Learning to Correct Climate Projection Biases

被引:34
作者
Pan, Baoxiang [1 ]
Anderson, Gemma J. [1 ]
Goncalves, Andre [1 ]
Lucas, Donald D. [1 ]
Bonfils, Celine J. W. [1 ]
Lee, Jiwoo [1 ]
Tian, Yang [1 ]
Ma, Hsi-Yen [1 ]
机构
[1] Lawrence Livermore Natl Lab, Livermore, CA 94550 USA
关键词
deep learning; climate projection; bias correction; generative adversarial net; CROSS-VALIDATION; PRECIPITATION; SIMULATIONS; WEATHER; CONVECTION; NETWORKS; MODELS; ERRORS;
D O I
10.1029/2021MS002509
中图分类号
P4 [大气科学(气象学)];
学科分类号
0706 ; 070601 ;
摘要
The fidelity of climate projections is often undermined by biases in climate models due to their simplification or misrepresentation of unresolved climate processes. While various bias correction methods have been developed to post-process model outputs to match observations, existing approaches usually focus on limited, low-order statistics, or break either the spatiotemporal consistency of the target variable, or its dependency upon model resolved dynamics. We develop a Regularized Adversarial Domain Adaptation (RADA) methodology to overcome these deficiencies, and enhance efficient identification and correction of climate model biases. Instead of pre-assuming the spatiotemporal characteristics of model biases, we apply discriminative neural networks to distinguish historical climate simulation samples and observation samples. The evidences based on which the discriminative neural networks make distinctions are applied to train the domain adaptation neural networks to bias correct climate simulations. We regularize the domain adaptation neural networks using cycle-consistent statistical and dynamical constraints. An application to daily precipitation projection over the contiguous United States shows that our methodology can correct all the considered moments of daily precipitation at approximately 1 degrees resolution, ensures spatiotemporal consistency and inter-field correlations, and can discriminate between different dynamical conditions. Our methodology offers a powerful tool for disentangling model parameterization biases from their interactions with the chaotic evolution of climate dynamics, opening a novel avenue toward big-data enhanced climate predictions.
引用
收藏
页数:26
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