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📄 Abstract
Abstract: Recent deep learning approaches for river discharge forecasting have improved
the accuracy and efficiency in flood forecasting, enabling more reliable early
warning systems for risk management. Nevertheless, existing deep learning
approaches in hydrology remain largely confined to local-scale applications and
do not leverage the inherent spatial connections of bodies of water. Thus,
there is a strong need for new deep learning methodologies that are capable of
modeling spatio-temporal relations to improve river discharge and flood
forecasting for scientific and operational applications. To address this, we
present RiverMamba, a novel deep learning model that is pretrained with
long-term reanalysis data and that can forecast global river discharge and
floods on a $0.05^\circ$ grid up to $7$ days lead time, which is of high
relevance in early warning. To achieve this, RiverMamba leverages efficient
Mamba blocks that enable the model to capture spatio-temporal relations in very
large river networks and enhance its forecast capability for longer lead times.
The forecast blocks integrate ECMWF HRES meteorological forecasts, while
accounting for their inaccuracies through spatio-temporal modeling. Our
analysis demonstrates that RiverMamba provides reliable predictions of river
discharge across various flood return periods, including extreme floods, and
lead times, surpassing both AI- and physics-based models. The source code and
datasets are publicly available at the project page
https://hakamshams.github.io/RiverMamba.
Authors (4)
Mohamad Hakam Shams Eddin
Yikui Zhang
Stefan Kollet
Juergen Gall
Key Contributions
RiverMamba introduces a novel deep learning model capable of global river discharge and flood forecasting up to 7 days lead time. It leverages efficient Mamba blocks to capture spatio-temporal relations, addressing the limitations of local-scale deep learning approaches in hydrology and enabling more reliable early warning systems.
Business Value
Enables more accurate and timely flood warnings, reducing economic losses and saving lives. Improves water resource management and infrastructure planning.