Agricultural Drought Assessment in a Typical Plain Region Based on Coupled Hydrology–Crop Growth Model and Remote Sensing Data
Abstract
:1. Introduction
- (1)
- Remote sensing inversion
- (2)
- Crop growth model based on remote sensing data
- (3)
- Coupled hydrological crop-growth model
2. Methodology
2.1. Framework of the VIC-EPIC Model
2.2. CWAPI
2.3. Validation Method
2.4. Study Area and Data
3. Results
3.1. Validation Based on Soil Moisture
3.2. Validation Based on the Drought Record
4. Discussion
4.1. Temporal and Spatial Variation Process of Large-Scale Drought
4.1.1. Analysis of the Change Process in the Drought Grade Area and Typical Prefecture-Level Drought Index
4.1.2. Analysis of Changes in Spatial Distribution of Large-Scale Drought Levels
5. Conclusions
- (1)
- A VIC-EPIC model was constructed in Jiangsu Province, and the simulation results of the VIC-EPIC model and evaluation results of the CWAPI drought index were verified. The soil moisture results of the VIC-EPIC model were verified using 99 moisture-site data. The average correlation coefficients between the soil moisture of the simulation and observation at the 25% soil moisture stations were greater than 0.60, indicating that the simulation results of the VIC-EPIC model were very reasonable.
- (2)
- The correlation coefficients (0.79 and 0.82) between the statistical values of the drought-related area rate and light and moderate drought area rate calculated based on CWAPI were greater than those (0.72 and 0.81) for SMAPI. The drought characteristic values based on CWAPI showed better agreement with the more severe drought events recorded. The drought results based on the VIC-EPIC model simulation were reasonable and feasible, and CWAPI could reflect agricultural drought characteristics more reasonably at a regional level.
- (3)
- The drought reflected by CWAPI in Jiangsu Province during November of 2019 was much more severe than that during May, which was consistent with the data regarding the actual drought-affected area, while the drought reflected by SMAPI was the opposite. The drought-affected area rate of Huai’an, Xuzhou, and Lianyungang in 2019 was 24%, 11%, and 5%, respectively. The CWAPI simulation results were consistent with the statistical results of the 2019 drought-affected area rate. Therefore, the CWAPI can reveal the drought characteristics with greater reliability.
- (4)
- In the large-scale drought of 2000, the severity of soil drought was significantly greater than that of crop drought because the crop drought simulation was more influenced by irrigation; the spatial and temporal trends of soil drought and crop drought in 2000 were similar.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Drought Levels | CWAPI/% | |
---|---|---|
Other Growth Stages | Critical Period of Crop Water Demand | |
Light drought | (−10, −30] | (−5, −25] |
Moderate drought | (−30, −40] | (−25, −35] |
Severe drought | (−40, −45] | (−35, −40] |
Extremely drought | (−45, −∞) | (−40, −∞) |
SMAPI | Grade | SMAPI | Grade |
---|---|---|---|
SMAPI ≤ −25% | Extreme drought | 5% < SMAPI ≤ 10% | Light flood |
−25% < SMAPI ≤ −20% | Severe drought | 10% < SMAPI ≤ 15% | Moderate flood |
−20% < SMAPI ≤ −15% | Moderate drought | 15% < SMAPI ≤ 25% | Severe flood |
−15% < SMAPI ≤ −5% | Light drought | SMAPI > 25% | Extreme flood |
−5% < SMAPI ≤ 5% | Normal state |
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Zhang, Y.; Wu, Z.; Singh, V.P.; Jin, J.; Zhou, Y.; Xu, S.; Li, L. Agricultural Drought Assessment in a Typical Plain Region Based on Coupled Hydrology–Crop Growth Model and Remote Sensing Data. Remote Sens. 2022, 14, 5994. https://doi.org/10.3390/rs14235994
Zhang Y, Wu Z, Singh VP, Jin J, Zhou Y, Xu S, Li L. Agricultural Drought Assessment in a Typical Plain Region Based on Coupled Hydrology–Crop Growth Model and Remote Sensing Data. Remote Sensing. 2022; 14(23):5994. https://doi.org/10.3390/rs14235994
Chicago/Turabian StyleZhang, Yuliang, Zhiyong Wu, Vijay P. Singh, Juliang Jin, Yuliang Zhou, Shiqin Xu, and Lei Li. 2022. "Agricultural Drought Assessment in a Typical Plain Region Based on Coupled Hydrology–Crop Growth Model and Remote Sensing Data" Remote Sensing 14, no. 23: 5994. https://doi.org/10.3390/rs14235994
APA StyleZhang, Y., Wu, Z., Singh, V. P., Jin, J., Zhou, Y., Xu, S., & Li, L. (2022). Agricultural Drought Assessment in a Typical Plain Region Based on Coupled Hydrology–Crop Growth Model and Remote Sensing Data. Remote Sensing, 14(23), 5994. https://doi.org/10.3390/rs14235994