AO-PHLGFeb 17

Examining Fast Radiative Feedbacks Using Machine-Learning Weather Emulators

AI2
arXiv:2602.16090v1h-index: 18
Originality Synthesis-oriented
AI Analysis

This work addresses climate scientists by enabling efficient analysis of fast processes in global climate using existing ML tools, though it is incremental as it applies known methods to a new application area.

The study tackled the problem of quantifying fast radiative feedbacks in climate by using historically trained machine-learning weather emulators to predict precipitation responses to changes in carbon dioxide concentrations, showing agreement with full-physics Earth System Models without retraining.

The response of the climate system to increased greenhouse gases and other radiative perturbations is governed by a combination of fast and slow feedbacks. Slow feedbacks are typically activated in response to changes in ocean temperatures on decadal timescales and manifest as changes in climatic state with no recent historical analogue. However, fast feedbacks are activated in response to rapid atmospheric physical processes on weekly timescales, and they are already operative in the present-day climate. This distinction implies that the physics of fast radiative feedbacks is present in the historical meteorological reanalyses used to train many recent successful machine-learning-based (ML) emulators of weather and climate. In addition, these feedbacks are functional under the historical boundary conditions pertaining to the top-of-atmosphere radiative balance and sea-surface temperatures. Together, these factors imply that we can use historically trained ML weather emulators to study the response of radiative-convective equilibrium (RCE), and hence the global hydrological cycle, to perturbations in carbon dioxide and other well-mixed greenhouse gases. Without retraining on prospective Earth system conditions, we use ML weather emulators to quantify the fast precipitation response to reduced and elevated carbon dioxed concentrations with no recent historical precedent. We show that the responses from historically trained emulators agree with those produced by full-physics Earth System Models (ESMs). In conclusion, we discuss the prospects for and advantages from using ESMs and ML emulators to study fast processes in global climate.

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