Identification and Spatiotemporal Migration Analysis of Groundwater Drought Events in the North China Plain
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Collection
2.2.1. Gravity Recovery and Climate Experiment (GRACE)
2.2.2. Global Land Data Assimilation System (GLDAS)
2.3. Methods
2.3.1. GGDI
2.3.2. Groundwater Drought Event Identification
- (1)
- Drought grid identification
- (2)
- Identification of the spatial continuity of drought events
- (3)
- Identification of the temporal continuity of drought events
- (4)
- Identification of the spatiotemporal continuity of drought events
2.3.3. Construction of the Drought Migration Model (DMM)
- (1)
- Determination of groundwater drought events
- (2)
- Determination of the locations of groundwater drought centroids
- (3)
- Connecting the groundwater drought centroids
- (4)
- Calculation of the groundwater drought intensities
3. Results
3.1. GRACE Data Validation
3.2. Quantitative Assessment of Groundwater Drought Events
3.3. Groundwater Drought Event Identification
3.4. Characteristics of the Groundwater Drought Centroid Migration
- (1)
- DE.49
- (2)
- DE.29
- (3)
- DE.46
4. Discussion
5. Conclusions
- (1)
- The validation results of the GRACE data showed significant Pearson correlation coefficients (p < 0.01) between the changes in the GRACE- and GLDAS-based water storage in the NCP and its geomorphological areas, ranging from 0.322 to 0.552. Therefore, the GRACE-based results were reliable and could be used to effectively investigate groundwater drought events in the NCP.
- (2)
- The groundwater drought frequencies in the NCP, Area I, Area II, and Area III over the 2003–2020 period were 24.54, 26.39, 24.54, and 23.61%, respectively. Although Area I showed a higher groundwater drought frequency than the other sub-areas, mild and moderate groundwater drought events were the most prevalent. In addition, Area II showed a high frequency of moderate groundwater drought events, but its severe and extreme groundwater drought frequencies were relatively higher than those in the other sub-areas.
- (3)
- According to the new identification principle for groundwater drought events, 49 groundwater drought events were identified in the NCP over the 2003–2020 period. The maximum duration of drought was 31 months and the minimum was 1 month. Drought events with a drought duration of 1 month were the most frequent, accounting for 46.94% of the total number of drought events, followed by those with a drought duration of 2 months, accounting for 26.53% of the total. Drought events with a drought duration of 8 or 31 months were the least frequent, both accounting for 2.04% of the total. The obtained results indicated that DE.49 was the most severe groundwater drought event, with a drought intensity, duration, and grid number of 38.17, 31 months, and 221, respectively. Meanwhile, DE.29 was the second most intense groundwater drought event, with a drought intensity, duration, and grid number of 11.53, 14 months, and 167, respectively.
- (4)
- A total of 11 groundwater drought events were selected from the 49 drought events to construct a drought migration model. The migration direction of 10 of the groundwater drought events was southwest–northeast, which was in line with the slope of the NCP. However, only DE.41 exhibited a southeast–northwest migration direction. The centroids of the groundwater drought events were mostly concentrated in Area II. The three groundwater drought events with the highest drought intensities were DE.49, DE.29, and DE.46. According to the obtained results, the highest drought intensities of DE.49 were observed mainly in the March 2020–December 2020 period, in which the drought center of gravity was concentrated in Area II, whereas the highest groundwater intensities of DE.29 were concentrated over the 4th–9th month period, in which the drought center of gravity was concentrated in the northeastern coastal area of the NCP. The lowest drought intensities of DE.46 were in the September 2016-November 2016 period, showing a drought center of gravity in Area II. On the other hand, the results indicated a lack of correlation between the drought intensities and drought grid numbers of DE.49, DE.29, and DE.46.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Area | Pearson Correlation Coefficient |
---|---|
Area Ⅰ | 0.322 ** |
Area Ⅱ | 0.552 ** |
Area Ⅲ | 0.487 ** |
NCP | 0.527 ** |
Area | Uncertainty (mm/month) |
---|---|
Area Ⅰ | 11.51 |
Area Ⅱ | 15.11 |
Area Ⅲ | 7.96 |
NCP | 13.44 |
Area | Decline Rate (mm/Month) |
---|---|
Area Ⅰ | 0.0578 |
Area Ⅱ | 0.0620 |
Area Ⅲ | 0.0452 |
NCP | 0.0590 |
Drought Event | Occurrence Time | Drought Duration (Months) | Monthly Average Minimum GGDI | Monthly Maximum Drought Grid Number | Drought Intensity |
---|---|---|---|---|---|
1 | 2003.01–2003.04 | 4 | −1.14 | 14 | 1.84 |
7 | 2005.06–2005.12 | 7 | −1.57 | 8 | 4.41 |
9 | 2006.02–2006.06 | 5 | −1.55 | 8 | 3.08 |
24 | 2011.10–2012.04 | 7 | −0.87 | 155 | 0.88 |
29 | 2012.08–2013.09 | 14 | −2.47 | 167 | 11.53 |
41 | 2014.08–2014.11 | 4 | −1.03 | 67 | 1.24 |
43 | 2015.01–2015.05 | 5 | −1.25 | 203 | 2.50 |
45 | 2015.12–2016.03 | 4 | −1.29 | 213 | 2.17 |
46 | 2016.05–2017.06 | 14 | −1.42 | 216 | 6.67 |
48 | 2017.09–2018.04 | 8 | −0.96 | 9 | 2.36 |
49 | 2018.06–2020.12 | 31 | −3.12 | 221 | 38.17 |
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Huang, J.; Cao, L.; Wang, L.; Liu, L.; Yu, B.; Han, L. Identification and Spatiotemporal Migration Analysis of Groundwater Drought Events in the North China Plain. Atmosphere 2023, 14, 961. https://doi.org/10.3390/atmos14060961
Huang J, Cao L, Wang L, Liu L, Yu B, Han L. Identification and Spatiotemporal Migration Analysis of Groundwater Drought Events in the North China Plain. Atmosphere. 2023; 14(6):961. https://doi.org/10.3390/atmos14060961
Chicago/Turabian StyleHuang, Jia, Lianhai Cao, Lei Wang, Liwei Liu, Baobao Yu, and Long Han. 2023. "Identification and Spatiotemporal Migration Analysis of Groundwater Drought Events in the North China Plain" Atmosphere 14, no. 6: 961. https://doi.org/10.3390/atmos14060961
APA StyleHuang, J., Cao, L., Wang, L., Liu, L., Yu, B., & Han, L. (2023). Identification and Spatiotemporal Migration Analysis of Groundwater Drought Events in the North China Plain. Atmosphere, 14(6), 961. https://doi.org/10.3390/atmos14060961