Analysis of a Rainstorm Process in Nanjing Based on Multi-Source Observational Data and Lagrangian Method
Abstract
:1. Introduction
2. Data, Instruments, and Methods
3. Precipitation Observation and Circulation Background
3.1. Precipitation Observation
3.2. Circulation Background
4. Analysis of Satellite and Radar Observation
4.1. Characteristics of Mesoscale Convective Cloud Clusters
4.2. Characteristics of Radar Echoes
4.3. Characteristics of Upper and Lower Atmospheric Wind Fields
5. Analysis of Microwave Radiometer and Laser Disdrometer Observation
5.1. Characteristics of Local Water Vapor Variations
5.2. Characteristics of Precipitation Particles during the Meiyu Season
6. Three-Dimensional Characteristics of Water Vapor Transport
7. Conclusions
- The rainstorm process has characteristics of concentrated heavy rainfall, intense short-term precipitation, and large cumulative rainfall. It was a subtropical high-edge-type rainstorm under the background of the northeast cold vortex. The rainstorm area was located in the 200 hPa diversion region, the left front of the low-level jet, and the convergence of cold and warm air flows near the low-level shear line.
- The development of the rainstorm was accompanied by the merging and strengthening of mesoscale convective cloud clusters. The TBB low-value area was expanded, and the intensity of TBB increased, with the lowest TBB ≤ −72 °C. Heavy precipitation occurred near the region of large TBB gradient values or the center of low TBB values on the northern side of the convective cloud cluster, and it moved with the low TBB value areas. The lower the TBB value and the longer the duration, the greater the precipitation intensity and the larger the accumulated rainfall.
- The formation of the train effect during the eastward movement of strong echoes was an important reason for the continuous 3-h heavy rainfall in the central part of Nanjing. The S-band dual-polarization radar showed that KDP, ZDR, and ρHV all increased significantly during the period of heavy precipitation, with KDP reaching 1 to 5 °/km, ZDR reaching 1 to 3.5 dB and ρHV reaching above 0.97, indicating vigorous vertical upward motion during this phase and the precipitation being mainly dominated by dense and uniform large raindrops.
- Wind profiler radar data show that the near-surface wind speed increased about half an hour before the onset of precipitation. The precipitation intensified after the establishment of the southwesterly jet in the middle and lower levels. The period of the strongest precipitation corresponded well with the passage of the upper-level trough and the intrusion of cold air. The vertical structure of the wind field detected by the wind profiler radar provides a good indication of the changes in precipitation intensity.
- Analysis of microwave radiometer data indicates that both water vapor density and liquid water content were maximum in the lower layer during this rainstorm process. The overall water vapor density decreased while the lower layer liquid water content increased during the precipitation period, showing an inverse relationship. The hourly rainfall was negatively correlated with the total column-integrated water vapor content and positively correlated with the total column-integrated liquid water content. Compared to the total column-integrated water vapor content, the total column-integrated liquid water content was more sensitive to changes in rainfall intensity, and its abrupt increase can serve as an important indicator for the onset of heavier rainfall.
- Laser disdrometer data show that during the Meiyu season in Nanjing, convective precipitation was mainly composed of small to medium raindrops with diameters less than 3 mm, with most raindrops being less than 1 mm, and the falling velocities of raindrops mainly concentrated between 2 and 6 m·s−1.
- There were four water vapor channels in this rainstorm process: the mid-latitude westerly channel, the Indian Ocean channel, the South China Sea channel, and the Pacific channel. During the heavy rainfall, the Pacific Ocean water vapor channel was the main channel at the middle and lower levels, while the South China Sea water vapor channel was the main channel at the upper level, both accounting for a trajectory proportion of 34.2%.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Rainfall Intensity | 24-h Rainfall | 1-h Rainfall |
---|---|---|
light rainfall | <10 mm | <2 mm |
heavy rainfall | ≥50 mm | ≥20 mm |
Rainfall Intensity (Unit: mm·h−1) | R = 0 | 0 < R ≤ 5 | 5 < R ≤ 10 | 10 < R ≤ 20 | R > 20 |
---|---|---|---|---|---|
the average total column-integrated water vapor content (unit: mm) | 6.37 | 6.07 | 5.11 | 4.97 | 4.98 |
the average total column-integrated liquid water content (unit: m) | 0.97 | 2.45 | 6.38 | 6.97 | 7.42 |
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Mao, Y.; Jiang, Y.; Li, C.; Shi, Y.; Qian, D. Analysis of a Rainstorm Process in Nanjing Based on Multi-Source Observational Data and Lagrangian Method. Atmosphere 2024, 15, 904. https://doi.org/10.3390/atmos15080904
Mao Y, Jiang Y, Li C, Shi Y, Qian D. Analysis of a Rainstorm Process in Nanjing Based on Multi-Source Observational Data and Lagrangian Method. Atmosphere. 2024; 15(8):904. https://doi.org/10.3390/atmos15080904
Chicago/Turabian StyleMao, Yuqing, Youshan Jiang, Cong Li, Yi Shi, and Daili Qian. 2024. "Analysis of a Rainstorm Process in Nanjing Based on Multi-Source Observational Data and Lagrangian Method" Atmosphere 15, no. 8: 904. https://doi.org/10.3390/atmos15080904
APA StyleMao, Y., Jiang, Y., Li, C., Shi, Y., & Qian, D. (2024). Analysis of a Rainstorm Process in Nanjing Based on Multi-Source Observational Data and Lagrangian Method. Atmosphere, 15(8), 904. https://doi.org/10.3390/atmos15080904