Precipitation Changes and Future Trend Predictions in Typical Basin of the Loess Plateau, China
Abstract
1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Sources
2.3. Methodology for Calculating Ecological Building Potential
- 1.
- Analysis of Precipitation Change Characteristics
- 2.
- Future Precipitation Change Patterns and Trends
3. Results and Analyses
3.1. Intra-Annual Variation Characteristics of Precipitation
3.2. Interannual Variation Characteristics of Precipitation
3.3. Extreme Rainfall Analysis
3.4. Future Variation Characteristics of Precipitation
4. Discussion
4.1. Causes of Recent Changes in Precipitation
4.2. Causes of Future Changes in Precipitation
4.3. Discussion of Uncertainty
5. Conclusions
- (1) Precipitation in the Kuye River Basin is primarily concentrated during the summer months (July–August) and the flood season (May–October). These two months account for 49.23% of the annual precipitation, while the flood season contributes a substantial 88.16%. In contrast, winter months (December–January) experience the least precipitation, comprising only 1.07% of the annual total, reflecting the pronounced influence of the continental monsoon climate.
- (2) The multi-year average precipitation is 445 mm, characterized by relatively low interannual variability (coefficient of variation, Cv = 0.27), and exhibits an overall fluctuating upward trend. Notably, the year 2006 marked a regime shift in precipitation, after which a significant increase was observed, largely driven by natural phenomena (e.g., El Niño) and anthropogenic activities (e.g., soil and water conservation efforts).
- (3) From 2023 to 2052, the multi-year average precipitation is projected to reach 524.69 mm, indicating a general upward trend. The coefficient of variation (Cv) for interannual variability is expected to decrease to 0.24, suggesting limited fluctuations. The year 2043 is identified as a potential point for a future precipitation regime shift, beyond which an increase in precipitation is anticipated. Spatially, precipitation is expected to exhibit a pattern of decreasing amounts in the northwest and increasing amounts in the southeast.
- (4) The changes in precipitation are influenced by multiple factors, including climate change scenarios, the stability of the basin’s hydrological characteristics, topography, and anthropogenic activities such as soil and water conservation efforts. Among these, climatic factors are identified as the predominant influence, serving as the key driver of alterations in precipitation patterns throughout the basin. Moreover, human activities, particularly soil and water conservation measures, have a positive impact on enhancing local microclimates within the basin.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Climate Model | Emission Scenario | Multi-Year Average Precipitation/mm | Absolute Error/mm | Percentage Bias/% |
---|---|---|---|---|
HadGEm3-RA | RCP4.5 | 513.10 | 6.73 | 1.33% |
RCP8.5 | 511.65 | 5.28 | 1.04% | |
YSU-RSM | RCP4.5 | 468.40 | 37.97 | 7.50% |
RCP8.5 | 437.01 | 69.36 | 13.70% | |
SNU-MM5 | RCP4.5 | 346.40 | 159.97 | 31.59% |
RCP8.5 | 256.21 | 250.15 | 49.40% | |
RegCM | RCP4.5 | 487.96 | 18.41 | 3.64% |
RCP8.5 | 442.01 | 64.36 | 12.71% | |
Observed Value | / | 506.37 | / | / |
Month | Average Precipitation/mm | Proportion | Period | Average Precipitation/mm | Proportion |
---|---|---|---|---|---|
1 | 2.38 | 0.53% | Spring | 64.68 | 14.53% |
2 | 3.84 | 0.86% | Summer | 269.8 | 60.62% |
3 | 10.15 | 2.28% | Autumn | 101.89 | 22.89% |
4 | 23.13 | 5.20% | Winter | 8.69 | 1.95% |
5 | 31.41 | 7.06% | Wet Season | 392.1159 | 88.16% |
6 | 50.72 | 11.4% | Dry Season | 52.6585 | 11.84% |
7 | 106.54 | 23.94% | |||
8 | 112.54 | 25.29% | |||
9 | 63.05 | 14.17% | |||
10 | 27.85 | 6.26% | |||
11 | 10.98 | 2.47% | |||
12 | 2.41 | 0.54% |
Rainfall | Rainfall Type | Number of Days |
---|---|---|
<10 mm | Light rain | 22,661 |
10–25 mm | Moderate rain | 522 |
25–50 mm | Heavy rain | 153 |
50–100 mm | Torrential rain | 38 |
100–250 mm | Extreme torrential rain | 2 |
>250 | Extreme heavy rain | 0 |
Land-Use Types | 2015 | Total | ||||||
---|---|---|---|---|---|---|---|---|
Cropland | Forest Land | Grass Land | Watershed | Construction Land | Unused Land | |||
1980 | Cropland | 1344.66 | 66.00 | 197.70 | 5.49 | 105.10 | 4.67 | 1723.60 |
Forest land | 3.02 | 312.67 | 37.09 | 2.27 | 26.40 | 1.53 | 382.99 | |
Grass land | 94.99 | 74.40 | 4787.52 | 6.55 | 373.37 | 62.03 | 5398.84 | |
Watershed | 3.73 | 8.14 | 19.71 | 194.06 | 28.88 | 7.33 | 261.86 | |
Construction land | 0.39 | 0.20 | 2.59 | 0.09 | 77.71 | 0.10 | 81.09 | |
Unused land | 21.63 | 15.43 | 393.41 | 2.47 | 38.93 | 389.66 | 861.52 | |
Total | 1468.43 | 476.83 | 5438.01 | 210.93 | 650.39 | 465.32 | 8709.91 |
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Liu, B.; Liu, Q.; Li, P.; Li, Z.; Guo, J.; Ma, J.; Wang, B.; Liu, X. Precipitation Changes and Future Trend Predictions in Typical Basin of the Loess Plateau, China. Sustainability 2025, 17, 6267. https://doi.org/10.3390/su17146267
Liu B, Liu Q, Li P, Li Z, Guo J, Ma J, Wang B, Liu X. Precipitation Changes and Future Trend Predictions in Typical Basin of the Loess Plateau, China. Sustainability. 2025; 17(14):6267. https://doi.org/10.3390/su17146267
Chicago/Turabian StyleLiu, Beilei, Qi Liu, Peng Li, Zhanbin Li, Jiajia Guo, Jianye Ma, Bo Wang, and Xiaohuang Liu. 2025. "Precipitation Changes and Future Trend Predictions in Typical Basin of the Loess Plateau, China" Sustainability 17, no. 14: 6267. https://doi.org/10.3390/su17146267
APA StyleLiu, B., Liu, Q., Li, P., Li, Z., Guo, J., Ma, J., Wang, B., & Liu, X. (2025). Precipitation Changes and Future Trend Predictions in Typical Basin of the Loess Plateau, China. Sustainability, 17(14), 6267. https://doi.org/10.3390/su17146267