Application of FY Satellite Data in Precipitation of Eastward-Moving Southwest China Vortex: A Case Study of Precipitation in Zhejiang Province
Abstract
:1. Introduction
2. Materials and Methods
3. Application of FY-2F Satellite Data
3.1. Spatial Differences in Precipitation
3.2. Discrimination of Precipitation Cloud Types
3.3. Quantitative Precipitation Application
4. Conclusions
- The variations in the intensity and position of the eastward-moving SWV often result in significant differences in precipitation intensity and distribution. Localized precipitation dominates in the SWV that affects Zhejiang, resulting in heavy rainfall and long duration. The SWV with convective precipitation as the main type often has multiple precipitation centers. The stronger the southwest vortex, the stronger and wider the development of convective clouds near the center, with stratiform or stratocumulus clouds dominating in the periphery. The center and southeast quadrant of the vortex are dominated by cumulonimbus and dense cirrus clouds, with high cloud-top heights and heavy precipitation, mainly in the form of convective precipitation. Other quadrants are dominated by stratiform or stratocumulus clouds, resulting in stable precipitation with lower rainfall amounts.
- The infrared brightness temperature threshold method can effectively identify cloud types within the SWV, providing an important reference for precipitation forecasting. When the TBB is below −70 °C (indicating deep convective clouds), both the forecast and observations indicate severe rainstorms. When the TBB is between −70 °C and −50 °C (indicating convective clouds), both the forecast and observations indicate heavy rainfall. Therefore, the TBB threshold method shows good predictive performance for forecasting moderate rain, heavy rain, and extremely heavy rain, based on the classification of thick cloud, convective cloud, and deep convective cloud. However, it tends to overestimate the precipitation for mixed clouds (forecasting heavy rain as severe rain) and underestimate the precipitation for stratiform clouds (forecasting moderate rain as light rain).
- There are significant differences in precipitation amounts produced by different cloud types, but a rough estimation can be made through a combination of qualitative and quantitative analysis. The different cloud types classified based on the TBB threshold show significant differences in precipitation within Zhejiang province. It is challenging to accurately forecast short-term precipitation. Deep convective clouds have the largest dispersion, with an average precipitation of 11 mm and 30 mm for 1 h and 3 h periods, respectively. Estimating short-term precipitation for different processes requires the use of other precipitation observation products for comprehensive analysis. Stratiform clouds have the smallest dispersion and the least precipitation, with the least variability. Under the assumption that cloud systems remain unchanged in the short term, the precipitation amounts produced by different cloud types can be roughly estimated.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Cloud Types Classified by TBB | Stratiform Clouds | Deep Stratiform Clouds | Mixed Clouds | Weak Convective Clouds | Convective Clouds | Deep Convective Clouds |
---|---|---|---|---|---|---|
Precipitation | Light rain | Moderate rain | Heavy rain | Heavy rain | Downpour | Heavy downpour |
1 h precipitation | 0.5 | 0.8 | 0.9 | 1.3 | 3.0 | 11.0 |
3 h precipitation | 1.7 | 2.5 | 2.7 | 4.0 | 8.4 | 30.0 |
TBB | Stratiform Clouds | Deep Stratiform Clouds | Mixed Clouds | Weak Convective Clouds | Convective Clouds | Deep Convective Clouds |
104,847 (18.85%) | 139,912 (25.15%) | 173,639 (31.24%) | 103,496 (18.66%) | 33,688 (6.08%) | 119 (0.02%) | |
CLC | Mixed Clouds | Stratiform Clouds | Cs | Ci Dens | Cb | Sc |
11,747 (3.84%) | 71,934 (23.52%) | 60,617 (19.82%) | 23,474 (7.67%) | 7564 (2.47%) | 130,567 (42.68%) |
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Mao, C.; Qing, Y.; Qian, Z.; Zhang, C.; Gu, Z.; Gong, L.; Liao, J.; Li, H. Application of FY Satellite Data in Precipitation of Eastward-Moving Southwest China Vortex: A Case Study of Precipitation in Zhejiang Province. Atmosphere 2023, 14, 1664. https://doi.org/10.3390/atmos14111664
Mao C, Qing Y, Qian Z, Zhang C, Gu Z, Gong L, Liao J, Li H. Application of FY Satellite Data in Precipitation of Eastward-Moving Southwest China Vortex: A Case Study of Precipitation in Zhejiang Province. Atmosphere. 2023; 14(11):1664. https://doi.org/10.3390/atmos14111664
Chicago/Turabian StyleMao, Chengyan, Yiyu Qing, Zhitong Qian, Chao Zhang, Zhenhai Gu, Liqing Gong, Junyu Liao, and Haowen Li. 2023. "Application of FY Satellite Data in Precipitation of Eastward-Moving Southwest China Vortex: A Case Study of Precipitation in Zhejiang Province" Atmosphere 14, no. 11: 1664. https://doi.org/10.3390/atmos14111664
APA StyleMao, C., Qing, Y., Qian, Z., Zhang, C., Gu, Z., Gong, L., Liao, J., & Li, H. (2023). Application of FY Satellite Data in Precipitation of Eastward-Moving Southwest China Vortex: A Case Study of Precipitation in Zhejiang Province. Atmosphere, 14(11), 1664. https://doi.org/10.3390/atmos14111664