2024
DOI: 10.3390/atmos15070820
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Flood Forecasting through Spatiotemporal Rainfall in Hilly Watersheds

Yuanyuan Liu,
Yesen Liu,
Yang Liu
et al.

Abstract: Flood prediction in hilly regions, characterized by rapid flow rates and high destructive potential, remains a significant challenge. This study addresses this problem by introducing a novel machine learning-based approach to enhance flood forecast accuracy and lead time in small watersheds within hilly terrain. The study area encompasses small watersheds of approximately 600 km2. The proposed method analyzes spatiotemporal characteristics in rainfall dynamics to identify historical rainfall–flood events that … Show more

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