Application of Ensemble Algorithm Based on the Feature-Oriented Mean in Tropical Cyclone-Related Precipitation Forecasting
Abstract
:1. Introduction
- (1)
- Considering the spatial non-continuity of TC precipitation, can an FM algorithm be developed for TC precipitation fields, and how can it be effectively employed to regionally adjust precipitation fields, reducing deviations in TC precipitation locations among ensemble members?
- (2)
- To what extent can the FM method improve the forecast skill of TC ensemble mean precipitation compared to the traditional AM method? How does this improvement vary with the leading time of ensemble forecasts?
2. Methods and Experimental Data
2.1. Feature-Oriented Ensemble Mean (FM) Algorithm
2.2. Data
3. Experimental Design
4. Forecast Verification Methods
4.1. Traditional Point-to-Point Verification
4.2. Spatial Verification
5. Results
5.1. Adjustment of Precipitation Ensemble Forecast Fields via the Feature-Oriented Mean Method
5.2. Evaluation of the Forecast Performance of the Feature-Oriented Mean Method
6. Conclusions and Discussion
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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International Number | Name | Intensity | First Landfall in China | Model Forecast Time (UTC) | ||
---|---|---|---|---|---|---|
Landfall Time (BJT) | Landfall Time (UTC) | Landfall Location | ||||
1904 | Mun | Tropical storm | 00:45 on 3 July | 18:00 on 2 July | Wanning City, Hainan Province | 00:00 on 2 July (24 h); 00:00 on 1 July (48 h); 00:00 on 30 June (72 h) |
1907 | Wipha | Tropical storm | 02:15 on 1 August | 18:00 on 31 July | Wenchang City, Hainan Province | 00:00 on 31 July (24 h); 00:00 on 30 July (48 h); 00:00 on 29 July (72 h) |
1909 | Lekima | Super typhoon | 01:45 on 10 August | 18:00 on 9 August | Wenling City, Zhejiang Province | 00:00 on 9 August (24 h); 00:00 on 8 August (48 h); 00:00 on 7 August (72 h) |
1911 | Bailu | Severe tropical storm | 13:00 on 24 August | 06:00 on 24 August | Pingtung County, Taiwan Province | 12:00 on 23 August (24 h); 12:00 on 22 August (48 h); 12:00 on 21 August (72 h) |
1914 | Kajiki | Tropical storm | 10:40 on 2 September | 00:00 on 2 September | Wanning City, Hainan Province | 06:00 on 1 September (24 h); 06:00 on 31 August (48 h); 06:00 on 30 August (72 h) |
1918 | Mitag | Typhoon | 20:20 on 1 October | 12:00 on 1 October | Zhoushan City, Zhejiang Province | 18:00 on 30 September (24 h); 18:00 on 29 September (48 h); 18:00 on 28 September (72 h) |
International Number | Name | Intensity | First Landfall in China | Model Forecast Time (UTC) | ||
---|---|---|---|---|---|---|
Landfall Time (BJT) | Landfall Time (UTC) | Landfall Location | ||||
2002 | Nuri | Tropical storm | 08:50 on 14 June | 06:00 on 14 June | Hailing Island, Guangdong Province | 12:00 on 13 June (24 h); 12:00 on 12 June (48 h); 12:00 on 11 June (72 h) |
2003 | Sinlaku | Tropical storm | 07:15 on 1 August | 00:00 on 1 August | Wanning City, Hainan Province | 06:00 on 31 July (24 h); 06:00 on 30 July (48 h); 06:00 on 29 July (72 h) |
2004 | Hagupit | Strong typhoon | 03:30 on 4 August | 00:00 on 4 August | Leqing City, Zhejiang Province | 06:00 on 3 August (24 h); 06:00 on 2 August (48 h); 06:00 on 1 August (72 h) |
2006 | Mekkhala | Typhoon | 07:30 on 11 August | 00:00 on 11 August | Zhangpu County, Fujian Province | 06:00 on 10 August (24 h); 06:00 on 9 August (48 h); 06:00 on 8 August (72 h) |
2007 | Higos | Typhoon | 05:50 on 19 August | 00:00 on 19 August | Zhuhai City, Guangdong Province | 06:00 on 18 August (24 h); 06:00 on 17 August (48 h); 06:00 on 16 August (72 h) |
2016 | Nangka | Severe tropical storm | 19:35 on 13 October | 12:00 on 13 October | Qionghai City, Hainan Province | 18:00 on 12 October (24 h); 18:00 on 11 October (48 h); 18:00 on 10 October (72 h) |
International Number | Name | Intensity | First Landfall in China | Model Forecast Time (UTC) | ||
---|---|---|---|---|---|---|
Landfall Time (BJT) | Landfall Time (UTC) | Landfall Location | ||||
2104 | Koguma | Tropical storm | 09:45 on 12 June | 06:00 on 12 June | Lingshui City, Hainan Province | 12:00 on 11 June (24 h); 12:00 on 10 June (48 h); 12:00 on 9 June (72 h) |
2106 | In-fa | Strong typhoon | 12:30 on 25 July | 06:00 on 25 July | Zhoushan City, Zhejiang Province | 12:00 on 24 July (24 h); 12:00 on 23 July (48 h); 12:00 on 2 July (72 h) |
2107 | Cempaka | Typhoon | 21:50 on 20 July | 18:00 on 20 July | Yangjiang City, Guangdong Province | 00:00 on 20 July (24 h); 00:00 on 19 July (48 h); 00:00 on 18 July (72 h) |
2109 | Lupit | Tropical storm | 11:20 on 5 August | 06:00 on 5 August | Shantou City, Guangdong Province | 12:00 on 4 August (24 h); 12:00 on 3 August (48 h); 12:00 on 2 August (72 h) |
2117 | Lionrock | Tropical storm | 22:40 on 8 October | 18:00 on 8 October | Qionghai City, Hainan Province | 00:00 on 8 October (24 h); 00:00 on 7 October (48 h); 00:00 on 6 October (72 h) |
2118 | Kompasu | Typhoon | 15:20 on 13 October | 12:00 on 13 October | Qionghai City, Hainan Province | 18:00 on 12 October (24 h); 18:00 on 11 October (48 h); 18:00 on 10 October (72 h) |
Forecasts | |||
---|---|---|---|
Positive | Negative | ||
Observations | Positive | (correct forecasts) | (false alarms) |
Negative | (missing alarms) | (correct rejections) |
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Zhang, J.; Li, H. Application of Ensemble Algorithm Based on the Feature-Oriented Mean in Tropical Cyclone-Related Precipitation Forecasting. Remote Sens. 2024, 16, 1596. https://doi.org/10.3390/rs16091596
Zhang J, Li H. Application of Ensemble Algorithm Based on the Feature-Oriented Mean in Tropical Cyclone-Related Precipitation Forecasting. Remote Sensing. 2024; 16(9):1596. https://doi.org/10.3390/rs16091596
Chicago/Turabian StyleZhang, Jing, and Hong Li. 2024. "Application of Ensemble Algorithm Based on the Feature-Oriented Mean in Tropical Cyclone-Related Precipitation Forecasting" Remote Sensing 16, no. 9: 1596. https://doi.org/10.3390/rs16091596
APA StyleZhang, J., & Li, H. (2024). Application of Ensemble Algorithm Based on the Feature-Oriented Mean in Tropical Cyclone-Related Precipitation Forecasting. Remote Sensing, 16(9), 1596. https://doi.org/10.3390/rs16091596