将集合卡尔曼滤波器与人工智能天气预报模型 ClimaX 相结合

Shunji Kotsuki, Kenta Shiraishi, Atsushi Okazaki
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引用次数: 0

摘要

基于人工智能(AI)的天气预报研究发展迅速,并已显示出与先进的动态数值天气预报模式的竞争力。然而,将基于人工智能的天气预报模型与数据同化相结合的研究仍然有限,部分原因是评估数据同化系统需要长期连续的数据同化周期。本研究探讨了将本地集合变换卡尔曼滤波器(LETKF)与基于人工智能的天气预报模型ClimaX相结合的问题。实验证明,在 LETKF 中使用协方差膨胀和定位技术,基于人工智能的天气预报模型的集合数据同化循环是稳定的。虽然与动力学模型相比,ClimaX 在捕捉随气流变化的误差协方差方面表现出一定的局限性,但基于人工智能的集合预报在观测稀少的区域提供了合理且有益的误差协方差。这些发现凸显了人工智能模型在天气预报中的潜力,以及物理一致性和准确的误差增长表示对改进集合数据同化的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating Ensemble Kalman Filter with AI-based Weather Prediction Model ClimaX
Artificial intelligence (AI)-based weather prediction research is growing rapidly and has shown to be competitive with the advanced dynamic numerical weather prediction models. However, research combining AI-based weather prediction models with data assimilation remains limited partially because long-term sequential data assimilation cycles are required to evaluate data assimilation systems. This study explores integrating the local ensemble transform Kalman filter (LETKF) with an AI-based weather prediction model ClimaX. Our experiments demonstrated that the ensemble data assimilation cycled stably for the AI-based weather prediction model using covariance inflation and localization techniques inside the LETKF. While ClimaX showed some limitations in capturing flow-dependent error covariance compared to dynamical models, the AI-based ensemble forecasts provided reasonable and beneficial error covariance in sparsely observed regions. These findings highlight the potential of AI models in weather forecasting and the importance of physical consistency and accurate error growth representation in improving ensemble data assimilation.
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