Regional Temporal and Spatial Trends in Drought and Flood Disasters in China and Assessment of Economic Losses in Recent Years
Abstract
:1. Introduction
2. Data and Methods
2.1. Data
2.2. Methods
2.2.1. Drought Indicators
2.2.2. Extreme Precipitation Indicator
2.3. Estimation Method
2.4. Analysis Methods
2.4.1. Empirical Orthogonal Function (EOF)
2.4.2. Mann–Kendall Test
2.5. Correlation Analysis
3. Results
3.1. Trends in Drought and Extreme Precipitation
3.1.1. Drought Trend
3.1.2. Extreme Precipitation
3.1.3. Drought and Extreme Precipitation
3.1.4. Annual Average Precipitation Trends in Subarea
3.2. Correlation Analysis
3.3. Disaster Analysis
3.3.1. Spatial and Temporal Distributions of Drought Losses
3.3.2. Spatial and Temporal Distributions of Flood Losses
4. Summary and Discussion
- (1)
- 34.5% and 51.7% of all the stations over China have an increasing tendency in drought and flood, respectively.
- (2)
- Special climate phenomena have been observed in the Yangtze River Basin due to its special circulation characteristics and geographical location. Meteorological disasters have occurred frequently in recent years in the basin, where the frequency of both drought and extreme precipitation has increased (Figure 4).
- (3)
- A comparison of the drought trend distribution (Figure 2b) and drought damaged areas (Figure 7) shows that the drought damaged areas were relatively severe in the north of East China and Central China, and drought will increase in these areas. Therefore, it is necessary to increase defense and control measures to prevent drought disasters in these regions.
- (4)
- A comparison of the extreme precipitation trend distribution (Figure 3b) and flood-damaged areas (Figure 10) shows that flood-damaged areas were relatively severe in the southern part of East China, and extreme precipitation also tend to increase in most of this area. Therefore, it is necessary to increase defense and control measures to prevent flood disasters in this region.
- (5)
- Northeast China has been greatly affected by drought, but the drought trend is weakening (Figure 2), whereas extreme precipitation (Figure 3) has tended to increase. Thus, extreme precipitation has shifted to the north with less drought, and the frequency of extreme precipitation may increase. However, the north of East China and Central China have been affected by severe floods, but the drought trend is increasing (Figure 2) and extreme precipitation (Figure 3) is decreasing, indicating that drought is shifting to the south with fewer floods, but there is the possibility of more severe drought.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Subregion | Slope |
---|---|
Northeast China | 0.76237 |
North China | 0.099367 |
East China | 2.5051 |
South China | 1.5635 |
Central China | 1.5194 |
Northwest China | 1.1433 |
Southwest China | 0.075235 |
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Chou, J.; Xian, T.; Dong, W.; Xu, Y. Regional Temporal and Spatial Trends in Drought and Flood Disasters in China and Assessment of Economic Losses in Recent Years. Sustainability 2019, 11, 55. https://doi.org/10.3390/su11010055
Chou J, Xian T, Dong W, Xu Y. Regional Temporal and Spatial Trends in Drought and Flood Disasters in China and Assessment of Economic Losses in Recent Years. Sustainability. 2019; 11(1):55. https://doi.org/10.3390/su11010055
Chicago/Turabian StyleChou, Jieming, Tian Xian, Wenjie Dong, and Yuan Xu. 2019. "Regional Temporal and Spatial Trends in Drought and Flood Disasters in China and Assessment of Economic Losses in Recent Years" Sustainability 11, no. 1: 55. https://doi.org/10.3390/su11010055
APA StyleChou, J., Xian, T., Dong, W., & Xu, Y. (2019). Regional Temporal and Spatial Trends in Drought and Flood Disasters in China and Assessment of Economic Losses in Recent Years. Sustainability, 11(1), 55. https://doi.org/10.3390/su11010055