用生成式对抗网络修正气候模型的海面温度模拟:气候学、年际变异性和极端气候

IF 6.5 2区 地球科学 Q1 METEOROLOGY & ATMOSPHERIC SCIENCES Advances in Atmospheric Sciences Pub Date : 2024-04-05 DOI:10.1007/s00376-024-3288-6
Ya Wang, Gang Huang, Baoxiang Pan, Pengfei Lin, Niklas Boers, Weichen Tao, Yutong Chen, Bo Liu, Haijie Li
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引用次数: 0

摘要

气候模型对于了解和预测全球气候变化及其相关影响至关重要。然而,这些模型存在偏差,限制了其历史模拟的准确性和未来预测的可信度。要应对这些挑战,就必须解决内部变异性问题,这阻碍了模型模拟与观测数据之间的直接吻合,也挫败了传统的监督学习方法。在这里,我们采用了一种无监督的周期一致性生成对抗网络(CycleGAN)来校正来自共同体地球系统模式 2(CESM2)的每日海表温度(SST)模拟。我们的研究结果表明,CycleGAN 不仅能纠正气候学偏差,还能改进对厄尔尼诺-南方涛动(ENSO)和印度洋偶极模式等主要动态模式以及极端海温的模拟。值得注意的是,它大大纠正了气候学上的海温偏差,将全球平均均方根误差(RMSE)降低了 58%。耐人寻味的是,CycleGAN 有效地解决了厄尔尼诺/南方涛动 SST 异常中众所周知的过度西向偏差问题,这是气候模式中的一个常见问题,传统方法(如量子映射法)很难纠正这一问题。此外,它还大大改进了对极端海温的模拟,将模式相关系数(PCC)从 0.56 提高到 0.88,将均方根误差(RMSE)从 0.5 降低到 0.32。这种提高归功于对年际、季节内和同步尺度变率的更好表示。我们的研究提供了一种校正全球 SST 模拟的新方法,并强调了它在不同时间尺度和主要动力学模式下的有效性。
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Correcting Climate Model Sea Surface Temperature Simulations with Generative Adversarial Networks: Climatology, Interannual Variability, and Extremes

Climate models are vital for understanding and projecting global climate change and its associated impacts. However, these models suffer from biases that limit their accuracy in historical simulations and the trustworthiness of future projections. Addressing these challenges requires addressing internal variability, hindering the direct alignment between model simulations and observations, and thwarting conventional supervised learning methods. Here, we employ an unsupervised Cycle-consistent Generative Adversarial Network (CycleGAN), to correct daily Sea Surface Temperature (SST) simulations from the Community Earth System Model 2 (CESM2). Our results reveal that the CycleGAN not only corrects climatological biases but also improves the simulation of major dynamic modes including the El Niño-Southern Oscillation (ENSO) and the Indian Ocean Dipole mode, as well as SST extremes. Notably, it substantially corrects climatological SST biases, decreasing the globally averaged Root-Mean-Square Error (RMSE) by 58%. Intriguingly, the CycleGAN effectively addresses the well-known excessive westward bias in ENSO SST anomalies, a common issue in climate models that traditional methods, like quantile mapping, struggle to rectify. Additionally, it substantially improves the simulation of SST extremes, raising the pattern correlation coefficient (PCC) from 0.56 to 0.88 and lowering the RMSE from 0.5 to 0.32. This enhancement is attributed to better representations of interannual, intraseasonal, and synoptic scales variabilities. Our study offers a novel approach to correct global SST simulations and underscores its effectiveness across different time scales and primary dynamical modes.

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来源期刊
Advances in Atmospheric Sciences
Advances in Atmospheric Sciences 地学-气象与大气科学
CiteScore
9.30
自引率
5.20%
发文量
154
审稿时长
6 months
期刊介绍: Advances in Atmospheric Sciences, launched in 1984, aims to rapidly publish original scientific papers on the dynamics, physics and chemistry of the atmosphere and ocean. It covers the latest achievements and developments in the atmospheric sciences, including marine meteorology and meteorology-associated geophysics, as well as the theoretical and practical aspects of these disciplines. Papers on weather systems, numerical weather prediction, climate dynamics and variability, satellite meteorology, remote sensing, air chemistry and the boundary layer, clouds and weather modification, can be found in the journal. Papers describing the application of new mathematics or new instruments are also collected here.
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