用于序列数据同化的在线机器学习预报不确定性估计

IF 3 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES
Maximiliano A. Sacco, Manuel Pulido, Juan J. Ruiz, Pierre Tandeo
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引用次数: 0

摘要

量化预报的不确定性是最先进的数值天气预报和数据同化系统的一个关键方面。基于集合的数据同化系统在多个模式整合的基础上,纳入了与状态相关的不确定性量化。然而,这种方法对计算和开发的要求很高。在这项工作中,提出了一种基于卷积神经网络的机器学习方法,该方法利用单个动态模型积分来估算预报误差协方差矩阵所代表的与状态相关的预报不确定性。这是通过使用一个考虑到预测误差是异方差的损失函数来实现的。在一种混合数据同化方法中检验了这种方法的性能,该方法结合了类似卡尔曼的分析更新和基于机器学习的状态相关预报误差协方差矩阵估计。以洛伦兹 96 模型作为概念验证,进行了观测系统模拟实验。结果表明,机器学习方法能够在相对高维的状态下预测预测协方差矩阵的精确值。此外,混合数据同化方法显示出与集合卡尔曼滤波器相似的性能,当集合相对较小时,其性能优于卡尔曼滤波器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On‐line machine‐learning forecast uncertainty estimation for sequential data assimilation
Quantifying forecast uncertainty is a key aspect of state‐of‐the‐art numerical weather prediction and data assimilation systems. Ensemble‐based data assimilation systems incorporate state‐dependent uncertainty quantification based on multiple model integrations. However, this approach is demanding in terms of computations and development. In this work, a machine‐learning method is presented based on convolutional neural networks that estimates the state‐dependent forecast uncertainty represented by the forecast error covariance matrix using a single dynamical model integration. This is achieved by the use of a loss function that takes into account the fact that the forecast errors are heteroscedastic. The performance of this approach is examined within a hybrid data assimilation method that combines a Kalman‐like analysis update and the machine‐learning‐based estimation of a state‐dependent forecast error covariance matrix. Observing system simulation experiments are conducted using the Lorenz'96 model as a proof‐of‐concept. The promising results show that the machine‐learning method is able to predict precise values of the forecast covariance matrix in relatively high‐dimensional states. Moreover, the hybrid data assimilation method shows similar performance to the ensemble Kalman filter, outperforming it when the ensembles are relatively small.
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来源期刊
CiteScore
16.80
自引率
4.50%
发文量
163
审稿时长
3-8 weeks
期刊介绍: The Quarterly Journal of the Royal Meteorological Society is a journal published by the Royal Meteorological Society. It aims to communicate and document new research in the atmospheric sciences and related fields. The journal is considered one of the leading publications in meteorology worldwide. It accepts articles, comprehensive review articles, and comments on published papers. It is published eight times a year, with additional special issues. The Quarterly Journal has a wide readership of scientists in the atmospheric and related fields. It is indexed and abstracted in various databases, including Advanced Polymers Abstracts, Agricultural Engineering Abstracts, CAB Abstracts, CABDirect, COMPENDEX, CSA Civil Engineering Abstracts, Earthquake Engineering Abstracts, Engineered Materials Abstracts, Science Citation Index, SCOPUS, Web of Science, and more.
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