论文标题

气候系统中相位过渡的通用预警信号

Universal Early Warning Signals of Phase Transitions in Climate Systems

论文作者

Dylewsky, Daniel, Lenton, Timothy M., Scheffer, Marten, Bury, Thomas M., Fletcher, Christopher G., Anand, Madhur, Bauch, Chris T.

论文摘要

复杂系统表现出倾斜点的潜力,其中平衡状态会突然且通常不可逆地转移,但是使用标准预测建模技术对这些事件的预测非常困难。这导致开发了一套替代方法,该方法试图识别数据中关键现象的特征,这些方法有望在许多类别的动态分叉之前发生。至关重要的是,这些关键现象的表现在各种系统中都是通用的,这意味着可以对(丰富)合成数据培训数据密集型深度学习方法,并在转移到(更有限的)经验数据集时可能有效。本文为这种方法提供了用于晶格相转换的概念证明:在2D ISING模型相变训练的深神经网络对许多成功的真实和模拟气候系统进行了测试。它的精度经常超过常规统计指标的准确性,其表现显示出空间指标始终如一地提高。诸如此类的工具可能会对气候倾斜事件提供宝贵的见解,因为遥感测量值为复杂的地理空间分辨地球系统提供了越来越丰富的数据。

The potential for complex systems to exhibit tipping points in which an equilibrium state undergoes a sudden and often irreversible shift is well established, but prediction of these events using standard forecast modeling techniques is quite difficult. This has led to the development of an alternative suite of methods that seek to identify signatures of critical phenomena in data, which are expected to occur in advance of many classes of dynamical bifurcation. Crucially, the manifestations of these critical phenomena are generic across a variety of systems, meaning that data-intensive deep learning methods can be trained on (abundant) synthetic data and plausibly prove effective when transferred to (more limited) empirical data sets. This paper provides a proof of concept for this approach as applied to lattice phase transitions: a deep neural network trained exclusively on 2D Ising model phase transitions is tested on a number of real and simulated climate systems with considerable success. Its accuracy frequently surpasses that of conventional statistical indicators, with performance shown to be consistently improved by the inclusion of spatial indicators. Tools such as this may offer valuable insight into climate tipping events, as remote sensing measurements provide increasingly abundant data on complex geospatially-resolved Earth systems.

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