Authors
Yung-Yun Cheng, Chia-Tung Chang, Buo-Fu Chen, Hung-Chi Kuo, Cheng-Shang Lee
Publication date
2023/2
Journal
Weather and Forecasting
Volume
38
Issue
2
Pages
273-289
Description
This paper proposes a new quantitative precipitation estimation (QPE) technique to provide accurate rainfall estimates in complex terrain, where conventional QPE has limitations. The operational radar QPE in Taiwan is mainly based on the simplified relationship between radar reflectivity Z and rain rate R [ R ( Z ) relation] and only utilizes the single-point lowest available echo to estimate rain rates, leading to low accuracy in complex terrain. Here, we conduct QPE using deep learning that extracts features from 3D radar reflectivities to address the above issues. Convolutional neural networks (CNN) are used to analyze contoured frequency by altitude diagrams (CFADs) to generate the QPE. CNN models are trained on existing rain gauges in northern and eastern Taiwan with the 3-yr data during 2015–17 and validated and tested using 2018 data …
Total citations
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