The Potential of Satellite Sounding Observations for Deriving Atmospheric Wind in All-Weather Conditions
Abstract
:1. Introduction
2. Materials and Methods
2.1. Nature Runs
2.2. Simulated MWHS Brightness Temperature Data
2.3. Farneback OF Wind Track Algorithm
2.4. Quality Control Strategy
3. Results and Discussion
3.1. AMVs Sensitivity to FOV Sizes at Various Heights
3.2. AMVs Sensitivity to Satellite Revisiting Time at Various Heights
3.3. Analysis of AMVs Error and Algorithm Requirements under Different Weather Systems
3.4. Relationship between AMVs Error and Water Vapor Content, Gradient, and Wind Speed
3.5. Error Comparison by Using Different Types of Water Vapor Data
3.6. Error Comparison by Using Water Vapor and Brightness Temperature Data
4. Conclusions
- Specific humidity is suggested to be used as a water vapor tracer to obtain wind field, especially under convective areas. Compared with relative humidity, specific humidity is less affected by temperature changes and more accurately characterizes water vapor changes and movement. Tracking specific humidity features can achieve a more accurate wind field.
- The wind retrieval error decreases as the FOV size decreases, and the error sensitivity to the satellite revisiting time gradually increases. Therefore, if the sensor’s spatial resolution is extremely poor, shortening the revisiting time will not improve the wind field results.
- For fast-evolving weather systems such as typhoons, the Farneback OF wind-tracking algorithm requires a very fine satellite revisiting time. In the central area of the typhoon, due to the fast-moving water vapor field with vertical convergence and divergence, the error is reduced with shorter temporal–spatial resolution.
- For the non-typhoon areas where the water vapor movement is relatively stable, the water vapor field with a time interval of at least 30 min is tracked for conducting a more accurate wind field. The difference between images is too subtle to be identified at a short revisiting time. The algorithm noise will seriously interfere with the signal, which leads to a large proportion of the signal and large retrieval errors.
- The Farneback OF wind-tracking algorithm can realize pixel-wise tracking. It can still obtain an accurate wind field when water vapor content is very low or the wind direction is parallel to the moisture gradient. Compared with the traditional wind-tracking method, our algorithm is more accurate for broader applications.
- The error of tracking simulated BT is larger than that of tracking WRF water vapor fields. Height assignment uncertainty, inclusion of temperature fields, and the systematic errors of BT simulated by radiative transfer model may increase the errors. After the geostationary microwave sounder data are available, the retrievals will consider accuracy, the uncertainty in water valor inhomogeneity, scan angle, and various weather events so that a high quality of water vapor field can be derived for wind tracking.
Author Contributions
Funding
Conflicts of Interest
References
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Data Scope | Experiment Design | |
---|---|---|
Satellite revisiting time | 5–120 min | Sampled every 5 min |
FOV size | 3–30 km | 3 km, 6 km, 12 km, 18 km, 24 km, 30 km |
Moisture height | 975–100 hPa | 975 hPa, 925 hPa, 900 hPa, 850 hPa, 800 hPa, 700 hPa, 600 hPa, 500 hPa, 400 hPa, 300 hPa, 200 hPa, 100 hPa |
Channel Number | Center Frequency (GHz) | Weighting Function Peak | Approximate WRF Layers |
---|---|---|---|
11 | 183.31 ± 1 | 441.93 hPa | 400 hPa |
12 | 183.31 ± 1.8 | 515.77 hPa | 500 hPa |
13 | 183.31 ± 3 | 596.35 hPa | 600 hPa |
14 | 183.31 ± 4.5 | 683.71 hPa | 700 hPa |
15 | 183.31 ± 7 | 802.41 hPa | 800 hPa |
Quality Control Code | Definition |
---|---|
0 | Good quality |
1 | Exceeding the research area |
2 | Water vapor loss or abnormal |
3 | U component accelerated velocity over 10 m/s2 |
4 | V component accelerated velocity over 10 m/s2 |
5 | Both satisfied with 3 and 4 |
6 | Wind speed lower than 0.5 m/s |
Whole Simulated Area | Typhoon Area | |
---|---|---|
Wind speed RE | 35.17% | 15.31% |
Wind direction AE | 22.9° | 7.67° |
Satellite Revisiting Time | 5 min | 50 min |
---|---|---|
Wind speed RE | 34.77% | 19.32% |
Wind direction AE | 27.58° | 14.97° |
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Zhang, Y.; Hu, H.; Weng, F. The Potential of Satellite Sounding Observations for Deriving Atmospheric Wind in All-Weather Conditions. Remote Sens. 2021, 13, 2947. https://doi.org/10.3390/rs13152947
Zhang Y, Hu H, Weng F. The Potential of Satellite Sounding Observations for Deriving Atmospheric Wind in All-Weather Conditions. Remote Sensing. 2021; 13(15):2947. https://doi.org/10.3390/rs13152947
Chicago/Turabian StyleZhang, Yijia, Hao Hu, and Fuzhong Weng. 2021. "The Potential of Satellite Sounding Observations for Deriving Atmospheric Wind in All-Weather Conditions" Remote Sensing 13, no. 15: 2947. https://doi.org/10.3390/rs13152947
APA StyleZhang, Y., Hu, H., & Weng, F. (2021). The Potential of Satellite Sounding Observations for Deriving Atmospheric Wind in All-Weather Conditions. Remote Sensing, 13(15), 2947. https://doi.org/10.3390/rs13152947