Recognition of Severe Convective Cloud Based on the Cloud Image Prediction Sequence from FY-4A
Abstract
:1. Introduction
2. Study Area and Data
2.1. Study Area
2.2. FY-4A Data
2.3. Data Preprocessing
2.3.1. Geometric Correction
2.3.2. Radiometric Calibration
2.3.3. Data Normalization
3. Method
3.1. The Proposed ARRU-Net Model
3.1.1. Attention Mechanism
3.1.2. Recurrent Convolutional Block
3.1.3. Residual Connection
3.2. Severe Convective Cloud Label-Making Method
3.2.1. Analyze Spectral features
3.2.2. Extract Texture Features
3.2.3. Image Binarization
3.2.4. Closed Operations and Intersection Operations
- (1)
- A closed operation was carried out on the preliminary recognition results of severe convection by TBB9, TBB9−TBB12, and TBB12−TBB13, as shown in Figure 10.
- (2)
3.3. Model Performance Evaluation Method
3.3.1. Model Performance Evaluation of Cloud Image Prediction
3.3.2. Model Performance Evaluation of Recognition of Severe Convective Cloud
4. Results
4.1. Cloud Image Prediction
4.1.1. Training
4.1.2. Comparison of Cloud Image Prediction Models
4.2. Recognition of Severe Convective Cloud Based on Cloud Image Prediction Sequence
4.2.1. Training
4.2.2. Comparison of Recognition of Severe Convective Cloud Based on the Cloud Image Prediction Sequence
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Channel Type | Central Wavelength | Spectral Bandwidth | Spatial Resolution | Main Applications |
---|---|---|---|---|
VIS/NIR | 0.47 µm | 0.45–0.49 µm | 1 km | Aerosol, visibility |
0.65 µm | 0.55–0.75 µm | 0.5 km | Fog, clouds | |
0.825 µm | 0.75–0.90 µm | 1 km | Aerosol, vegetation | |
Shortwave IR | 1.375 µm | 1.36–1.39 µm | 2 km | Cirrus |
1.61 µm | 1.58–1.64 µm | 2 km | Cloud, snow | |
2.25 µm | 2.1–2.35 µm | 2km | Cloud phase, aerosol, vegetation | |
Midwave IR | 3.75 µm | 3.5–4.0 µm | 2 km | Clouds, fire, moisture, snow |
3.75 µm | 3.5–4.0µm | 4 km | Land surface | |
Water vapor | 6.25 µm | 3.5–4.0 µm | 2 km | Upper-level WV |
7.1 µm | 3.5–4.0µm | 4 km | Midlevel WV | |
Longwave IR | 8.5 µm | 8.0–9.0 µm | 4 km | Volcanic, ash, cloud top, phase |
10.7 µm | 3.5–4.0 µm | 4 km | SST, LST | |
12.0 µm | 3.5–4.0 µm | 4 km | Clouds, low-level WV | |
13.5 µm | 3.5–4.0 µm | 4 km | Clouds, air temperature |
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Chen, Q.; Yin, X.; Li, Y.; Zheng, P.; Chen, M.; Xu, Q. Recognition of Severe Convective Cloud Based on the Cloud Image Prediction Sequence from FY-4A. Remote Sens. 2023, 15, 4612. https://doi.org/10.3390/rs15184612
Chen Q, Yin X, Li Y, Zheng P, Chen M, Xu Q. Recognition of Severe Convective Cloud Based on the Cloud Image Prediction Sequence from FY-4A. Remote Sensing. 2023; 15(18):4612. https://doi.org/10.3390/rs15184612
Chicago/Turabian StyleChen, Qi, Xiaobin Yin, Yan Li, Peinan Zheng, Miao Chen, and Qing Xu. 2023. "Recognition of Severe Convective Cloud Based on the Cloud Image Prediction Sequence from FY-4A" Remote Sensing 15, no. 18: 4612. https://doi.org/10.3390/rs15184612
APA StyleChen, Q., Yin, X., Li, Y., Zheng, P., Chen, M., & Xu, Q. (2023). Recognition of Severe Convective Cloud Based on the Cloud Image Prediction Sequence from FY-4A. Remote Sensing, 15(18), 4612. https://doi.org/10.3390/rs15184612