 8.53684 | 207.22 | 21.31 | 202.0271 | 20.45523 | |
| Frequency | 0.01% | 0.02% | 0.05% | |
|---|---|---|---|---|
| Station | ||||
| Wuxuan Station | Runoff (m3·s−1) | 63,768.91 | 60,731.12 | 56,351.11 |
| Sediment transport (104 t) | 3940.79 | 3804.16 | 3558.55 | |
| Dahuangjiangkou Station | Runoff (m3·s−1) | 95,177.36 | 91,338.93 | 86,820.15 |
| Sediment transport (104 t) | 4407.00 | 4147.65 | 3948.44 |
| Elevation | 0.01% | 0.02% | 0.05% | ||
|---|---|---|---|---|---|
| Frequency | |||||
| Inundation elevation at Wuxuan Station (m) | Before construction | 42.69 | 42.45 | 42.38 | |
| After construction | Upstream | 54.48 | 54.48 | 54.48 | |
| Downstream | 40.13 | 40.09 | 40.03 | ||
| Inundation elevation at Dahuangjiangkou Station (m) | Before construction | 40.53 | 40.42 | 40.34 | |
| After construction | Upstream | 54.46 | 54.46 | 54.46 | |
| Downstream | 39.86 | 39.72 | 39.67 | ||
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Gong, C.; Wang, Y.; Weng, W.; Chen, S.; Guo, X. Research on the Driving Mechanism of Water and Sediment Evolution in the Area of the Datengxia Water Control Hub Project: Principle Analysis, Method Design, and Prediction Simulation. Atmosphere 2026, 17, 217. https://doi.org/10.3390/atmos17020217
Gong C, Wang Y, Weng W, Chen S, Guo X. Research on the Driving Mechanism of Water and Sediment Evolution in the Area of the Datengxia Water Control Hub Project: Principle Analysis, Method Design, and Prediction Simulation. Atmosphere. 2026; 17(2):217. https://doi.org/10.3390/atmos17020217
Chicago/Turabian StyleGong, Chengyong, Yinying Wang, Weitao Weng, Shiming Chen, and Xinyu Guo. 2026. "Research on the Driving Mechanism of Water and Sediment Evolution in the Area of the Datengxia Water Control Hub Project: Principle Analysis, Method Design, and Prediction Simulation" Atmosphere 17, no. 2: 217. https://doi.org/10.3390/atmos17020217
APA StyleGong, C., Wang, Y., Weng, W., Chen, S., & Guo, X. (2026). Research on the Driving Mechanism of Water and Sediment Evolution in the Area of the Datengxia Water Control Hub Project: Principle Analysis, Method Design, and Prediction Simulation. Atmosphere, 17(2), 217. https://doi.org/10.3390/atmos17020217

