LGGEO-PHApr 17, 2025

Fine Flood Forecasts: Incorporating local data into global models through fine-tuning

arXiv:2504.12559v13 citationsh-index: 39
Originality Incremental advance
AI Analysis

This work addresses the challenge for national forecasters who need to adapt global models to local conditions to enable operational deployment of ML-based flood warning systems, representing an incremental improvement.

The paper tackled the problem of improving flood forecasting by incorporating local data into global machine learning models through fine-tuning, resulting in performance increases, particularly in underperforming watersheds.

Floods are the most common form of natural disaster and accurate flood forecasting is essential for early warning systems. Previous work has shown that machine learning (ML) models are a promising way to improve flood predictions when trained on large, geographically-diverse datasets. This requirement of global training can result in a loss of ownership for national forecasters who cannot easily adapt the models to improve performance in their region, preventing ML models from being operationally deployed. Furthermore, traditional hydrology research with physics-based models suggests that local data -- which in many cases is only accessible to local agencies -- is valuable for improving model performance. To address these concerns, we demonstrate a methodology of pre-training a model on a large, global dataset and then fine-tuning that model on data from individual basins. This results in performance increases, validating our hypothesis that there is extra information to be captured in local data. In particular, we show that performance increases are most significant in watersheds that underperform during global training. We provide a roadmap for national forecasters who wish to take ownership of global models using their own data, aiming to lower the barrier to operational deployment of ML-based hydrological forecast systems.

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