Study on Hydrological–Meteorological Response in the Upper Yellow River Based on 100-Year Series Reconstruction
Abstract
1. Introduction
2. Materials and Methods
2.1. Research Data
2.2. Research Methods
2.2.1. Precipitation Element Series Extension Method
VSSL Method Based on Deep Learning Framework
- (1)
- Variational mode decomposition
- (2)
- Sparrow search algorithm
- (3)
- Long Short-Term Memory
Traditional Linear Fitting Method
2.2.2. Runoff Element Series Extension Method
SSVR Method Based on Machine Learning Framework
Traditional Fixed Ratio Method
2.2.3. Precipitation and Runoff Element Characteristics Analysis Method
Trend Analysis Method
Variability Analysis Method
Periodic Analysis Method
2.2.4. Precipitation and Runoff Element Correlation Analysis Method
3. Results
3.1. Extension Results of Precipitation and Runoff Element Series
3.1.1. Extension Results of Machine Learning and Deep Learning Methods
3.1.2. Extension Results of Traditional Statistical Method
3.1.3. Comparison and Analysis Results of Extension Results of Precipitation and Runoff Series
3.2. Analysis Results of Characteristics and Response Relationship of Precipitation and Runoff Elements
3.2.1. Trend Analysis Results and Response Relationship Study
3.2.2. Variability Analysis Results and Response Relationship Study
3.2.3. Periodic Analysis Results and Response Relationship Study
3.3. Correlation Analysis Results of Precipitation and Runoff Elements and Response Relationship Research
4. Discussion
- (1)
- Impact of historical data quality on reconstruction results
- (2)
- Regional generalizability of research results
- (3)
- Impact of non-stationarity on the model
- (4)
- Model’s ability to capture extreme events
- (5)
- Omission of physical hydrological processes
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
VSSL | LSTM Fusion Method Optimized by SSA with VMD Decomposition |
SSVR | SVR Fusion Method Optimized by SSA |
DA | Data Assimilation |
DL | Deep Learning |
DA(DL) | Data Assimilation Method Based on Deep Learning |
MDL | Minimum Description Length |
PiLSTM | Pyramidal Long Short-Term Memory |
LSTM | Long Short-Term Memory |
VMD | Variational Mode Decomposition |
SSA | Sparrow Search Algorithm |
MSE | Mean Square Error |
RNN | Recurrent Neural Network |
SVR | Support Vector Regression |
M-K | Mann–Kendall |
RMSE | Root Mean Square Error |
MAE | Mean Absolute Error |
R2 | Coefficient of Determination |
PDO | Pacific Decadal Oscillation |
NDVI | Normalized Difference Vegetation Index |
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Data Time | Data Type | Source of Data |
---|---|---|
1956–2020 | Annual precipitation, return runoff and restored runoff | Hydrological Bureau of the Yellow River Water Resources Commission |
1921–1955 | Restored runoff | Yellow River Water Conservancy Commission |
Elements | Methods | RMSE | MAE | R2 |
---|---|---|---|---|
Precipitation | Traditional linear fitting method | 25.24 | 19.85 | 0.59 |
VSSL | 16.87 | 12.60 | 0.82 | |
Runoff | Traditional fixed ratio method | 6.18 | 4.29 | 0.87 |
SSAR | 0.60 | 0.02 | 0.96 |
Elements | Un | β | Significance | Trend |
---|---|---|---|---|
Precipitation | 1.31 | 0.26 | Insignificant | Rising |
Runoff | 1.11 | 0.42 | Insignificant | Rising |
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He, X.; He, X.; Gao, Y.; Li, F. Study on Hydrological–Meteorological Response in the Upper Yellow River Based on 100-Year Series Reconstruction. Water 2025, 17, 2223. https://doi.org/10.3390/w17152223
He X, He X, Gao Y, Li F. Study on Hydrological–Meteorological Response in the Upper Yellow River Based on 100-Year Series Reconstruction. Water. 2025; 17(15):2223. https://doi.org/10.3390/w17152223
Chicago/Turabian StyleHe, Xiaohui, Xiaoyu He, Yajun Gao, and Fanchao Li. 2025. "Study on Hydrological–Meteorological Response in the Upper Yellow River Based on 100-Year Series Reconstruction" Water 17, no. 15: 2223. https://doi.org/10.3390/w17152223
APA StyleHe, X., He, X., Gao, Y., & Li, F. (2025). Study on Hydrological–Meteorological Response in the Upper Yellow River Based on 100-Year Series Reconstruction. Water, 17(15), 2223. https://doi.org/10.3390/w17152223