A Hybrid Machine Learning Framework for Improved Short-Term Peak-Flow Forecasting
Gabriele Bertoli (1,2,4), Kai Schroeter (2), Rossella Arcucci (3,4), Enrica Caporali (1) ((1) University of Florence, Italy, (2) Technische Universitaet Braunschweig, Germany, (3) Imperial College London, United Kingdom, (4) Data Science Institute, Imperial College London

TL;DR
This paper presents a hybrid machine learning framework combining XGBoost and Random Forest to improve short-term peak-flow forecasting accuracy across numerous catchments, outperforming existing systems in reliability and computational efficiency.
Contribution
It introduces a novel hybrid approach that couples continuous streamflow and peak-flow prediction models, enhancing flood forecasting accuracy and operational scalability.
Findings
Achieves 71% catchments with KGE > 0.90
Peak-flow detection accuracy of 87%
Lower peak-magnitude errors compared to EFAS
Abstract
Reliable river flow forecasting is an essential component of flood risk management and early warning systems. It enables improved emergency response coordination and is critical for protecting infrastructure, communities, and ecosystems from extreme hydrological events. Process-based hydrological models and purely data-driven approaches often underperform during extreme events, particularly in forecasting peak flows. To address this limitation, this study introduces a hybrid forecasting framework that couples Extreme Gradient Boosting (XGBoost) and Random Forest (RF). XGBoost is employed for continuous streamflow forecasting, while RF is specifically trained for peak-flow prediction, and the two outputs are combined into an enhanced forecast. The approach is implemented across 857 catchments of the LamaH-CE dataset, using rainfall and discharge observations at 6-hour resolution. Results…
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Taxonomy
TopicsHydrological Forecasting Using AI · Flood Risk Assessment and Management · Hydrology and Watershed Management Studies
