2024
DOI: 10.2166/wcc.2024.559
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Flood prediction based on feature selection and a hybrid deep learning network

Ni Chenmin,
Muhammad Fadhil Marsani,
Fam Pei Shan

Abstract: As climates change globally, water-related disasters increase, causing substantial economic losses and safety risks. During floods, river water levels show unpredictable fluctuations, introducing substantial noise that complicates accurate prediction. A hybrid model that uses eight-dimensional input data from hydrological and meteorological stations is proposed to address these challenges. Initially, the variational mode decomposition preprocesses and denoises water level data, resulting in decomposed intrinsi… Show more

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Cited by 2 publications
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