Publications / CCC 2025 - Zadar, Croatia
The intensification of extreme rainfall events due to climate change has significantly increased flood risks, with levee overtopping emerging as a major cause of catastrophic failures. Accurate short-term water level forecasting is therefore essential, particularly in ungauged river systems where monitoring infrastructure is limited. However, existing deep learning models heavily rely on long-term observations from gauged sites, while physics-based models require dense, high-quality input data?both of which constrain real-time applicability in data-scarce regions. To address these challenges, we propose DeepCreek, a lightweight MLP-based forecasting model adapted from TSMixer, designed for short-term water level forecasting in ungauged basins. Utilizing nationwide rainfall scenario-based datasets comprising eight key hydrometeorological variables across 232 observation stations in South Korea, and employing a spatially segregated evaluation strategy, DeepCreek achieved an RMSE of 1.0987m and a MAPE of 15.43% for six-hour-ahead predictions under extreme rainfall scenarios. The model consistently outperformed conventional approaches on both the rainfall scenario and extreme rainfall scenario test sets, demonstrating robust performance even under noisy real-world conditions without explicit outlier removal. These results underscore DeepCreek's potential as a practical and scalable AI solution for real-time flood forecasting in regions with limited hydrological monitoring infrastructure