混合机器学习参数化中的诱导闭合在线学习

IF 4.4 2区 地球科学 Q1 METEOROLOGY & ATMOSPHERIC SCIENCES Journal of Advances in Modeling Earth Systems Pub Date : 2024-11-14 DOI:10.1029/2024MS004485
Costa Christopoulos, Ignacio Lopez-Gomez, Tom Beucler, Yair Cohen, Charles Kawczynski, Oliver R. A. Dunbar, Tapio Schneider
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引用次数: 0

摘要

这项工作将机器学习集成到大气参数化中,以针对不确定的混合过程,同时保持可解释、可预测和成熟的物理方程。我们采用涡度扩散质量流(EDMF)参数化,对各种对流和湍流状态进行统一建模。为了避免离线训练的机器学习参数化与气候模式耦合后的漂移和不稳定性,我们将学习作为一个反问题:将数据驱动模型嵌入 EDMF 参数化中,并在一维垂直全球气候模式(GCM)柱中进行在线训练。训练是根据太平洋地区 GCM 模拟的大尺度条件下的大涡度模拟(LES)输出结果进行的。我们的框架不是优化子网格尺度趋势,而是直接针对感兴趣的气候变量,如熵和液态水路径的垂直剖面。具体来说,我们使用集合卡尔曼反演法同时校准 EDMF 参数和数据驱动的横向混合率参数。校准后的参数化结果优于现有的 EDMF 方案,特别是在当前气候的热带和亚热带地区,并且在模拟 AMIP4K 试验导致海面温度升高的情况下的浅积云和层积云系统时保持了较高的保真度。这些结果展示了物理约束数据驱动模型的优势,并通过在线学习直接锁定相关变量,以建立健全和稳定的机器学习参数化。
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Online Learning of Entrainment Closures in a Hybrid Machine Learning Parameterization

This work integrates machine learning into an atmospheric parameterization to target uncertain mixing processes while maintaining interpretable, predictive, and well-established physical equations. We adopt an eddy-diffusivity mass-flux (EDMF) parameterization for the unified modeling of various convective and turbulent regimes. To avoid drift and instability that plague offline-trained machine learning parameterizations that are subsequently coupled with climate models, we frame learning as an inverse problem: Data-driven models are embedded within the EDMF parameterization and trained online in a one-dimensional vertical global climate model (GCM) column. Training is performed against output from large-eddy simulations (LES) forced with GCM-simulated large-scale conditions in the Pacific. Rather than optimizing subgrid-scale tendencies, our framework directly targets climate variables of interest, such as the vertical profiles of entropy and liquid water path. Specifically, we use ensemble Kalman inversion to simultaneously calibrate both the EDMF parameters and the parameters governing data-driven lateral mixing rates. The calibrated parameterization outperforms existing EDMF schemes, particularly in tropical and subtropical locations of the present climate, and maintains high fidelity in simulating shallow cumulus and stratocumulus regimes under increased sea surface temperatures from AMIP4K experiments. The results showcase the advantage of physically constraining data-driven models and directly targeting relevant variables through online learning to build robust and stable machine learning parameterizations.

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来源期刊
Journal of Advances in Modeling Earth Systems
Journal of Advances in Modeling Earth Systems METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
11.40
自引率
11.80%
发文量
241
审稿时长
>12 weeks
期刊介绍: The Journal of Advances in Modeling Earth Systems (JAMES) is committed to advancing the science of Earth systems modeling by offering high-quality scientific research through online availability and open access licensing. JAMES invites authors and readers from the international Earth systems modeling community. Open access. Articles are available free of charge for everyone with Internet access to view and download. Formal peer review. Supplemental material, such as code samples, images, and visualizations, is published at no additional charge. No additional charge for color figures. Modest page charges to cover production costs. Articles published in high-quality full text PDF, HTML, and XML. Internal and external reference linking, DOI registration, and forward linking via CrossRef.
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