Affiliation:
1. Xichang Satellite Launch Center, Xichang 615000, China
2. Guangzhou Meteorological Observatory, Guangzhou Meteorological Administration, Guangzhou 511430, China
3. Plateau Atmospheric and Environment Laboratory of Sichuan Province, School of Atmospheric Sciences, Chengdu University of Information Technology, Chengdu 610225, China
Abstract
This study focuses on the real-time precipitation forecast products of the GRAPES_MESO regional ensemble forecast model, which is developed by the Numerical Weather Prediction Center of the China Meteorological Administration and is initialized 1–3 days in advance at 12:00 UTC. Using a national-level homogenized precipitation grid dataset from surface meteorological stations as observational data, a frequency matching method (FMM) is employed to correct precipitation forecasts for different precipitation intensity levels, including light rain, moderate rain, heavy rain, and torrential rain. Case studies and statistical tests (TS scores) are conducted to compare the forecast performance before and after correction. The results indicate that the model’s Cumulative Distribution Function (CDF) curves deviate from observations, and the longer the lead time, the more significant the error. The correction coefficients (CCs) show an increasing trend with the growth of precipitation intensity, indicating that for larger precipitation amounts and longer lead times, larger CCs are needed, highlighting the necessity of correction. Analyzing two precipitation events in South China in July 2019, the FMM results in an increase in precipitation intensity and a widening of the range of heavy precipitation. The corrected precipitation magnitudes are closer to the observations. The statistical tests using TS scores reveal that the FMM has a certain correction effect on the overall precipitation forecast in the South China region, especially for longer lead times and higher precipitation intensities, where the correction effect is more significant. The necessity of frequency matching correction becomes more apparent for heavier precipitation, and the correction effect becomes more significant with longer lead times.
Funder
National Key Research and Development Program of China
National Natural Science Foundation
Reference24 articles.
1. A Survey on Forecasters’ View about Uncertainty in Weather Forecasts;Du;Adv. Meteorol. Sci. Technol.,2014
2. Initial perturbations based on the ensemble transform (ET) technique in the NCEP global operational forecast system;Wei;Tellus A,2008
3. Ensemble Kalman filtering;Houtekamer;Q. J. R. Meteorol. Soc.,2005
4. Houtekamer, P.L., Charron, M., Mitchell, H.L., and Pellerin, G. (2007, January 7–9). Status of the global EPS at environment Canada. Proceedings of the ECMWF Workshop on Ensemble Prediction, Reading, UK.
5. A comparison of perturbations from an ensemble transform and an ensemble Kalman filter for the NCEP global ensemble forecast system;Zhou;Weather Forecast.,2016