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Super-Resolving Coarse-Resolution Weather Forecasts With Flow Matching

arXiv:2604.0089741.21 citations
AI Analysis

This addresses the problem of high computational costs for meteorologists and climate scientists by providing an incremental improvement in efficiency for weather forecasting.

The paper tackles the computational expense of high-resolution weather forecasting by proposing a modular framework that uses learned generative super-resolution as a post-processing step on coarse forecasts, achieving competitive probabilistic forecast skill at 0.25° resolution with modest training cost.

Machine learning-based weather forecasting models now surpass state-of-the-art numerical weather prediction systems, but training and operating these models at high spatial resolution remains computationally expensive. We present a modular framework that decouples forecasting from spatial resolution by applying learned generative super-resolution as a post-processing step to coarse-resolution forecast trajectories. We formulate super-resolution as a stochastic inverse problem, using a residual formulation to preserve large-scale structure while reconstructing unresolved variability. The model is trained with flow matching exclusively on reanalysis data and is applied to global medium-range forecasts. We evaluate (i) design consistency by re-coarsening super-resolved forecasts and comparing them to the original coarse trajectories, and (ii) high-resolution forecast quality using standard ensemble verification metrics and spectral diagnostics. Results show that super-resolution preserves large-scale structure and variance after re-coarsening, introduces physically consistent small-scale variability, and achieves competitive probabilistic forecast skill at 0.25° resolution relative to an operational ensemble baseline, while requiring only a modest additional training cost compared with end-to-end high-resolution forecasting.

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