2024
DOI: 10.1155/2024/3562709
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A Data-Driven Method and Hybrid Deep Learning Model for Flood Risk Prediction

Chenmin Ni,
Pei Shan Fam,
Muhammad Fadhil Marsani

Abstract: Flood disasters occur worldwide, and flood risk prediction is conducive to protecting human life and property safety. Influenced by topographic changes and rainfall, the water level fluctuates randomly and violently during the flood, introducing many noises and directly increasing the difficulty of flood prediction. A data-driven flood forecasting method is proposed based on data preprocessing and a two-layer BiLSTM-Attention network to improve forecast accuracy. First, the Variational Mode Decomposition (VMD)… Show more

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