LGOct 15, 2025

Assessing the Geographic Generalization and Physical Consistency of Generative Models for Climate Downscaling

arXiv:2510.13722v11 citationsh-index: 7Has Code
Originality Incremental advance
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This addresses reliability issues in climate downscaling for weather forecasting applications, but it is incremental as it builds on existing models with a new diagnostic and loss function.

The paper tackles the problem of deep learning models for climate downscaling struggling with geographic generalization and physical consistency, showing that models like CorrDiff fail to generalize to new regions and capture second-order variables, and proposes a power spectral density loss that empirically improves generalization.

Kilometer-scale weather data is crucial for real-world applications but remains computationally intensive to produce using traditional weather simulations. An emerging solution is to use deep learning models, which offer a faster alternative for climate downscaling. However, their reliability is still in question, as they are often evaluated using standard machine learning metrics rather than insights from atmospheric and weather physics. This paper benchmarks recent state-of-the-art deep learning models and introduces physics-inspired diagnostics to evaluate their performance and reliability, with a particular focus on geographic generalization and physical consistency. Our experiments show that, despite the seemingly strong performance of models such as CorrDiff, when trained on a limited set of European geographies (e.g., central Europe), they struggle to generalize to other regions such as Iberia, Morocco in the south, or Scandinavia in the north. They also fail to accurately capture second-order variables such as divergence and vorticity derived from predicted velocity fields. These deficiencies appear even in in-distribution geographies, indicating challenges in producing physically consistent predictions. We propose a simple initial solution: introducing a power spectral density loss function that empirically improves geographic generalization by encouraging the reconstruction of small-scale physical structures. The code for reproducing the experimental results can be found at https://github.com/CarloSaccardi/PSD-Downscaling

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