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Regionalization Strategy Guided Long Short‐Term Memory Model for Improving Flood Forecasting.

Authors :
Ye, Kejia
Liang, Zhongmin
Chen, Hongyu
Qian, Mingkai
Hu, Yiming
Bi, Chenglin
Wang, Jun
Li, Binquan
Source :
Hydrological Processes; Oct2024, Vol. 38 Issue 10, p1-16, 16p
Publication Year :
2024

Abstract

Flood forecasting in data‐scarce catchments is challenging for hydrologists. To address this issue, a regional long short‐term memory model (R‐LSTM) is proposed. Given the diverse physical characteristics of sub‐catchments, this model scalarises the runoff data based on catchment attributes including area, confluence path length, slope and minimum and maximum runoff values, thereby eliminating the local influence and producing a geomorphological‐runoff factor as the model input. To assess the effectiveness of R‐LSTMs for flood forecasting in data‐scarce basins, the Jiaodong Peninsula in China was selected as the study area. The proposed R‐LSTMs are compared with local LSTMs, regional LSTMs that do not use catchment attributes, or regional LSTMs that incorporate catchment attributes in different ways. The results show that R‐LSTMs outperform the benchmarking LSTM models, especially in the simulation of flood peaks. The study indicates the potential of regionalization and the benefit of building the scalarised inputs of runoff data for regional LSTM that consider catchment attributes meticulously. The research findings can provide a reference for flood forecasting in data‐scarce regions. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
08856087
Volume :
38
Issue :
10
Database :
Complementary Index
Journal :
Hydrological Processes
Publication Type :
Academic Journal
Accession number :
180521794
Full Text :
https://doi.org/10.1002/hyp.15296