Detecting Hailstorms in China from FY-4A Satellite with an Ensemble Machine Learning Model

Author:

Wu Qiong1,Shou Yi-Xuan234,Zheng Yong-Guang5,Wu Fei1,Wang Chun-Yuan1ORCID

Affiliation:

1. School of Electronic and Electrical Engineering, Shanghai University of Engineering Science, Shanghai 201620, China

2. National Satellite Meteorological Centre, China Meteorological Administration, Beijing 100081, China

3. Key Laboratory of Radiometric Calibration and Validation for Environmental Satellites, China Meteorological Administration (LRCVES/CMA), Beijing 100081, China

4. FengYun Meteorological Satellite Innovation Center (FY-MSIC), China Meteorological Administration, Beijing 100081, China

5. National Meteorological Centre, Beijing 100081, China

Abstract

Hail poses a significant meteorological hazard in China, leading to substantial economic and agricultural damage. To enhance the detection of hail and mitigate these impacts, this study presents an ensemble machine learning model (BPNN+Dtree) that combines a backpropagation neural network (BPNN) and a decision tree (Dtree). Using FY-4A satellite and ERA5 reanalysis data, the model is trained on geostationary satellite infrared data and environmental parameters, offering comprehensive, all-day, and large-area hail monitoring over China. The ReliefF method is employed to select 13 key features from 29 physical quantities, emphasizing cloud-top and thermodynamic properties over dynamic ones as input features for the model to enhance its hail differentiation capability. The BPNN+Dtree ensemble model harnesses the strengths of both algorithms, improving the probability of detection (POD) to 0.69 while maintaining a reasonable false alarm ratio (FAR) on the test set. Moreover, the model’s spatial distribution of hail probability more closely matches the observational data, outperforming the individual BPNN and Dtree models. Furthermore, it demonstrates improved regional applicability over overshooting top (OT)-based methods in the China region. The identified high-frequency hail areas correspond to the north-south movement of the monsoon rain belt and are consistent with the northeast-southwest belt distribution observed using microwave-based methods.

Funder

National Natural Science Foundation of China

Key Project of the Science and Technology Commission of Shanghai Municipality

Publisher

MDPI AG

Reference57 articles.

1. A global hail climatology using the UK Met Office convection diagnosis procedure (CDP) and model analyses;Hand;Meteorol. Appl.,2011

2. Progress in Severe Convective Weather Forecasting in China since the 1950s;Zhang;J. Meteorol. Res.,2020

3. Chinese Meteorological Administration (2013). Yearbook of Meteorological Disasters in China, China Meteorological Press. (In Chinese).

4. Chinese Meteorological Administration (2014). Yearbook of Meteorological Disasters in China, China Meteorological Press. (In Chinese).

5. Chinese Meteorological Administration (2015). Yearbook of Meteorological Disasters in China, China Meteorological Press. (In Chinese).

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