Convolutional Neural Network for Convective Storm Nowcasting Using 3D Doppler Weather Radar Data
Lei Han, Juanzhen Sun, Wei Zhang

TL;DR
This paper presents a deep learning CNN approach for short-term convective storm nowcasting using 3D Doppler radar data, outperforming traditional methods and eliminating manual feature engineering.
Contribution
It introduces an end-to-end CNN model with 3D cross-channel convolution for effective storm prediction from raw radar data, advancing nowcasting techniques.
Findings
Deep learning improves nowcasting accuracy over traditional methods.
The proposed CNN effectively fuses 3D radar data without handcrafted features.
Large dataset from China demonstrates the model's practical applicability.
Abstract
Convective storms are one of the severe weather hazards found during the warm season. Doppler weather radar is the only operational instrument that can frequently sample the detailed structure of convective storm which has a small spatial scale and short lifetime. For the challenging task of short-term convective storm forecasting, 3-D radar images contain information about the processes in convective storm. However, effectively extracting such information from multisource raw data has been problematic due to a lack of methodology and computation limitations. Recent advancements in deep learning techniques and graphics processing units now make it possible. This article investigates the feasibility and performance of an end-to-end deep learning nowcasting method. The nowcasting problem was transformed into a classification problem first, and then, a deep learning method that uses a…
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Taxonomy
Methods3D Convolution · Convolution
