Urban flash floods can be triggered by highly localised convective storms, for which 10–60 minutes of additional warning can materially affect emergency response. We study short-lead radar rainfall nowcasting over Amsterdam using 5 min KNMI radar composites (Oct 2024–Jan 2025). We construct 12 × 12 input–output sequences (60 min → 60 min) on a 200 × 200 pixel tile and compare a standard data-driven U–Net with a physics-guided variant that uses the same architecture but is trained with an additional physics-inspired regulariser. Specifically, we augment the baseline objective with a masked smoothness (TV-like) penalty on spatial gradients of predicted rain-rate fields in linear units, applied only over rainy pixels to encourage spatial coherence and reduce isolated artefacts. Models are trained in log(1 + R ) and evaluated in physical units (mm/h) on a held-out test set. On the test set, the physics-guided model improves continuous accuracy and threshold-based event detection relative to the baseline U–Net, and it also outperforms an Eulerian persistence benchmark. At τ = 0.1 mm h −1 it reduces the false-alarm ratio and increases the critical success index (CSI) while maintaining high recall; at the flood-relevant threshold τ = 1 mm h −1 it increases CSI and recall while reducing false alarms. Lead-time curves over 5–60 minutes show consistent gains, with the largest improvements at intermediate horizons (approximately 25–40 minutes) where baseline skill degrades most rapidly. Overall, the results indicate that a lightweight physics-inspired smoothness regulariser can improve the coherence and flood-threshold skill of radar rainfall nowcasts at actionable lead times without increasing inference-time cost. Code is available at https://github.com/katsiaryna-bahamazava/flash-flood-nowcasting .
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Katsiaryna Bahamazava
Stanley Reznik
Natural Hazards Research
University College Dublin
Institute for Scientific Interchange
Hereditary Disease Foundation
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Bahamazava et al. (Thu,) studied this question.
synapsesocial.com/papers/69a75b7cc6e9836116a22e31 — DOI: https://doi.org/10.1016/j.nhres.2026.01.003