利用神经网络从自然变率中学习急流强迫响应

Charlotte Connolly, E. Barnes, P. Hassanzadeh, M. Pritchard
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引用次数: 1

摘要

人为气候变化的两个明显特征,热带对流层上层的变暖和北极表面的变暖,对中纬度急流的纬度位置产生了相互竞争的影响,通常被称为“拔河”。研究喷气机对这些热强迫的反应表明,它对模式类型、季节、初始大气条件以及强迫的形状和大小都很敏感。过去的大部分工作都集中在研究模拟对外部操纵的反应上。相比之下,我们探索了在内部变率上单独训练卷积神经网络(CNN)的潜力,然后使用它来检查射流对对流层热强迫的可能的非线性响应,这种响应更接近于人为气候变化。我们的方法利用了波动耗散定理背后的思想,该定理将系统的内部可变性与其强迫响应联系起来,但迄今为止仅用于量化线性响应。我们在CESM干动力核心的长期控制运行数据上训练了一个CNN,并表明它能够巧妙地预测射流对持续外力的非线性响应。训练后的CNN提供了一种快速的方法来探索急流对大范围对流层温度趋势的敏感性,并且考虑到该方法可能适用于任何具有长期控制运行的模型,可以为早期实验设计提供有用的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Neural Networks to Learn the Jet Stream Forced Response from Natural Variability
Two distinct features of anthropogenic climate change, warming in the tropical upper troposphere and warming at the Arctic surface, have competing effects on the mid-latitude jet stream’s latitudinal position, often referred to as a “tug-of-war”. Studies that investigate the jet’s response to these thermal forcings show that it is sensitive to model type, season, initial atmospheric conditions, and the shape and magnitude of the forcing. Much of this past work focuses on studying a simulation’s response to external manipulation. In contrast, we explore the potential to train a convolutional neural network (CNN) on internal variability alone and then use it to examine possible nonlinear responses of the jet to tropospheric thermal forcing that more closely resemble anthropogenic climate change. Our approach leverages the idea behind the fluctuationdissipation theorem, which relates the internal variability of a system to its forced response but so far has been only used to quantify linear responses. We train a CNN on data from a long control run of the CESM dry dynamical core and show that it is able to skillfully predict the nonlinear response of the jet to sustained external forcing. The trained CNN provides a quick method for exploring the jet stream sensitivity to a wide range of tropospheric temperature tendencies and, considering that this method can likely be applied to any model with a long control run, could lend itself useful for early stage experiment design.
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