Detailed Evolution Characteristics of an Inclined Structure Hailstorm Observed by Polarimetric Radar over the South China Coast
Abstract
:1. Introduction
2. Data and Methods
2.1. Observation Data
2.2. Data Processing of Dual-Polarization Radar
2.3. VDRAS
2.4. Improved Hydrometeor Identification Method Based on Polarization and Temperature
3. Case Overview
- From 08:00 to 20:00 LST on the 27th, the hail area was in a state of atmospheric stratification, with the upper layer being dry and the lower one being wet; the humidification of the lower layer was obvious at 20:00 LST. Low- and mid-level winds veered with a height and wind vector difference of 0–6 km, increasing from 16 m·s−1 to 26.6 m·s−1, indicating warm advection and moderate vertical wind shear typical of deep moist convection [56].
- At 20:00 LST on the 27th, the temperature difference between 850 and 500 hPa reached 27 °C, stronger than previous statistics of hailstorms in northern Guangdong, Guangdong Province, and the Pearl River Delta (PRD) (24–25 °C, [57]). The difference between the temperature and dew point was 46 °C, close to the upper limit of the average value (31.7–46.3 °C). There was also an inversion layer near 850 hPa.
- Regarding thermal conditions, the CIN decreased to 0 J/kg, the CAPE increased to 1183.30 J/kg, and the SI index was −1.15 °C at 20:00 LST. The heights of the wet bulb zero (WBZ) and the −20 °C were 3922 and 7997 m, respectively. At the same time, the CAPE value above the height of the −20 °C layer increased significantly. The above conditions are conducive to the rapid growth of hail in supercooled water areas and to the maintenance of ice crystal structure, both of which are conducive to the development and falling of hail.
4. Dual-Polarization Radar Fine-Structure Evolution Characteristics of the Hailstorm
4.1. Developments of the Hailstrom
- (1)
- From 08:00 to 16:00 LST on 27th, the wind direction below 6 km did not change significantly. The area within the 0–2.5 km altitude was occupied by southerly winds, with southwesterly winds prevailing at the middle and upper layers. Wind speed displayed an obvious increase from 12:00 to 16:00 LST. The wind speed below 0.5 km was about 10 m∙s−1 and was about 12 m∙s−1 at 0.5–2.5 km in height and 14–18 m∙s−1 above 2.5 km. The warm, moist southwesterly winds continuously conveyed from the South China Sea to the land, providing favorable thermal conditions for the development of subsequent storms.
- (2)
- The wind speed of the whole layer did not change much from 16:00 to 18:00 LST on the 27th, but the wind direction at the middle and high layers turned from southwesterly to westerly. This change was related to an eastward-moving short-wave trough, with Yangjiang City being located at the bottom of the trough.
- (3)
- From 18:00 LST on 27th to 00:00 LST on 28th, the westerly wind above 4 km angled to the northwest, with the wind speed undergoing a significant increase (16–22 m·s−1). At 2.0–4.0 km, the southwest wind changed to a westerly wind, with little change in the wind speed. The wind direction at the lower level did not change much, but the wind speed first decreased and then increased. At this stage, the wind rotated clockwise as it ascended, suggesting obvious warm advection currents conducive to storm development. A northwesterly air flow was dominant at the altitude above 4 km, correlating with the rapid southeastward movement of the storm.
4.2. Dual-Polarization Radar-Observed Structure of Hailing Stage
4.3. The Evolution of ZDR Column and KDP Column
5. Kinetic Properties Structure of the Inclined Hailstorm
6. Discussions and Conclusions
- (1)
- This event occurred in the overlapping area of the 200 hPa distributary area and lower-level shear line. The upper-level divergence and lower-level convergence provided favorable dynamic uplifts. Under this unstable stratification, the CIN decreased to 0 J/kg, the CAPE increased to 1183.30 J·kg−1, and the SI index was −1.15 °C at 20:00 LST. The heights of the wet bulb zero (WBZ) and −20 °C were 3.922 and 7.997 km, respectively. The wind vector difference of 0–6 km increased from 16 m∙s−1 to 26.6 m∙s−1. All environmental physical quantities were conducive to the occurrence of severe convective weather.
- (2)
- The ZDR arc, ZDR column, and KDP column were clearly observed from the initial stage to the mature stage of the hailstorm (19:00–21:48 LST). During this period, the ZDR column and KDP column increased gradually, while the CC kept decreasing. The ZDR column and KDP column reached their greatest heights (11.5 km and 8.5 km, respectively) during the hailfall stage (21:54–23:00 LST), and a CC valley appeared during this time. In particular, two vertical centers (C1, C2) with strong reflectivity appeared during this stage. C1 was located at 2–4 km, and C2 was located at 6–8 km. The maximum horizontal distance between C1 and C2 was 8 km. This implies that the hailstorm was strongly inclined and featured large hailstones.
- (3)
- It was found from the analysis of the hydrometeor classifications revealed by the improved HCA and the high-resolution VDRAS that the formation of the inclined structure was closely related to the airflow evolution. The updraft at the BWER on the front side of the hailstorm increased to 20 m∙s−1, which maintained C2 at a high level. An ice-phase process occurred within C2 when the large raindrops at the lower part of C2 were lifted to the vicinity of C2 by the updraft, gradually increasing hailstone size. A sloping downward trajectory was exhibited under the influences of divergent outflow at the higher layer (8 km), ambient horizontal winds and strong vertical wind shear, and weakened updrafts from the hailfall drag.
Author Contributions
Funding
Informed Consent Statement
Conflicts of Interest
References
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NO. | Main Variables | Accuracy |
---|---|---|
1 | Wavelength | 10.8 cm |
2 | Beam width | 0.95° |
3 | Sea level height | 105.6 m |
4 | Radial resolution | 250 m |
5 | Differential reflectivity factor (ZDR) | ≤0.2 dB |
6 | Differential phase (ΦDP), | ≤2° |
7 | Specific differential phase (KDP), | ≤0.2°/km |
8 | Correlation coefficient (CC) | ≤0.001 |
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Zhang, H.; Rao, X.; Guo, Z.; Liu, X.; Yu, X.; Chen, X.; Li, H.; Zhang, J.; Zeng, G.; Chen, S. Detailed Evolution Characteristics of an Inclined Structure Hailstorm Observed by Polarimetric Radar over the South China Coast. Atmosphere 2022, 13, 1564. https://doi.org/10.3390/atmos13101564
Zhang H, Rao X, Guo Z, Liu X, Yu X, Chen X, Li H, Zhang J, Zeng G, Chen S. Detailed Evolution Characteristics of an Inclined Structure Hailstorm Observed by Polarimetric Radar over the South China Coast. Atmosphere. 2022; 13(10):1564. https://doi.org/10.3390/atmos13101564
Chicago/Turabian StyleZhang, Honghao, Xiaona Rao, Zeyong Guo, Xiantong Liu, Xiaoding Yu, Xingdeng Chen, Huiqi Li, Jingjing Zhang, Guangyu Zeng, and Shidong Chen. 2022. "Detailed Evolution Characteristics of an Inclined Structure Hailstorm Observed by Polarimetric Radar over the South China Coast" Atmosphere 13, no. 10: 1564. https://doi.org/10.3390/atmos13101564
APA StyleZhang, H., Rao, X., Guo, Z., Liu, X., Yu, X., Chen, X., Li, H., Zhang, J., Zeng, G., & Chen, S. (2022). Detailed Evolution Characteristics of an Inclined Structure Hailstorm Observed by Polarimetric Radar over the South China Coast. Atmosphere, 13(10), 1564. https://doi.org/10.3390/atmos13101564