ABSTRACT This study proposes a multi-task deep learning model for simultaneous prediction of time-series water levels and flood risk thresholds, aiming to enhance flood forecasting precision. Using AutoKeras, single-task and multi-task models were optimised to predict water levels 10–360 min ahead based on 720 min of prior data. The multi-task model consistently outperformed the single-task model across multiple evaluation metrics, including correlation coefficients, root mean squared error, Nash–Sutcliffe efficiency, and Kling–Gupta efficiency scores. Real-time prediction tests on actual rainfall events further validated the multi-task model's improved accuracy and applicability in operational flood forecasting. The study demonstrates significant progress in flood prediction methodologies, offering a more comprehensive approach to forecasting and categorising flood incidents.
Halappanavar Ruta ShivarudrappaS.P. NandhiniT. S. PushpaK. P. Shailaja
Sengar, Sandeep SinghDoss, SrinathBasheer, ShakilaChowdhary, Chiranji LalKumar, Vijay
C. T. ZhangJiancheng NiYanWei WangCundong LinYing YangJieyue Li