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Deep learning enables super-resolution hydrodynamic flooding process modeling under spatiotemporally varying rainstorms.

Authors :
He, Jian
Zhang, Limin
Xiao, Te
Wang, Haojie
Luo, Hongyu
Source :
Water Research. Jul2023, Vol. 239, pN.PAG-N.PAG. 1p.
Publication Year :
2023

Abstract

• A real-time flood simulation method based on cross-scale correlation has been proposed. • Super-resolution deep learning models can downscale flow depth and velocity. • The deep learning model can be trained with limited assumed rainfall scenarios. • The proposed method simulates pluvial flooding process under arbitrary rainstorms. • The analysis is 2690 times faster, with errors of 0.082 m for depth and 0.088 m/s for velocity. Real-time information on flooding extent, severity, and duration is necessary for effective metropolitan flood emergency management. Existing pluvial flood analysis methods are unable to simulate real-time regional flooding processes under spatiotemporally varying rainstorms. This paper presents a deep learning-enabled super-resolution hydrodynamic flood analysis method to simulate the real-time pluvial flooding process over a large area under spatiotemporally varying rainstorms. Compared with existing flood downscaling techniques, which are limited to flow depth, the proposed method produces high-resolution flow depth and velocity predictions, providing more comprehensive information for flood emergency management. The proposed method adopts a coarse-grid hydrodynamic model to generate a low-resolution flood map time series, which is subsequently converted to high-resolution flood maps by a deep learning model. The deep learning model can be trained using a limited number of assumed rainfall scenarios, which greatly reduces data preparation effort. The proposed method is applied to a complex terrain of 352 km2 in Hong Kong that covers both mountainous and urban areas. Results show that the proposed method simulates the spatiotemporal variations of flood depth and velocity with root mean square errors as low as 0.082 m and 0.088 m/s, respectively, and correlation coefficients of 0.962 and 0.921, respectively. The computation time for a 48-h rainfall event in the study area is less than 30 s, which is 2690 times faster than the direct fine-grid hydrodynamic analysis. The deep learning-enabled super-resolution hydrodynamic flood analysis method provides a promising computational tool for emergency flood risk management. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00431354
Volume :
239
Database :
Academic Search Index
Journal :
Water Research
Publication Type :
Academic Journal
Accession number :
163931543
Full Text :
https://doi.org/10.1016/j.watres.2023.120057