风速超分辨率和验证:通过扩散模型从ERA5到CERRA

Fabio Merizzi, Andrea Asperti, Stefano Colamonaco
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摘要

哥白尼欧洲区域再分析(CERRA)是欧洲地区的高分辨率区域再分析数据集。近年来,它在各种与气候相关的任务中显示出巨大的效用,从预报和气候变化研究到可再生能源预测、资源管理、空气质量风险评估和罕见事件预报等等。遗憾的是,由于在获取必要的外部数据方面受到限制,以及在生成 CERRA 时固有的密集计算需求,CERRA 的可用性比现在滞后两年。作为解决方案,本文介绍了一种使用扩散模型的新方法,以数据驱动的方式近似缩小 CERRA 的尺度,而无需额外的信息。通过利用为 CERRA 提供边界条件的低分辨率 ERA5 数据集,我们将其作为一项超分辨率任务来处理。我们的模型以意大利周边的风速为重点,在现有的 CERRA 数据基础上进行了训练,显示出与原始 CERRA 非常接近的良好结果。通过现场观测验证,进一步证实了该模型在近似地面测量数据方面的准确性。
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Wind speed super-resolution and validation: from ERA5 to CERRA via diffusion models

The Copernicus Regional Reanalysis for Europe, CERRA, is a high-resolution regional reanalysis dataset for the European domain. In recent years, it has shown significant utility across various climate-related tasks, ranging from forecasting and climate change research to renewable energy prediction, resource management, air quality risk assessment, and the forecasting of rare events, among others. Unfortunately, the availability of CERRA is lagging 2 years behind the current date, due to constraints in acquiring the requisite external data and the intensive computational demands inherent in its generation. As a solution, this paper introduces a novel method using diffusion models to approximate CERRA downscaling in a data-driven manner, without additional informations. By leveraging the lower resolution ERA5 dataset, which provides boundary conditions for CERRA, we approach this as a super-resolution task. Focusing on wind speed around Italy, our model, trained on existing CERRA data, shows promising results, closely mirroring the original CERRA. Validation with in-situ observations further confirms the model’s accuracy in approximating ground measurements.

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