cs.AI updates on arXiv.org 10月07日 12:14
WindSR:基于数据同化的超分辨率风速下尺度模型
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本文提出WindSR,一种结合数据同化的扩散模型,用于超分辨率下尺度计算塔高风速,通过动态半径混合方法结合观测数据和模拟场,提高风速下尺度精度。

arXiv:2510.03364v1 Announce Type: cross Abstract: High-quality observations of hub-height winds are valuable but sparse in space and time. Simulations are widely available on regular grids but are generally biased and too coarse to inform wind-farm siting or to assess extreme-weather-related risks (e.g., gusts) at infrastructure scales. To fully utilize both data types for generating high-quality, high-resolution hub-height wind speeds (tens to ~100m above ground), this study introduces WindSR, a diffusion model with data assimilation for super-resolution downscaling of hub-height winds. WindSR integrates sparse observational data with simulation fields during downscaling using state-of-the-art diffusion models. A dynamic-radius blending method is introduced to merge observations with simulations, providing conditioning for the diffusion process. Terrain information is incorporated during both training and inference to account for its role as a key driver of winds. Evaluated against convolutional-neural-network and generative-adversarial-network baselines, WindSR outperforms them in both downscaling efficiency and accuracy. Our data assimilation reduces WindSR's model bias by approximately 20% relative to independent observations.

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风速下尺度 数据同化 扩散模型 超分辨率 WindSR
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