基于经验回放训练的机器学习物理参数化的社区大气模型稳定模拟

IF 4.4 2区 地球科学 Q1 METEOROLOGY & ATMOSPHERIC SCIENCES
Jianda Chen, Minghua Zhang, Tao Zhang, Wuyin Lin, Wei Xue
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引用次数: 0

摘要

近年来,机器学习(ML)模型被用于改进大气环流模型(GCMs)的物理参数化。将ML模型集成到gcm中的一个重大挑战是当它们耦合用于长期模拟时的在线不稳定性。我们提出了一种新的策略,当大气GCM的物理参数化包被深度ML模型取代时,该策略显示了鲁棒的在线稳定性。该方法使用经验回放和ML模型的多步训练方案,其中模型在前一个时间步的输出用于训练。重播缓冲区中预测的物理趋势与训练迭代中最近的错误被重用,使ML模型从自己的错误中学习。该训练方法减少了ML模型的离线和在线环境之间的差距。该方法利用多尺度建模框架(Multi-scale Modeling Framework)高分辨率模拟的训练数据训练ML模型作为社区大气模型(CAM5)的物理参数化。利用ML物理包对CAM5进行了3次为期6年的在线模拟。模拟的降水、地表温度和纬向平均大气场的空间分布总体上优于标准CAM5和基准模式,即使不使用额外的物理约束或调整。这项工作首次展示了通过使用经验回放来解决ML物理气候建模中在线不稳定性问题的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stable Simulation of the Community Atmosphere Model Using Machine-Learning Physical Parameterization Trained With Experience Replay

In recent years, machine learning (ML) models have been used to improve physical parameterizations of general circulation models (GCMs). A significant challenge of integrating ML models into GCMs is the online instability when they are coupled for long-term simulation. We present a new strategy that demonstrates robust online stability when the physical parameterization package of an atmospheric GCM is replaced by a deep ML model. The method uses experience replay with a multistep training scheme of the ML model in which the model's own output at the previous time step is used in the training. Predicted physics tendencies in the replay buffer with the most recent errors in the training iterations are reused, making the ML model learn from its own errors. The training method reduces the gap between the offline and online environments of the ML model. The method is used to train the ML model as the physical parameterization of the Community Atmosphere Model (CAM5) with training data from the Multi-scale Modeling Framework high resolution simulations. Three 6-year online simulations of the CAM5 are carried out by using the ML physics package. The simulated spatial distributions of precipitation, surface temperature and zonally averaged atmospheric fields demonstrate overall better accuracy than that of the standard CAM5 and benchmark model even without the use of additional physical constraints or tuning. This work is the first to demonstrate a solution to address the online instability problem in climate modeling with ML physics by using experience replay.

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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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